Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls

ABSTRACT Neuroimaging‐based single subject prediction of brain disorders has gained increasing attention in recent years. Using a variety of neuroimaging modalities such as structural, functional and diffusion MRI, along with machine learning techniques, hundreds of studies have been carried out for accurate classification of patients with heterogeneous mental and neurodegenerative disorders such as schizophrenia and Alzheimer's disease. More than 500 studies have been published during the past quarter century on single subject prediction focused on a multiple brain disorders. In the first part of this study, we provide a survey of more than 200 reports in this field with a focus on schizophrenia, mild cognitive impairment (MCI), Alzheimer's disease (AD), depressive disorders, autism spectrum disease (ASD) and attention‐deficit hyperactivity disorder (ADHD). Detailed information about those studies such as sample size, type and number of extracted features and reported accuracy are summarized and discussed. To our knowledge, this is by far the most comprehensive review of neuroimaging‐based single subject prediction of brain disorders. In the second part, we present our opinion on major pitfalls of those studies from a machine learning point of view. Common biases are discussed and suggestions are provided. Moreover, emerging trends such as decentralized data sharing, multimodal brain imaging, differential diagnosis, disease subtype classification and deep learning are also discussed. Based on this survey, there is extensive evidence showing the great potential of neuroimaging data for single subject prediction of various disorders. However, the main bottleneck of this exciting field is still the limited sample size, which could be potentially addressed by modern data sharing models such as the ones discussed in this paper. Emerging big data technologies and advanced data‐intensive machine learning methodologies such as deep learning have coincided with an increasing need for accurate, robust and generalizable single subject prediction of brain disorders during an exciting time. In this report, we survey the past and offer some opinions regarding the road ahead. HighlightsPast efforts on classification of brain disorders are comprehensively reviewed.The common pitfalls from machine learning point of view are discussed.Emerging trends related to single‐subject prediction are reviewed and discussed.

[1]  Daniel Rueckert,et al.  Multiple instance learning for classification of dementia in brain MRI , 2013, Medical Image Anal..

[2]  N. Schuff,et al.  Hippocampal atrophy patterns in mild cognitive impairment and Alzheimer's disease , 2010, Human brain mapping.

[3]  高橋 栄 Diagnostic and Statistical Manual of Mental Disorders(DSM)-5による分類と診断 (特集 周産期メンタルヘルス : 妊婦の不安とどう立ち向かうか) , 2014 .

[4]  J. Pekar,et al.  Method for multimodal analysis of independent source differences in schizophrenia: Combining gray matter structural and auditory oddball functional data , 2006, Human brain mapping.

[5]  Jared A. Nielsen,et al.  Functional connectivity magnetic resonance imaging classification of autism. , 2011, Brain : a journal of neurology.

[6]  Dinggang Shen,et al.  Multi-Task Linear Programming Discriminant Analysis for the Identification of Progressive MCI Individuals , 2014, PloS one.

[7]  Nick C Fox,et al.  The Alzheimer's disease neuroimaging initiative (ADNI): MRI methods , 2008, Journal of magnetic resonance imaging : JMRI.

[8]  V. Calhoun,et al.  A method to fuse fMRI tasks through spatial correlations: Applied to schizophrenia , 2009, Human brain mapping.

[9]  Vince D. Calhoun,et al.  A multiple kernel learning approach to perform classification of groups from complex-valued fMRI data analysis: Application to schizophrenia , 2014, NeuroImage.

[10]  H. Benali,et al.  Support vector machine-based classification of Alzheimer’s disease from whole-brain anatomical MRI , 2009, Neuroradiology.

[11]  Daoqiang Zhang,et al.  Multi-modal multi-task learning for joint prediction of multiple regression and classification variables in Alzheimer's disease , 2012, NeuroImage.

[12]  J. Baio Morbidity and Mortality Weekly Report Prevalence of Autism Spectrum Disorders — Autism and Developmental Disabilities Monitoring Network, Six Sites, United States, 2000; Prevalence of Autism Spectrum Disorders — Autism and Developmental Disabilities Monitoring Network, 14 Sites, United States, 2002; , 2007 .

[13]  Christian Windischberger,et al.  Toward discovery science of human brain function , 2010, Proceedings of the National Academy of Sciences.

[14]  A. Dale,et al.  Alzheimer disease: quantitative structural neuroimaging for detection and prediction of clinical and structural changes in mild cognitive impairment. , 2009, Radiology.

[15]  Nick C Fox,et al.  Automatic classification of MR scans in Alzheimer's disease. , 2008, Brain : a journal of neurology.

[16]  Stefan Klöppel,et al.  Estimating the age of healthy subjects from T1-weighted MRI scans using kernel methods: Exploring the influence of various parameters , 2010, NeuroImage.

[17]  Efstathios D. Gennatas,et al.  Divergent network connectivity changes in behavioural variant frontotemporal dementia and Alzheimer's disease. , 2010, Brain : a journal of neurology.

[18]  Daniel P. Kennedy,et al.  The Autism Brain Imaging Data Exchange: Towards Large-Scale Evaluation of the Intrinsic Brain Architecture in Autism , 2013, Molecular Psychiatry.

[19]  H. Yamasue,et al.  Classification of First-Episode Schizophrenia Patients and Healthy Subjects by Automated MRI Measures of Regional Brain Volume and Cortical Thickness , 2011, PloS one.

[20]  Dewen Hu,et al.  Increased Cortical-Limbic Anatomical Network Connectivity in Major Depression Revealed by Diffusion Tensor Imaging , 2012, PloS one.

[21]  Dewen Hu,et al.  Unsupervised classification of major depression using functional connectivity MRI , 2014, Human brain mapping.

[22]  Y.S. Hung,et al.  Gene selection for Brain Cancer Classification , 2006, 2006 International Conference of the IEEE Engineering in Medicine and Biology Society.

[23]  Mert R. Sabuncu,et al.  The Relevance Voxel Machine (RVoxM): A Self-Tuning Bayesian Model for Informative Image-Based Prediction , 2012, IEEE Transactions on Medical Imaging.

[24]  Vince D. Calhoun,et al.  Functional network connectivity during rest and task: Comparison of healthy controls and schizophrenic patients , 2011, 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[25]  Jorge Munilla,et al.  Exploratory graphical models of functional and structural connectivity patterns for Alzheimer's Disease diagnosis , 2015, Front. Comput. Neurosci..

[26]  M. Yücel,et al.  Structural brain abnormalities in major depressive disorder: a selective review of recent MRI studies. , 2009, Journal of affective disorders.

[27]  Jessica A. Turner,et al.  Sharing the wealth: Neuroimaging data repositories , 2016, NeuroImage.

[28]  Alejandro F. Frangi,et al.  Integration of Cognitive Tests and Resting State fMRI for the Individual Identification of Mild Cognitive Impairment. , 2015, Current Alzheimer research.

[29]  Umberto Castellani,et al.  Machine Learning Approaches: From Theory to Application in Schizophrenia , 2013, Comput. Math. Methods Medicine.

[30]  Christopher M. Bishop,et al.  Pattern Recognition and Machine Learning (Information Science and Statistics) , 2006 .

[31]  Luke Bloy,et al.  Identifying Sub-Populations via Unsupervised Cluster Analysis on Multi-Edge Similarity Graphs , 2012, MICCAI.

[32]  Daniel S. Marcus,et al.  The extensible neuroimaging archive toolkit , 2007, Neuroinformatics.

[33]  Anand D. Sarwate,et al.  Differentially Private Empirical Risk Minimization , 2009, J. Mach. Learn. Res..

[34]  Christian Böhm,et al.  Automated detection of brain atrophy patterns based on MRI for the prediction of Alzheimer's disease , 2010, NeuroImage.

[35]  Ferath Kherif,et al.  Multivariate voxel-based morphometry successfully differentiates schizophrenia patients from healthy controls , 2007, NeuroImage.

[36]  D. Shen,et al.  Multi‐atlas based representations for Alzheimer's disease diagnosis , 2014, Human brain mapping.

[37]  Charles D. Smith,et al.  Partial least squares for discrimination in fMRI data. , 2012, Magnetic resonance imaging.

[38]  João Ricardo Sato,et al.  Inter-regional cortical thickness correlations are associated with autistic symptoms: a machine-learning approach. , 2013, Journal of psychiatric research.

[39]  Christos Davatzikos,et al.  Neuroanatomical pattern classification in a population-based sample of first-episode schizophrenia , 2013, Progress in Neuro-psychopharmacology and Biological Psychiatry.

[40]  Dinggang Shen,et al.  Integrative analysis of multi-dimensional imaging genomics data for Alzheimer's disease prediction , 2014, Front. Aging Neurosci..

