Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls
暂无分享,去创建一个
Vince D. Calhoun | Sergey M. Plis | Jing Sui | Mohammad Arbabshirani | V. Calhoun | J. Sui | S. Plis | M. Arbabshirani | Mohammad R Arbabshirani
[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..