[41]  Vince D. Calhoun,et al.  Classification of schizophrenia patients based on resting-state functional network connectivity , 2013, Front. Neurosci..

[42]  Andrew Simmons,et al.  Disorder-Specific Predictive Classification of Adolescents with Attention Deficit Hyperactivity Disorder (ADHD) Relative to Autism Using Structural Magnetic Resonance Imaging , 2013, PloS one.

[43]  Kathryn Ziegler-Graham,et al.  Forecasting the global burden of Alzheimer’s disease , 2007, Alzheimer's & Dementia.

[44]  Kenji Doya,et al.  Toward Probabilistic Diagnosis and Understanding of Depression Based on Functional MRI Data Analysis with Logistic Group LASSO , 2015, PloS one.

[45]  Jason Weston,et al.  Gene Selection for Cancer Classification using Support Vector Machines , 2002, Machine Learning.

[46]  Normand Carrey,et al.  Disorder-specific volumetric brain difference in adolescent major depressive disorder and bipolar depression , 2013, Brain Imaging and Behavior.

[47]  Vince D. Calhoun,et al.  Discriminating Bipolar Disorder from Major Depression using , 2016 .

[48]  Li Yao,et al.  Multi-modality sparse representation-based classification for Alzheimer's disease and mild cognitive impairment , 2015, Comput. Methods Programs Biomed..

[49]  Daoqiang Zhang,et al.  Label-aligned multi-task feature learning for multimodal classification of Alzheimer’s disease and mild cognitive impairment , 2015, Brain Imaging and Behavior.

[50]  K. Lovblad,et al.  Individual prediction of cognitive decline in mild cognitive impairment using support vector machine-based analysis of diffusion tensor imaging data. , 2010, Journal of Alzheimer's disease : JAD.

[51]  H. Möller,et al.  Individualized differential diagnosis of schizophrenia and mood disorders using neuroanatomical biomarkers. , 2015, Brain : a journal of neurology.

[52]  Bilwaj Gaonkar,et al.  Analytic estimation of statistical significance maps for support vector machine based multi-variate image analysis and classification , 2013, NeuroImage.

[53]  Yoshua Bengio,et al.  Deep Learning of Representations for Unsupervised and Transfer Learning , 2011, ICML Unsupervised and Transfer Learning.

[54]  M. B. Nebel,et al.  Automated diagnoses of attention deficit hyperactive disorder using magnetic resonance imaging , 2012, Front. Syst. Neurosci..

[55]  Lifeng Wang,et al.  Identify schizophrenia using resting-state functional connectivity: an exploratory research and analysis , 2012, Biomedical engineering online.

[56]  Juan Eugenio Iglesias,et al.  Subcortical volumes differentiate Major Depressive Disorder, Bipolar Disorder, and remitted Major Depressive Disorder. , 2015, Journal of psychiatric research.

[57]  Essa Yacoub,et al.  The WU-Minn Human Connectome Project: An overview , 2013, NeuroImage.

[58]  G. Frisoni,et al.  Linear measures of atrophy in mild Alzheimer disease. , 1996, AJNR. American journal of neuroradiology.

[59]  Jens Frahm,et al.  Self-diffusion NMR imaging using stimulated echoes , 1985 .

[60]  D. Shen,et al.  Prediction of Alzheimer's Disease and Mild Cognitive Impairment Using Cortical Morphological Patterns Chong-yaw Wee, Pew-thian Yap, and Dinggang Shen; for the Alzheimer's Disease Neuroimaging Initiative , 2022 .

[61]  I. Melle,et al.  Disintegration of Sensorimotor Brain Networks in Schizophrenia. , 2015, Schizophrenia bulletin.

[62]  Xiaohai He,et al.  An Efficient Approach for Differentiating Alzheimer's Disease from Normal Elderly Based on Multicenter MRI Using Gray-Level Invariant Features , 2014, PloS one.

[63]  Hyunjin Park,et al.  Connectivity Analysis and Feature Classification in Attention Deficit Hyperactivity Disorder Sub-Types: A Task Functional Magnetic Resonance Imaging Study , 2015, Brain Topography.

[64]  Daniel Rueckert,et al.  Multiple instance learning for classification of dementia in brain MRI , 2014, Medical Image Anal..

[65]  Marie Chupin,et al.  Breast Cancer Affects Both the Hippocampus Volume and the Episodic Autobiographical Memory Retrieval , 2011, PloS one.

[66]  Alex Martin,et al.  Functional connectivity classification of autism identifies highly predictive brain features but falls short of biomarker standards , 2014, NeuroImage: Clinical.

[67]  Isabelle Guyon,et al.  An Introduction to Variable and Feature Selection , 2003, J. Mach. Learn. Res..

[68]  Stefan Klöppel,et al.  Applying Automated MR-Based Diagnostic Methods to the Memory Clinic: A Prospective Study , 2015, Journal of Alzheimer's disease : JAD.

[69]  Alyn K. Stanton,et al.  Age at first onset for nonbipolar depression. , 1986, Journal of abnormal psychology.

[70]  Jes Olesen,et al.  The Cost of Brain Diseases: A Burden or a Challenge? , 2014, Neuron.

[71]  Mark S. Cohen,et al.  Decreased small-world functional network connectivity and clustering across resting state networks in schizophrenia: an fMRI classification tutorial , 2013, Front. Hum. Neurosci..

[72]  Vince D. Calhoun,et al.  Restricted Boltzmann machines for neuroimaging: An application in identifying intrinsic networks , 2014, NeuroImage.

[73]  David Coghill,et al.  Brainstem abnormalities in attention deficit hyperactivity disorder support high accuracy individual diagnostic classification , 2014, Human brain mapping.

[74]  H. Soininen,et al.  Hippocampus and entorhinal cortex in mild cognitive impairment and early AD , 2004, Neurobiology of Aging.

[75]  Lawrence J. Mazlack,et al.  Detecting brain structural changes as biomarker from magnetic resonance images using a local feature based SVM approach , 2014, Journal of Neuroscience Methods.

[76]  Hasan Demirel,et al.  Probability distribution function-based classification of structural MRI for the detection of Alzheimer's disease , 2015, Comput. Biol. Medicine.

[77]  Paola Dazzan,et al.  Neuroimaging biomarkers to predict treatment response in schizophrenia: the end of 30 years of solitude? , 2014, Dialogues in clinical neuroscience.

[78]  C. Jack,et al.  ApoE4 effects on automated diagnostic classifiers for mild cognitive impairment and Alzheimer's disease , 2014, NeuroImage: Clinical.

[79]  Charles J. Lynch,et al.  Salience network-based classification and prediction of symptom severity in children with autism. , 2013, JAMA psychiatry.

[80]  L. Rohde,et al.  Evaluation of Pattern Recognition and Feature Extraction Methods in ADHD Prediction , 2012, Front. Syst. Neurosci..

[81]  Nathan Intrator,et al.  Machine learning fMRI classifier delineates subgroups of schizophrenia patients , 2014, Schizophrenia Research.

[82]  D. Le Bihan,et al.  Diffusion tensor imaging: Concepts and applications , 2001, Journal of magnetic resonance imaging : JMRI.

[83]  Cameron S. Carter,et al.  Automated classification of fMRI during cognitive control identifies more severely disorganized subjects with schizophrenia , 2012, Schizophrenia Research.

[84]  V. Calhoun,et al.  In Search of Multimodal Neuroimaging Biomarkers of Cognitive Deficits in Schizophrenia , 2015, Biological Psychiatry.

[85]  Russell Greiner,et al.  Kernel Principal Component Analysis for dimensionality reduction in fMRI-based diagnosis of ADHD , 2012, Front. Syst. Neurosci..

[86]  Cameron S. Carter,et al.  Multivariate Pattern Analysis of Functional Magnetic Resonance Imaging Data Reveals Deficits in Distributed Representations in Schizophrenia , 2008, Biological Psychiatry.

[87]  Vladimir Fonov,et al.  Prediction of Alzheimer's disease in subjects with mild cognitive impairment from the ADNI cohort using patterns of cortical thinning , 2013, NeuroImage.

[88]  Nick C. Fox,et al.  MR image texture analysis applied to the diagnosis and tracking of Alzheimer's disease , 1998, IEEE Transactions on Medical Imaging.

[89]  A. Mechelli,et al.  Using Support Vector Machine to identify imaging biomarkers of neurological and psychiatric disease: A critical review , 2012, Neuroscience & Biobehavioral Reviews.

[90]  Michael I. Miller,et al.  Parallel Transport in Diffeomorphisms Distinguishes the Time-dependent Pattern of Hippocampal Surface Deformation Due to Healthy Aging and the Dementia of the Alzheimer's Type , 2007 .

[91]  Michael W. Cole,et al.  Characterizing thalamo-cortical disturbances in schizophrenia and bipolar illness. , 2014, Cerebral cortex.

[92]  Manuel Desco,et al.  Predictors of schizophrenia spectrum disorders in early-onset first episodes of psychosis: a support vector machine model , 2015, European Child & Adolescent Psychiatry.

[93]  C. Bottino,et al.  Volumetric MRI Measurements Can Differentiate Alzheimer's Disease, Mild Cognitive Impairment, and Normal Aging , 2002, International Psychogeriatrics.

[94]  P. Falkai,et al.  Detecting Neuroimaging Biomarkers for Schizophrenia: A Meta-Analysis of Multivariate Pattern Recognition Studies , 2015, Neuropsychopharmacology.

[95]  V. Calhoun,et al.  Temporal lobe and “default” hemodynamic brain modes discriminate between schizophrenia and bipolar disorder , 2008, Human brain mapping.

[96]  Andrew Simmons,et al.  Pattern classification of response inhibition in ADHD: Toward the development of neurobiological markers for ADHD , 2013, Human brain mapping.

[97]  Luke Bloy,et al.  Diffusion based abnormality markers of pathology: Toward learned diagnostic prediction of ASD , 2011, NeuroImage.

[98]  Karthik Ramasubramanian,et al.  Introduction to Machine Learning and R , 2017 .

[99]  K. Lovblad,et al.  Individual Classification of Mild Cognitive Impairment Subtypes by Support Vector Machine Analysis of White Matter DTI , 2013, American Journal of Neuroradiology.

[100]  Alan C. Evans,et al.  Automated cortical thickness measurements from MRI can accurately separate Alzheimer's patients from normal elderly controls , 2008, Neurobiology of Aging.

[101]  Tianzi Jiang,et al.  Discriminant analysis of functional connectivity patterns on Grassmann manifold , 2011, NeuroImage.

[102]  Dinggang Shen,et al.  Inter-modality relationship constrained multi-modality multi-task feature selection for Alzheimer's Disease and mild cognitive impairment identification , 2014, NeuroImage.

[103]  Nikolaus Kriegeskorte Deep neural networks: a new framework for modelling biological vision and brain information processing , 2015 .

[104]  Manuel Graña,et al.  Computer aided diagnosis of schizophrenia on resting state fMRI data by ensembles of ELM , 2015, Neural Networks.

[105]  David Silbersweig,et al.  Neuropsychiatry at the millenium: the potential for mind/brain integration through emerging interdisciplinary research strategies , 2001, Clinical Neuroscience Research.

[106]  R. Gur,et al.  Unaffected Family Members and Schizophrenia Patients Share Brain Structure Patterns: A High-Dimensional Pattern Classification Study , 2008, Biological Psychiatry.

[107]  Oluwasanmi Koyejo,et al.  Toward open sharing of task-based fMRI data: the OpenfMRI project , 2013, Front. Neuroinform..

[108]  A. Besga,et al.  Computer Aided Diagnosis system for Alzheimer Disease using brain Diffusion Tensor Imaging features selected by Pearson's correlation , 2011, Neuroscience Letters.

[109]  Rozi Mahmud,et al.  Boosting diagnosis accuracy of Alzheimer's disease using high dimensional recognition of longitudinal brain atrophy patterns , 2015, Behavioural Brain Research.

[110]  Fei Gao,et al.  Discriminative analysis of multivariate features from structural MRI and diffusion tensor images. , 2014, Magnetic resonance imaging.

[111]  R. Petersen,et al.  Mild cognitive impairment , 2006, The Lancet.

[112]  Robert Tibshirani,et al.  The Entire Regularization Path for the Support Vector Machine , 2004, J. Mach. Learn. Res..

[113]  Vince D. Calhoun,et al.  Discriminating schizophrenia and bipolar disorder by fusing fMRI and DTI in a multimodal CCA+ joint ICA model , 2011, NeuroImage.

[114]  Jane S. Paulsen,et al.  Automatic detection of preclinical neurodegeneration , 2009, Neurology.

[115]  A. Simmons,et al.  Multivariate data analysis and machine learning in Alzheimer's disease with a focus on structural magnetic resonance imaging. , 2014, Journal of Alzheimer's disease : JAD.

[116]  Klaus-Robert Müller,et al.  Introduction to machine learning for brain imaging , 2011, NeuroImage.

[117]  D. Prvulovic,et al.  Using Support Vector Machines with Multiple Indices of Diffusion for Automated Classification of Mild Cognitive Impairment , 2012, PloS one.

[118]  John Suckling,et al.  Identifying endophenotypes of autism: a multivariate approach , 2014, Front. Comput. Neurosci..

[119]  Marcos Dipinto,et al.  Discriminant analysis , 2020, Predictive Analytics.

[120]  H. Laufs,et al.  Decoding Wakefulness Levels from Typical fMRI Resting-State Data Reveals Reliable Drifts between Wakefulness and Sleep , 2014, Neuron.

[121]  N. Minshew,et al.  New perspectives in autism, Part II: The differential diagnosis and neurobiology of autism. , 1988, Current problems in pediatrics.

[122]  J. Pekar,et al.  A method for multitask fMRI data fusion applied to schizophrenia , 2006, Human brain mapping.

[123]  Ron Kohavi,et al.  Wrappers for Feature Subset Selection , 1997, Artif. Intell..

[124]  Marie Chupin,et al.  Multidimensional classification of hippocampal shape features discriminates Alzheimer's disease and mild cognitive impairment from normal aging , 2009, NeuroImage.

[125]  Vince D. Calhoun,et al.  Mining the Mind Research Network: A Novel Framework for Exploring Large Scale, Heterogeneous Translational Neuroscience Research Data Sources , 2009, NeuroImage.

[126]  Jesse S. Jin,et al.  Identification of Conversion from Mild Cognitive Impairment to Alzheimer's Disease Using Multivariate Predictors , 2011, PloS one.

[127]  Daoqiang Zhang,et al.  Identification of MCI individuals using structural and functional connectivity networks , 2012, NeuroImage.

[128]  Akshay Pai,et al.  Brain region’s relative proximity as marker for Alzheimer’s disease based on structural MRI , 2014, BMC Medical Imaging.

[129]  Karsten Mueller,et al.  Meta-analysis based SVM classification enables accurate detection of Alzheimer's disease across different clinical centers using FDG-PET and MRI , 2013, Psychiatry Research: Neuroimaging.

[130]  Daoqiang Zhang,et al.  Inherent Structure-Based Multiview Learning With Multitemplate Feature Representation for Alzheimer's Disease Diagnosis , 2016, IEEE Transactions on Biomedical Engineering.

[131]  Vince D. Calhoun,et al.  The impact of data preprocessing in traumatic brain injury detection using functional magnetic resonance imaging , 2015, 2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[132]  Ying Wang,et al.  High-dimensional Pattern Regression Using Machine Learning: from Medical Images to Continuous Clinical Variables However, Support Vector Regression Has Some Disadvantages That Become Especially , 2022 .

[133]  Kengo Ito,et al.  A comparison of three brain atlases for MCI prediction , 2014, Journal of Neuroscience Methods.

[134]  Vince D. Calhoun,et al.  Automatic Bayesian Classification of Healthy Controls, Bipolar Disorder, and Schizophrenia Using Intrinsic Connectivity Maps From fMRI Data , 2010, IEEE Transactions on Biomedical Engineering.

[135]  Rachel M. Brouwer,et al.  Can structural MRI aid in clinical classification? A machine learning study in two independent samples of patients with schizophrenia, bipolar disorder and healthy subjects , 2014, NeuroImage.

[136]  Daoqiang Zhang,et al.  Predicting Future Clinical Changes of MCI Patients Using Longitudinal and Multimodal Biomarkers , 2012, PloS one.

[137]  Sergio Escalera,et al.  Automatic brain caudate nuclei segmentation and classification in diagnostic of Attention-Deficit/Hyperactivity Disorder , 2012, Comput. Medical Imaging Graph..

[138]  Russell Greiner,et al.  ADHD-200 Global Competition: diagnosing ADHD using personal characteristic data can outperform resting state fMRI measurements , 2012, Front. Syst. Neurosci..

[139]  Dongdong Lin,et al.  Integrating fMRI and SNP data for biomarker identification for schizophrenia with a sparse representation based variable selection method , 2013, BMC Medical Genomics.

[140]  R. A. Fisher,et al.  Design of Experiments , 1936 .

[141]  Hilleke E. Hulshoff Pol,et al.  Classification of schizophrenia patients and healthy controls from structural MRI scans in two large independent samples , 2012, NeuroImage.

[142]  Daniel Rueckert,et al.  Random forest-based similarity measures for multi-modal classification of Alzheimer's disease , 2013, NeuroImage.

[143]  Gopikrishna Deshpande,et al.  Multimodal neuroimaging based classification of autism spectrum disorder using anatomical, neurochemical, and white matter correlates , 2015, Cortex.

[144]  Martha E Shenton,et al.  Combining ERP and Structural MRI Information in First Episode Schizophrenia and Bipolar Disorder , 2008, Clinical EEG and neuroscience.

[145]  P. Golland,et al.  Whole brain resting state functional connectivity abnormalities in schizophrenia , 2012, Schizophrenia Research.

[146]  Joaquín Goñi,et al.  Nodal centrality of functional network in the differentiation of schizophrenia , 2015, Schizophrenia Research.

[147]  C. Mun,et al.  Automated Classification to Predict the Progression of Alzheimer's Disease Using Whole-Brain Volumetry and DTI , 2015, Psychiatry investigation.

[148]  Lauren E. Libero,et al.  Identification of neural connectivity signatures of autism using machine learning , 2013, Front. Hum. Neurosci..

[149]  Steven C. R. Williams,et al.  Describing the Brain in Autism in Five Dimensions—Magnetic Resonance Imaging-Assisted Diagnosis of Autism Spectrum Disorder Using a Multiparameter Classification Approach , 2010, The Journal of Neuroscience.

[150]  F Kruggel,et al.  Hippocampal volume discriminates between normal cognition; questionable and mild dementia in the elderly , 2001, Neurobiology of Aging.

[151]  Massimo Brescia,et al.  Feature Selection Based on Machine Learning in MRIs for Hippocampal Segmentation , 2015, Comput. Math. Methods Medicine.

[152]  Piernicola Oliva,et al.  Gray Matter Alterations in Young Children with Autism Spectrum Disorders: Comparing Morphometry at the Voxel and Regional Level , 2015, Journal of neuroimaging : official journal of the American Society of Neuroimaging.

[153]  Tom M. Mitchell,et al.  Machine learning classifiers and fMRI: A tutorial overview , 2009, NeuroImage.

[154]  Grethe Jeff,et al.  The Neuroimaging Informatics Tools and Resources Clearinghouse (NITRC) , 2010 .

[155]  P. Battista,et al.  Frontiers for the Early Diagnosis of AD by Means of MRI Brain Imaging and Support Vector Machines. , 2016, Current Alzheimer research.

[156]  Hao He,et al.  Three-way FMRI-DTI-methylation data fusion based on mCCA+jICA and its application to schizophrenia , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[157]  Tomer Fekete,et al.  Combining Classification with fMRI-Derived Complex Network Measures for Potential Neurodiagnostics , 2013, PloS one.

[158]  Vince D. Calhoun,et al.  Identification of Imaging Biomarkers in Schizophrenia: A Coefficient-constrained Independent Component Analysis of the Mind Multi-site Schizophrenia Study , 2010, Neuroinformatics.

[159]  Vince D. Calhoun,et al.  Discriminating Bipolar Disorder From Major Depression Based on SVM-FoBa: Efficient Feature Selection With Multimodal Brain Imaging Data , 2015, IEEE Transactions on Autonomous Mental Development.

[160]  Yang Jing L1 Regularization Path Algorithm for Generalized Linear Models , 2008 .

[161]  Dewen Hu,et al.  Functional connectivity-based signatures of schizophrenia revealed by multiclass pattern analysis of resting-state fMRI from schizophrenic patients and their healthy siblings , 2013, Biomedical engineering online.

[162]  Kengo Ito,et al.  Effects of imaging modalities, brain atlases and feature selection on prediction of Alzheimer's disease , 2015, Journal of Neuroscience Methods.

[163]  B. Franke,et al.  From estimating activation locality to predicting disorder: A review of pattern recognition for neuroimaging-based psychiatric diagnostics , 2015, Neuroscience & Biobehavioral Reviews.

[164]  M. Barker,et al.  Partial least squares for discrimination , 2003 .

[165]  Dewen Hu,et al.  Discriminative analysis of resting-state functional connectivity patterns of schizophrenia using low dimensional embedding of fMRI , 2010, NeuroImage.

[166]  E. DeYoe,et al.  Functional magnetic resonance imaging (FMRI) of the human brain , 1994, Journal of Neuroscience Methods.

[167]  Vince D. Calhoun,et al.  Deep learning for neuroimaging: a validation study , 2013, Front. Neurosci..

[168]  A. Caprihan,et al.  Application of principal component analysis to distinguish patients with schizophrenia from healthy controls based on fractional anisotropy measurements , 2008, NeuroImage.

[169]  Melissa J. Green,et al.  Genome-wide supported variant MIR137 and severe negative symptoms predict membership of an impaired cognitive subtype of schizophrenia , 2013, Molecular Psychiatry.

[170]  T. Chan,et al.  Independent component analysis-based classification of Alzheimer's disease MRI data. , 2011, Journal of Alzheimer's disease : JAD.

[171]  Fang Yu,et al.  Multiparametric MRI Characterization and Prediction in Autism Spectrum Disorder Using Graph Theory and Machine Learning , 2014, PloS one.

[172]  Dinggang Shen,et al.  Classification of Structural Images via High-Dimensional Image Warping, Robust Feature Extraction, and SVM , 2005, MICCAI.

[173]  Vince D. Calhoun,et al.  An ICA-based method for the identification of optimal FMRI features and components using combined group-discriminative techniques , 2009, NeuroImage.

[174]  Tao Liu,et al.  Automated detection of amnestic mild cognitive impairment in community-dwelling elderly adults: A combined spatial atrophy and white matter alteration approach , 2012, NeuroImage.

[175]  Peter F. Liddle,et al.  Clinical Utility of Machine-Learning Approaches in Schizophrenia: Improving Diagnostic Confidence for Translational Neuroimaging , 2013, Front. Psychiatry.

[176]  Nitin R. Patel,et al.  Importance Sampling for Estimating Exact Probabilities in Permutational Inference , 1988 .

[177]  Dinggang Shen,et al.  Graph-guided joint prediction of class label and clinical scores for the Alzheimer’s disease , 2015, Brain Structure and Function.

[178]  Hao He,et al.  Three-way (N-way) fusion of brain imaging data based on mCCA+jICA and its application to discriminating schizophrenia , 2013, NeuroImage.

[179]  A. Mechelli,et al.  Using Structural Neuroimaging to Make Quantitative Predictions of Symptom Progression in Individuals at Ultra-High Risk for Psychosis , 2014, Front. Psychiatry.

[180]  Mark S. Cohen,et al.  Insights into multimodal imaging classification of ADHD , 2012, Front. Syst. Neurosci..

[181]  M. Milham,et al.  The ADHD-200 Consortium: A Model to Advance the Translational Potential of Neuroimaging in Clinical Neuroscience , 2012, Front. Syst. Neurosci..

[182]  Tyrone D. Cannon,et al.  Elucidating a Magnetic Resonance Imaging-Based Neuroanatomic Biomarker for Psychosis: Classification Analysis Using Probabilistic Brain Atlas and Machine Learning Algorithms , 2009, Biological Psychiatry.

[183]  V. Calhoun,et al.  A Review of Challenges in the Use of fMRI for Disease Classification / Characterization and A Projection Pursuit Application from A Multi-site fMRI Schizophrenia Study , 2008, Brain Imaging and Behavior.

[184]  Kichang Kwak,et al.  Multimodal Discrimination of Alzheimer’s Disease Based on Regional Cortical Atrophy and Hypometabolism , 2015, PloS one.

[185]  Teruhiko Higuchi,et al.  Discrimination between schizophrenia and major depressive disorder by magnetic resonance imaging of the female brain. , 2013, Journal of psychiatric research.

[186]  Yudong Zhang,et al.  Detection of subjects and brain regions related to Alzheimer's disease using 3D MRI scans based on eigenbrain and machine learning , 2015, Front. Comput. Neurosci..

[187]  Daniel Schwarz,et al.  Maximum-uncertainty linear discrimination analysis of first-episode schizophrenia subjects , 2011, Psychiatry Research: Neuroimaging.

[188]  Yasuhiro Nakata,et al.  Discrimination of female schizophrenia patients from healthy women using multiple structural brain measures obtained with voxel‐based morphometry , 2012, Psychiatry and clinical neurosciences.

[189]  Peter M. W. Gill,et al.  Efficient calculation of p-values in linear-statistic permutation significance tests , 2007 .

[190]  中村 主計,et al.  Multiple structural brain measures obtained by three-dimensional MRI to distinguish between schizophrenia patients and normal subjects , 2003 .

[191]  Richard A. Wasniowski Using support vector machines in data mining , 2004 .

[192]  Mikko Sams,et al.  Functional MRI of the vocalization-processing network in the macaque brain , 2015, Front. Neurosci..

[193]  Vince D. Calhoun,et al.  The tenth annual MLSP competition: Schizophrenia classification challenge , 2014, 2014 IEEE International Workshop on Machine Learning for Signal Processing (MLSP).

[194]  Barry Horwitz,et al.  Discriminant analysis of MRI measures as a method to determine the presence of dementia of the Alzheimer type , 1995, Psychiatry Research.

[195]  Benjamin J. Cowling,et al.  Estimating Incidence Curves of Several Infections Using Symptom Surveillance Data , 2011, PloS one.

[196]  J. Suckling,et al.  Mapping the brain in autism. A voxel-based MRI study of volumetric differences and intercorrelations in autism. , 2004, Brain : a journal of neurology.

[197]  Yong He,et al.  Alterations in Regional Homogeneity of Spontaneous Brain Activity in Late-Life Subthreshold Depression , 2013, PloS one.

[198]  Vince D. Calhoun,et al.  Deep neural network with weight sparsity control and pre-training extracts hierarchical features and enhances classification performance: Evidence from whole-brain resting-state functional connectivity patterns of schizophrenia , 2016, NeuroImage.

[199]  M. Brock,et al.  The use of “overall accuracy” to evaluate the validity of screening or diagnostic tests , 2004, Journal of General Internal Medicine.

[200]  Seong-Whan Lee,et al.  Latent feature representation with stacked auto-encoder for AD/MCI diagnosis , 2013, Brain Structure and Function.

[201]  Ali Saffet Gonul,et al.  Computer based classification of MR scans in first time applicant Alzheimer patients. , 2012, Current Alzheimer research.

[202]  Clifford R. Jack,et al.  Diagnostic neuroimaging across diseases , 2011, NeuroImage.

[203]  Kenneth Hugdahl,et al.  Visual-spatial information processing in the two hemispheres of the brain is dependent on the feature characteristics of the stimulus , 2013, Front. Neurosci..

[204]  R. Ernst,et al.  The US economic and social costs of Alzheimer's disease revisited. , 1994, American journal of public health.

[205]  Norbert Schuff,et al.  Locally linear embedding (LLE) for MRI based Alzheimer's disease classification , 2013, NeuroImage.

[206]  David B. Keator,et al.  A National Human Neuroimaging Collaboratory Enabled by the Biomedical Informatics Research Network (BIRN) , 2008, IEEE Transactions on Information Technology in Biomedicine.

[207]  Vince D. Calhoun,et al.  A projection pursuit algorithm to classify individuals using fMRI data: Application to schizophrenia , 2008, NeuroImage.

[208]  Vittorio Murino,et al.  Classification of schizophrenia using feature-based morphometry , 2012, Journal of Neural Transmission.

[209]  G. Hynd,et al.  Prediction of group membership in developmental dyslexia, attention deficit hyperactivity disorder, and normal controls using brain morphometric analysis of magnetic resonance imaging. , 1996, Archives of clinical neuropsychology : the official journal of the National Academy of Neuropsychologists.

[210]  P. Lauterbur,et al.  Principles of magnetic resonance imaging : a signal processing perspective , 1999 .

[211]  Marie Chupin,et al.  Automatic classi fi cation of patients with Alzheimer ' s disease from structural MRI : A comparison of ten methods using the ADNI database , 2010 .

[212]  P. Good Permutation, Parametric, and Bootstrap Tests of Hypotheses , 2005 .

[213]  Dinggang Shen,et al.  Diagnosis of autism spectrum disorders using regional and interregional morphological features , 2014, Human brain mapping.

[214]  Andrea Chincarini,et al.  Local MRI analysis approach in the diagnosis of early and prodromal Alzheimer's disease , 2011, NeuroImage.

[215]  Pat Langley,et al.  Selection of Relevant Features and Examples in Machine Learning , 1997, Artif. Intell..

[216]  Vince D. Calhoun,et al.  Human Neuroscience , 2022 .

[217]  Daniel A. Braun,et al.  A sensorimotor paradigm for Bayesian model selection , 2012, Front. Hum. Neurosci..

[218]  F. Shi,et al.  Hippocampal Shape Analysis of Alzheimer Disease Based on Machine Learning Methods , 2007, American Journal of Neuroradiology.

[219]  Beatriz Luna,et al.  The Autism Brain Imaging Data Exchange (ABIDE) consortium: open sharing of autism resting state fMRI data , 2012 .

[220]  Marie Chupin,et al.  Spatial and Anatomical Regularization of SVM: A General Framework for Neuroimaging Data , 2013, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[221]  Salim Lahmiri,et al.  New approach for automatic classification of Alzheimer's disease, mild cognitive impairment and healthy brain magnetic resonance images. , 2014, Healthcare technology letters.

[222]  Ju Han Kim,et al.  Online Learning for Classification of Alzheimer Disease based on Cortical Thickness and Hippocampal Shape Analysis , 2014, Healthcare informatics research.

[223]  Christos Davatzikos,et al.  ODVBA: Optimally-Discriminative Voxel-Based Analysis , 2011, IEEE Transactions on Medical Imaging.

[224]  Chao Li,et al.  Feature Selection Based on Features Unit , 2017, 2017 4th International Conference on Information Science and Control Engineering (ICISCE).

[225]  Vince D. Calhoun,et al.  Neuroimaging-Based Automatic Classification of Schizophrenia , 2013 .

[226]  Philip K. McGuire,et al.  Prognostic prediction of therapeutic response in depression using high-field MR imaging , 2011, NeuroImage.

[227]  Alessandra Retico,et al.  Neuroimaging-based methods for autism identification: a possible translational application? , 2014, Functional neurology.

[228]  V. Calhoun,et al.  High Classification Accuracy for Schizophrenia with Rest and Task fMRI Data , 2012, Front. Hum. Neurosci..

[229]  Roman Filipovych,et al.  Semi-supervised pattern classification of medical images: Application to mild cognitive impairment (MCI) , 2011, NeuroImage.

[230]  Xiaoying Wu,et al.  Structural and functional biomarkers of prodromal Alzheimer's disease: A high-dimensional pattern classification study , 2008, NeuroImage.

[231]  Yun Jiao,et al.  Predictive models of autism spectrum disorder based on brain regional cortical thickness , 2010, NeuroImage.

[232]  Clifford R. Jack,et al.  Effects of hardware heterogeneity on the performance of SVM Alzheimer's disease classifier , 2011, NeuroImage.

[233]  Tongsheng Zhang,et al.  Extreme Learning Machine-Based Classification of ADHD Using Brain Structural MRI Data , 2013, PloS one.

[234]  Paul M. Thompson,et al.  Cortical thickness predicts the first onset of major depression in adolescence , 2015, International Journal of Developmental Neuroscience.

[235]  L. Younes,et al.  Shape abnormalities of subcortical and ventricular structures in mild cognitive impairment and Alzheimer's disease: Detecting, quantifying, and predicting , 2014, Human brain mapping.

[236]  Norbert Schuff,et al.  Patterns of structural complexity in Alzheimer's disease and frontotemporal dementia , 2009, Human brain mapping.

[237]  Clifford R. Jack,et al.  Alzheimer's disease diagnosis in individual subjects using structural MR images: Validation studies , 2008, NeuroImage.

[238]  Lei Wang,et al.  Abnormalities of thalamic volume and shape in schizophrenia. , 2004, The American journal of psychiatry.

[239]  Jean Lersch Tuning in the Voices , 1979 .

[240]  B. Ardekani,et al.  Diffusion tensor imaging reliably differentiates patients with schizophrenia from healthy volunteers , 2011, Human brain mapping.

[241]  Shantanu H. Joshi,et al.  Diffusion weighted imaging-based maximum density path analysis and classification of Alzheimer's disease , 2015, Neurobiology of Aging.

[242]  Wenbin Li,et al.  Enriched white matter connectivity networks for accurate identification of MCI patients , 2011, NeuroImage.

[243]  D. Rice,et al.  The economic impact of schizophrenia. , 1999, The Journal of clinical psychiatry.

[244]  Gavin Brown,et al.  Conditional Likelihood Maximisation: A Unifying Framework for Mutual Information Feature Selection , 2012 .

[245]  Jun Liu,et al.  Anatomical Brain Images Alone Can Accurately Diagnose Chronic Neuropsychiatric Illnesses , 2012, PloS one.

[246]  Chris Chatwin,et al.  Grey-matter texture abnormalities and reduced hippocampal volume are distinguishing features of schizophrenia , 2014, Psychiatry Research: Neuroimaging.

[247]  Arthur W. Toga,et al.  Automated hippocampal shape analysis predicts the onset of dementia in mild cognitive impairment , 2011, NeuroImage.

[248]  Yufeng Wang,et al.  Fisher discriminative analysis of resting-state brain function for attention-deficit/hyperactivity disorder , 2008, NeuroImage.

[249]  Xin Yu,et al.  Distinguishing bipolar and major depressive disorders by brain structural morphometry: a pilot study , 2015, BMC Psychiatry.

[250]  D. Collingridge A Primer on Quantitized Data Analysis and Permutation Testing , 2013 .

[251]  D. Shen,et al.  Discriminant analysis of longitudinal cortical thickness changes in Alzheimer's disease using dynamic and network features , 2012, Neurobiology of Aging.

[252]  Muhammad Abuzar Fahiem,et al.  An Ensemble-of-Classifiers Based Approach for Early Diagnosis of Alzheimer's Disease: Classification Using Structural Features of Brain Images , 2014, Comput. Math. Methods Medicine.

[253]  M. Jorge Cardoso,et al.  Accurate multimodal probabilistic prediction of conversion to Alzheimer's disease in patients with mild cognitive impairment☆ , 2013, NeuroImage: Clinical.

[254]  Klaus P. Ebmeier,et al.  Multi-centre diagnostic classification of individual structural neuroimaging scans from patients with major depressive disorder. , 2012, Brain : a journal of neurology.

[255]  Byungkyu Brian Park,et al.  Classification of diffusion tensor images for the early detection of Alzheimer's disease , 2013, Comput. Biol. Medicine.

[256]  R. Murray,et al.  Pattern of neural responses to verbal fluency shows diagnostic specificity for schizophrenia and bipolar disorder , 2011, BMC psychiatry.

[257]  Vaughan J. Carr,et al.  Multivariate neuroanatomical classification of cognitive subtypes in schizophrenia: A support vector machine learning approach , 2014, NeuroImage: Clinical.

[258]  Yoshua Bengio,et al.  Deep Learning of Representations: Looking Forward , 2013, SLSP.

[259]  A. Dale,et al.  Mild cognitive impairment: baseline and longitudinal structural MR imaging measures improve predictive prognosis. , 2011, Radiology.

[260]  B. Pfleiderer,et al.  Multivariate Classification of Blood Oxygen Level–Dependent fMRI Data with Diagnostic Intention: A Clinical Perspective , 2014, American Journal of Neuroradiology.

[261]  Jessica A. Turner,et al.  COINS Data Exchange: An open platform for compiling, curating, and disseminating neuroimaging data , 2015, NeuroImage.

[262]  Deepak B. Khatry,et al.  Brain Magnetic Resonance Imaging in Asthmatics , 2010 .

[263]  Scott Shenker,et al.  Spark: Cluster Computing with Working Sets , 2010, HotCloud.

[264]  Vince D. Calhoun,et al.  Thalamus and posterior temporal lobe show greater inter-network connectivity at rest and across sensory paradigms in schizophrenia , 2014, NeuroImage.

[265]  Daoqiang Zhang,et al.  Hierarchical fusion of features and classifier decisions for Alzheimer's disease diagnosis , 2014, Human brain mapping.

[266]  Joseph Biederman,et al.  Attention-Deficit/Hyperactivity Disorder: A Selective Overview , 2005, Biological Psychiatry.

[267]  Anand D. Sarwate,et al.  Large scale collaboration with autonomy: Decentralized data ICA , 2015, 2015 IEEE 25th International Workshop on Machine Learning for Signal Processing (MLSP).

[268]  Yun Jiao,et al.  Altered regional homogeneity patterns in adults with attention-deficit hyperactivity disorder. , 2013, European journal of radiology.

[269]  Juan Li,et al.  The Receiver Operational Characteristic for Binary Classification with Multiple Indices and Its Application to the Neuroimaging Study of Alzheimer's Disease , 2013, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[270]  Clifford R. Jack,et al.  Predicting Clinical Scores from Magnetic Resonance Scans in Alzheimer's Disease , 2010, NeuroImage.

[271]  A. Ng Feature selection, L1 vs. L2 regularization, and rotational invariance , 2004, Twenty-first international conference on Machine learning - ICML '04.

[272]  Michael I. Miller,et al.  Large deformation diffeomorphic metric mapping of vector fields , 2005, IEEE Transactions on Medical Imaging.

[273]  Jessica A. Turner,et al.  Generation of synthetic structural magnetic resonance images for deep learning pre-training , 2015, 2015 IEEE 12th International Symposium on Biomedical Imaging (ISBI).

[274]  Chien-Chang Ho,et al.  ADHD classification by a texture analysis of anatomical brain MRI data , 2012, Front. Syst. Neurosci..

[275]  Sundaram Suresh,et al.  Identification of brain regions responsible for Alzheimer's disease using a Self-adaptive Resource Allocation Network , 2012, Neural Networks.

[276]  Anand D. Sarwate,et al.  NEUROINFORMATICS Sharing privacy-sensitive access to neuroimaging and genetics data : a review and preliminary validation , 2018 .

[277]  Abraham Z. Snyder,et al.  Spurious but systematic correlations in functional connectivity MRI networks arise from subject motion , 2012, NeuroImage.

[278]  Vince D. Calhoun,et al.  A method for functional network connectivity among spatially independent resting-state components in schizophrenia , 2008, NeuroImage.

[279]  Swathi P. Iyer,et al.  Distinct neural signatures detected for ADHD subtypes after controlling for micro-movements in resting state functional connectivity MRI data , 2012, Front. Syst. Neurosci..

[280]  Jessica A Turner,et al.  The rise of large-scale imaging studies in psychiatry , 2014, GigaScience.

[281]  John-Dylan Haynes,et al.  Diagnostic Classification of Schizophrenia Patients on the Basis of Regional Reward-Related fMRI Signal Patterns , 2015, PloS one.

[282]  Ramon Casanova,et al.  Classification of Structural MRI Images in Alzheimer's Disease from the Perspective of Ill-Posed Problems , 2012, PloS one.

[283]  Vince D. Calhoun,et al.  Enhanced disease characterization through multi network functional normalization in fMRI , 2015, Front. Neurosci..

[284]  Malek Adjouadi,et al.  Inclusion of Neuropsychological Scores in Atrophy Models Improves Diagnostic Classification of Alzheimer's Disease and Mild Cognitive Impairment , 2015, Comput. Intell. Neurosci..

[285]  Bryon A. Mueller,et al.  Altered resting state complexity in schizophrenia , 2012, NeuroImage.

[286]  Lucina Q. Uddin,et al.  Multivariate Searchlight Classification of Structural Magnetic Resonance Imaging in Children and Adolescents with Autism , 2011, Biological Psychiatry.

[287]  L. Wing The autistic spectrum , 1997, The Lancet.

[288]  Dimitris Samaras,et al.  Can a Single Brain Region Predict a Disorder? , 2012, IEEE Transactions on Medical Imaging.

[289]  Yong He,et al.  Discriminative analysis of early Alzheimer's disease using multi-modal imaging and multi-level characterization with multi-classifier (M3) , 2012, NeuroImage.

[290]  Chunming Xie,et al.  State-based functional connectivity changes associate with cognitive decline in amnestic mild cognitive impairment subjects , 2015, Behavioural Brain Research.

[291]  M. Gilardi,et al.  Magnetic resonance imaging biomarkers for the early diagnosis of Alzheimer's disease: a machine learning approach , 2015, Front. Neurosci..

[292]  Jessica A. Turner,et al.  COINS: An Innovative Informatics and Neuroimaging Tool Suite Built for Large Heterogeneous Datasets , 2011, Front. Neuroinform..

[293]  John Shawe-Taylor,et al.  Sparse Network-Based Models for Patient Classification Using fMRI , 2013, PRNI.

[294]  A. Jablensky,et al.  Subtyping schizophrenia: implications for genetic research , 2006, Molecular Psychiatry.

[295]  S. Fullerton,et al.  Glad You Asked: Participants' Opinions of Re-Consent for DbGap Data Submission , 2010, Journal of empirical research on human research ethics : JERHRE.

[296]  Yasuhiro Kawasaki,et al.  Multiple structural brain measures obtained by three-dimensional magnetic resonance imaging to distinguish between schizophrenia patients and normal subjects. , 2004, Schizophrenia bulletin.

[297]  Sébastien Ourselin,et al.  Automatic Brain , 2019 .

[298]  Vince D. Calhoun,et al.  Characterization of groups using composite kernels and multi-source fMRI analysis data: Application to schizophrenia , 2011, NeuroImage.

[299]  M. Filippi,et al.  Robust Automated Detection of Microstructural White Matter Degeneration in Alzheimer’s Disease Using Machine Learning Classification of Multicenter DTI Data , 2013, PloS one.

[300]  S H Snyder,et al.  Identification of Bradykinin in Mammalian Brain , 1984, Journal of neurochemistry.

[301]  Randy L. Gollub,et al.  The MCIC Collection: A Shared Repository of Multi-Modal, Multi-Site Brain Image Data from a Clinical Investigation of Schizophrenia , 2013, Neuroinformatics.

[302]  Olga V. Demler,et al.  The epidemiology of major depressive disorder: results from the National Comorbidity Survey Replication (NCS-R). , 2003, JAMA.

[303]  D. Hu,et al.  Discriminative analysis of non-linear brain connectivity in schizophrenia: an fMRI Study , 2013, Front. Hum. Neurosci..

[304]  R. Meuli,et al.  A multi-contrast MRI study of microstructural brain damage in patients with mild cognitive impairment , 2015, NeuroImage: Clinical.

[305]  A. Jablensky,et al.  Neuregulin 3 (NRG3) as a susceptibility gene in a schizophrenia subtype with florid delusions and relatively spared cognition , 2011, Molecular Psychiatry.

[306]  D. Selkoe Alzheimer's disease. , 2011, Cold Spring Harbor perspectives in biology.

[307]  Michael I. Miller,et al.  Multi-Modal MRI Analysis with Disease-Specific Spatial Filtering: Initial Testing to Predict Mild Cognitive Impairment Patients Who Convert to Alzheimer’s Disease , 2011, Front. Neur..

[308]  L. Beckett,et al.  Annual Incidence of Alzheimer Disease in the United States Projected to the Years 2000 Through 2050 , 2001, Alzheimer disease and associated disorders.

[309]  Jiann-Der Lee,et al.  Discrimination between Alzheimer's Disease and Mild Cognitive Impairment Using SOM and PSO-SVM , 2013, Comput. Math. Methods Medicine.

[310]  Huiguang He,et al.  Classification of ADHD children through multimodal magnetic resonance imaging , 2012, Front. Syst. Neurosci..

[311]  Ralph-Axel Müller,et al.  Diagnostic classification of intrinsic functional connectivity highlights somatosensory, default mode, and visual regions in autism , 2015, NeuroImage: Clinical.

[312]  Peter A. Bandettini,et al.  Does feature selection improve classification accuracy? Impact of sample size and feature selection on classification using anatomical magnetic resonance images , 2012, NeuroImage.

[313]  Stephen Strakowski Structural Brain Abnormalities in Bipolar Disorder , 2012 .

[314]  Alan L. Yuille,et al.  Non-negative matrix factorization of multimodal MRI, fMRI and phenotypic data reveals differential changes in default mode subnetworks in ADHD , 2014, NeuroImage.

[315]  J Mocco,et al.  An Update on the Adjunctive Neurovascular Support of Wide-Neck Aneurysm Embolization and Reconstruction Trial: 1-Year Safety and Angiographic Results , 2018, American Journal of Neuroradiology.

[316]  Bogdan Wilamowski,et al.  Fully Connected Cascade Artificial Neural Network Architecture for Attention Deficit Hyperactivity Disorder Classification From Functional Magnetic Resonance Imaging Data , 2015, IEEE Transactions on Cybernetics.

[317]  Jie Xiang,et al.  Resting-state functional connectivity abnormalities in first-onset unmedicated depression , 2014, Neural regeneration research.

[318]  M. Trimble,et al.  Neuropsychiatry at the Millennium , 1999, CNS Spectrums.

[319]  V. Calhoun,et al.  Multimodal fusion of brain imaging data: A key to finding the missing link(s) in complex mental illness. , 2016, Biological psychiatry. Cognitive neuroscience and neuroimaging.

[320]  Cynthia Dwork,et al.  Differential Privacy , 2006, ICALP.

[321]  Carlos E. Thomaz,et al.  Machine learning algorithm accurately detects fMRI signature of vulnerability to major depression , 2015, Psychiatry Research: Neuroimaging.

[322]  Janaina Mourão Miranda,et al.  Investigating the predictive value of whole-brain structural MR scans in autism: A pattern classification approach , 2010, NeuroImage.

[323]  Wenbin Guo,et al.  Decreased regional activity of default-mode network in unaffected siblings of schizophrenia patients at rest , 2014, European Neuropsychopharmacology.

[324]  Dewen Hu,et al.  Convergent and Divergent Functional Connectivity Patterns in Schizophrenia and Depression , 2013, PloS one.

[325]  Franklin T. Luk,et al.  Principal Component Analysis for Distributed Data Sets with Updating , 2005, APPT.

[326]  Randy L. Gollub,et al.  Neuropsychological Testing and Structural Magnetic Resonance Imaging as Diagnostic Biomarkers Early in the Course of Schizophrenia and Related Psychoses , 2011, Neuroinformatics.

[327]  Janaina Mourão Miranda,et al.  Patient classification as an outlier detection problem: An application of the One-Class Support Vector Machine , 2011, NeuroImage.

[328]  C. Jack,et al.  Medial temporal atrophy on MRI in normal aging and very mild Alzheimer's disease , 1997, Neurology.

[329]  Paul M. Matthews,et al.  Regional White Matter Integrity Differentiates Between Vascular Dementia and Alzheimer Disease , 2009, Stroke.

[330]  Jianfeng Feng,et al.  Aberrant functional connectivity for diagnosis of major depressive disorder: A discriminant analysis , 2014, Psychiatry and clinical neurosciences.

[331]  Jack C. Rogers,et al.  Combination of Resting State fMRI, DTI, and sMRI Data to Discriminate Schizophrenia by N-way MCCA + jICA , 2013, Front. Hum. Neurosci..

[332]  Abbas Babajani-Feremi,et al.  Identifying patients with Alzheimer’s disease using resting-state fMRI and graph theory , 2015, Clinical Neurophysiology.

[333]  R. Kessler,et al.  Lifetime and 12-month prevalence of DSM-III-R psychiatric disorders in the United States. Results from the National Comorbidity Survey. , 1994, Archives of general psychiatry.

[334]  S. Charles Schulz,et al.  Classification of adolescent psychotic disorders using linear discriminant analysis , 2006, Schizophrenia Research.

[335]  D. Tank,et al.  Brain magnetic resonance imaging with contrast dependent on blood oxygenation. , 1990, Proceedings of the National Academy of Sciences of the United States of America.

[336]  C. Davatzikos,et al.  Neuroanatomical Classification in a Population-Based Sample of Psychotic Major Depression and Bipolar I Disorder with 1 Year of Diagnostic Stability , 2014, BioMed research international.

[337]  Moo K. Chung,et al.  Spatially augmented LPboosting for AD classification with evaluations on the ADNI dataset , 2009, NeuroImage.

[338]  Rui Yan,et al.  Identifying major depressive disorder using Hurst exponent of resting-state brain networks , 2013, Psychiatry Research: Neuroimaging.

[339]  Piergiorgio Cerello,et al.  Predictive Models Based on Support Vector Machines: Whole‐Brain versus Regional Analysis of Structural MRI in the Alzheimer's Disease , 2015, Journal of neuroimaging : official journal of the American Society of Neuroimaging.

[340]  Edward Challis,et al.  Gaussian process classification of Alzheimer's disease and mild cognitive impairment from resting-state fMRI , 2015, NeuroImage.

[341]  Carey E. Priebe,et al.  Collaborative computational anatomy: An MRI morphometry study of the human brain via diffeomorphic metric mapping , 2009, Human Brain Mapping.

[342]  Andrew Simmons,et al.  Predictive neurofunctional markers of attention-deficit/hyperactivity disorder based on pattern classification of temporal processing. , 2014, Journal of the American Academy of Child and Adolescent Psychiatry.

[343]  Lloyd A. Smith,et al.  Practical feature subset selection for machine learning , 1998 .

[344]  Mubarak Shah,et al.  Exploiting the brain's network structure in identifying ADHD subjects , 2012, Front. Syst. Neurosci..

[345]  Christos Davatzikos,et al.  Optimally-Discriminative Voxel-Based Morphometry significantly increases the ability to detect group differences in schizophrenia, mild cognitive impairment, and Alzheimer's disease , 2013, NeuroImage.

[346]  Xiaoying Tang,et al.  Baseline shape diffeomorphometry patterns of subcortical and ventricular structures in predicting conversion of mild cognitive impairment to Alzheimer's disease. , 2015, Journal of Alzheimer's disease : JAD.

[347]  M. Phillips,et al.  Pattern Recognition and Functional Neuroimaging Help to Discriminate Healthy Adolescents at Risk for Mood Disorders from Low Risk Adolescents , 2012, PloS one.

[348]  D. Louis Collins,et al.  Simultaneous segmentation and grading of anatomical structures for patient's classification: Application to Alzheimer's disease , 2012, NeuroImage.

[349]  Shantanu H. Joshi,et al.  Brain connectivity and novel network measures for Alzheimer's disease classification , 2015, Neurobiology of Aging.

[350]  Afef Abdelkrim,et al.  Machine learning framework for image classification , 2017 .

[351]  Adrian Preda,et al.  Tuning in to the voices: a multisite FMRI study of auditory hallucinations. , 2009, Schizophrenia bulletin.

[352]  S. Teipel,et al.  Multimodal analysis of functional and structural disconnection in Alzheimer's disease using multiple kernel SVM , 2015, Human brain mapping.

[353]  Hiroshi Honda,et al.  Automated method for identification of patients with Alzheimer's disease based on three-dimensional MR images. , 2008, Academic radiology.

[354]  Michael Angstadt,et al.  Disease prediction based on functional connectomes using a scalable and spatially-informed support vector machine , 2013, NeuroImage.

[355]  Daniel Schwarz,et al.  Combining various types of classifiers and features extracted from magnetic resonance imaging data in schizophrenia recognition , 2015, Psychiatry Research: Neuroimaging.

[356]  B. Turetsky,et al.  Whole-brain morphometric study of schizophrenia revealing a spatially complex set of focal abnormalities. , 2005, Archives of general psychiatry.

[357]  M. Breakspear,et al.  Changes in Community Structure of Resting State Functional Connectivity in Unipolar Depression , 2012, PloS one.

[358]  Pradeep Reddy Raamana,et al.  Novel ThickNet features for the discrimination of amnestic MCI subtypes , 2014, NeuroImage: Clinical.

[359]  J. Ramírez,et al.  Regions of interest computed by SVM wrapped method for Alzheimer’s disease examination from segmented MRI , 2014, Front. Aging Neurosci..

[360]  Gavin Brown,et al.  Conditional Likelihood Maximisation: A Unifying Framework for Information Theoretic Feature Selection , 2012, J. Mach. Learn. Res..

[361]  A. R. Rao,et al.  Attributed graph distance measure for automatic detection of attention deficit hyperactive disordered subjects , 2014, Front. Neural Circuits.

[362]  B L Miller,et al.  Midline cerebral morphometry distinguishes frontotemporal dementia and Alzheimer's disease , 1997, Neurology.

[363]  Eric Courchesne,et al.  Outcome classification of preschool children with autism spectrum disorders using MRI brain measures. , 2004, Journal of the American Academy of Child and Adolescent Psychiatry.

[364]  Daoqiang Zhang,et al.  Multimodal classification of Alzheimer's disease and mild cognitive impairment , 2011, NeuroImage.

[365]  Frans Vos,et al.  Shaving diffusion tensor images in discriminant analysis: A study into schizophrenia , 2006, Medical Image Anal..

[366]  Michael I. Miller,et al.  Large Deformation Diffeomorphism and Momentum Based Hippocampal Shape Discrimination in Dementia of the Alzheimer type , 2007, IEEE Transactions on Medical Imaging.

[367]  R. Petersen,et al.  Mild Cognitive Impairment: An Overview , 2008, CNS Spectrums.

[368]  Heikki Huttunen,et al.  Machine learning framework for early MRI-based Alzheimer's conversion prediction in MCI subjects , 2015, NeuroImage.

[369]  Ben Taskar,et al.  Generative-Discriminative Basis Learning for Medical Imaging , 2012, IEEE Transactions on Medical Imaging.

[370]  Tetsuya Iidaka,et al.  Resting state functional magnetic resonance imaging and neural network classified autism and control , 2015, Cortex.

[371]  Jing Wang,et al.  Differential Deactivation during Mentalizing and Classification of Autism Based on Default Mode Network Connectivity , 2012, PloS one.

[372]  J. Price,et al.  Machine learning approaches for integrating clinical and imaging features in late‐life depression classification and response prediction , 2015, International journal of geriatric psychiatry.

[373]  H. Zou,et al.  Regularization and variable selection via the elastic net , 2005 .

[374]  Roland N. Boubela,et al.  fMRI measurements of amygdala activation are confounded by stimulus correlated signal fluctuation in nearby veins draining distant brain regions , 2015, Scientific Reports.

[375]  Dinggang Shen,et al.  Inter-modality Relationship Constrained Multi-Task Feature Selection for AD/MCI Classification , 2013, MICCAI.

[376]  Jonathan D. Power,et al.  Recent progress and outstanding issues in motion correction in resting state fMRI , 2015, NeuroImage.

[377]  Daniel Brandeis,et al.  Classifying adolescent attention-deficit/hyperactivity disorder (ADHD) based on functional and structural imaging , 2015, European Child & Adolescent Psychiatry.

[378]  Dinggang Shen,et al.  COMPARE: Classification of Morphological Patterns Using Adaptive Regional Elements , 2007, IEEE Transactions on Medical Imaging.

[379]  Dinesh Bhugra,et al.  The Global Prevalence of Schizophrenia , 2005, PLoS medicine.

[380]  Harald Hampel,et al.  Age transformation of combined hippocampus and amygdala volume improves diagnostic accuracy in Alzheimer's disease , 2002, Journal of the Neurological Sciences.

[381]  Daoqiang Zhang,et al.  Domain Transfer Learning for MCI Conversion Prediction , 2015, IEEE Transactions on Biomedical Engineering.

[382]  Richard S. J. Frackowiak,et al.  How early can we predict Alzheimer's disease using computational anatomy? , 2013, Neurobiology of Aging.

[383]  J. Baio Prevalence of autism spectrum disorders--Autism and Developmental Disabilities Monitoring Network, 14 sites, United States, 2008. , 2012, Morbidity and mortality weekly report. Surveillance summaries.

[384]  I Pete,et al.  [Investigating the predictive value of RMI and ROMA indices in patients with ovarian tumors of uncertain dignity]. , 2016, Magyar onkologia.

[385]  S. Lawrie,et al.  Towards the identification of imaging biomarkers in schizophrenia, using multivariate pattern classification at a single-subject level , 2013, NeuroImage: Clinical.

[386]  A. Simmons,et al.  Different multivariate techniques for automated classification of MRI data in Alzheimer’s disease and mild cognitive impairment , 2013, Psychiatry Research: Neuroimaging.

[387]  James D. Malley,et al.  Using Multivariate Machine Learning Methods and Structural MRI to Classify Childhood Onset Schizophrenia and Healthy Controls , 2012, Front. Psychiatry.

[388]  E. Amaro,et al.  Use of SVM methods with surface-based cortical and volumetric subcortical measurements to detect Alzheimer's disease. , 2010, Journal of Alzheimer's disease : JAD.

[389]  J. Morris,et al.  The diagnosis of dementia due to Alzheimer’s disease: Recommendations from the National Institute on Aging-Alzheimer’s Association workgroups on diagnostic guidelines for Alzheimer's disease , 2011, Alzheimer's & Dementia.

[390]  Tom M. Mitchell,et al.  Identifying Autism from Neural Representations of Social Interactions: Neurocognitive Markers of Autism , 2014, PloS one.

[391]  V. Calhoun,et al.  Functional network connectivity during rest and task conditions: A comparative study , 2013, Human brain mapping.

[392]  Vikas Singh,et al.  Predictive markers for AD in a multi-modality framework: An analysis of MCI progression in the ADNI population , 2011, NeuroImage.

[393]  Timothy O. Laumann,et al.  Methods to detect, characterize, and remove motion artifact in resting state fMRI , 2014, NeuroImage.

[394]  Alessandra Retico,et al.  Female children with autism spectrum disorder: An insight from mass-univariate and pattern classification analyses , 2012, NeuroImage.

[395]  Daoqiang Zhang,et al.  Integration of Network Topological and Connectivity Properties for Neuroimaging Classification , 2014, IEEE Transactions on Biomedical Engineering.

[396]  Konstantine K. Zakzanis,et al.  Neurocognitive Deficit in Schizophrenia: A Quantitative Review of the Evidence , 1998 .

[397]  Vince D. Calhoun,et al.  Feature-Based Fusion of Medical Imaging Data , 2009, IEEE Transactions on Information Technology in Biomedicine.

[398]  E. Takahashi,et al.  Multivariate analyses applied to fetal, neonatal and pediatric MRI of neurodevelopmental disorders , 2015, NeuroImage: Clinical.

[399]  D. Rueckert,et al.  Multi-Method Analysis of MRI Images in Early Diagnostics of Alzheimer's Disease , 2011, PloS one.

[400]  Leo Grady,et al.  Network, Anatomical, and Non-Imaging Measures for the Prediction of ADHD Diagnosis in Individual Subjects , 2012, Front. Syst. Neurosci..