A unified framework for personalized regions selection and functional relation modeling for early MCI identification

[1]  Antonio J. Plaza,et al.  Image Segmentation Using Deep Learning: A Survey , 2020, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[2]  V. Calhoun,et al.  NeuroMark: An automated and adaptive ICA based pipeline to identify reproducible fMRI markers of brain disorders , 2020, NeuroImage: Clinical.

[3]  Juntang Zhuang,et al.  Jointly Discriminative and Generative Recurrent Neural Networks for Learning from fMRI , 2019, MLMI@MICCAI.

[4]  Danai Koutra,et al.  GroupINN: Grouping-based Interpretable Neural Network for Classification of Limited, Noisy Brain Data , 2019, KDD.

[5]  A. Dale,et al.  Resting State Abnormalities of the Default Mode Network in Mild Cognitive Impairment: A Systematic Review and Meta-Analysis. , 2019, Journal of Alzheimer's disease : JAD.

[6]  Mohamed R. Amer,et al.  Understanding Attention and Generalization in Graph Neural Networks , 2019, NeurIPS.

[7]  Carrie R. McDonald,et al.  Early versus late MCI: Improved MCI staging using a neuropsychological approach , 2019, Alzheimer's & Dementia.

[8]  U. Feige,et al.  Spectral Graph Theory , 2015 .

[9]  Jure Leskovec,et al.  How Powerful are Graph Neural Networks? , 2018, ICLR.

[10]  Pietro Liò,et al.  Towards Sparse Hierarchical Graph Classifiers , 2018, ArXiv.

[11]  Vince D. Calhoun,et al.  Classification and Prediction of Brain Disorders Using Functional Connectivity: Promising but Challenging , 2018, Front. Neurosci..

[12]  Ben Glocker,et al.  Disease prediction using graph convolutional networks: Application to Autism Spectrum Disorder and Alzheimer's disease , 2018, Medical Image Anal..

[13]  Ben Glocker,et al.  Metric learning with spectral graph convolutions on brain connectivity networks , 2018, NeuroImage.

[14]  Yi Zhang,et al.  Intrinsic frequency specific brain networks for identification of MCI individuals using resting-state fMRI , 2018, Neuroscience Letters.

[15]  Ting Liu,et al.  Recent advances in convolutional neural networks , 2015, Pattern Recognit..

[16]  J. Medaglia Graph Theoretic Analysis of Resting State Functional MR Imaging. , 2017, Neuroimaging clinics of North America.

[17]  Anil A. Bharath,et al.  Deep Reinforcement Learning: A Brief Survey , 2017, IEEE Signal Processing Magazine.

[18]  Christoph Meinel,et al.  Deep Learning for Medical Image Analysis , 2018, Journal of Pathology Informatics.

[19]  Christos Davatzikos,et al.  A review on neuroimaging-based classification studies and associated feature extraction methods for Alzheimer's disease and its prodromal stages , 2017, NeuroImage.

[20]  Dinggang Shen,et al.  Extraction of dynamic functional connectivity from brain grey matter and white matter for MCI classification , 2017, Human brain mapping.

[21]  Heung-Il Suk,et al.  Deep Learning in Medical Image Analysis. , 2017, Annual review of biomedical engineering.

[22]  Lukasz Kaiser,et al.  Attention is All you Need , 2017, NIPS.

[23]  Pierre Bellec,et al.  Resting-state network dysfunction in Alzheimer's disease: A systematic review and meta-analysis , 2017, Alzheimer's & dementia.

[24]  Abbas Babajani-Feremi,et al.  Classification of patients with MCI and AD from healthy controls using directed graph measures of resting-state fMRI , 2017, Behavioural Brain Research.

[25]  Alexander J. Smola,et al.  Deep Sets , 2017, 1703.06114.

[26]  Ghassan Hamarneh,et al.  BrainNetCNN: Convolutional neural networks for brain networks; towards predicting neurodevelopment , 2017, NeuroImage.

[27]  M. Walter,et al.  Multicenter stability of resting state fMRI in the detection of Alzheimer's disease and amnestic MCI , 2017, NeuroImage: Clinical.

[28]  Vince D. Calhoun,et al.  Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls , 2017, NeuroImage.

[29]  Max Welling,et al.  Semi-Supervised Classification with Graph Convolutional Networks , 2016, ICLR.

[30]  Ayman El-Baz,et al.  Alzheimer's Disease Diagnostics by a Deeply Supervised Adaptable 3D Convolutional Network , 2016, ArXiv.

[31]  Yufeng Zang,et al.  DPABI: Data Processing & Analysis for (Resting-State) Brain Imaging , 2016, Neuroinformatics.

[32]  Xavier Bresson,et al.  Convolutional Neural Networks on Graphs with Fast Localized Spectral Filtering , 2016, NIPS.

[33]  Timothy Dozat,et al.  Incorporating Nesterov Momentum into Adam , 2016 .

[34]  Sergey Ioffe,et al.  Rethinking the Inception Architecture for Computer Vision , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[35]  Y. Jeong,et al.  Influence of ROI selection on resting state functional connectivity: an individualized approach for resting state fMRI analysis , 2015, Front. Neurosci..

[36]  Charles DeCarli,et al.  Biological heterogeneity in ADNI amnestic mild cognitive impairment , 2014, Alzheimer's & Dementia.

[37]  I. Hickie,et al.  Neuroimage: Clinical Deficits in Episodic Memory Retrieval Reveal Impaired Default Mode Network Connectivity in Amnestic Mild Cognitive Impairment , 2022 .

[38]  Yong He,et al.  Differentially disrupted functional connectivity of the subregions of the inferior parietal lobule in Alzheimer’s disease , 2013, Brain Structure and Function.

[39]  Li Tong,et al.  Principal Feature Analysis: A Multivariate Feature Selection Method for fMRI Data , 2013, Comput. Math. Methods Medicine.

[40]  Yong He,et al.  BrainNet Viewer: A Network Visualization Tool for Human Brain Connectomics , 2013, PloS one.

[41]  D. Salmon,et al.  Are Empirically-Derived Subtypes of Mild Cognitive Impairment Consistent with Conventional Subtypes? , 2013, Journal of the International Neuropsychological Society.

[42]  M. Fox,et al.  Individual Variability in Functional Connectivity Architecture of the Human Brain , 2013, Neuron.

[43]  Daoqiang Zhang,et al.  Group-constrained sparse fMRI connectivity modeling for mild cognitive impairment identification , 2013, Brain Structure and Function.

[44]  Zhijun Zhang,et al.  Abnormal insula functional network is associated with episodic memory decline in amnestic mild cognitive impairment , 2012, NeuroImage.

[45]  V. Calhoun,et al.  Multisubject Independent Component Analysis of fMRI: A Decade of Intrinsic Networks, Default Mode, and Neurodiagnostic Discovery , 2012, IEEE Reviews in Biomedical Engineering.

[46]  Harald Hampel,et al.  Diagnostic power of default mode network resting state fMRI in the detection of Alzheimer's disease , 2012, Neurobiology of Aging.

[47]  Dietmar Cordes,et al.  Aberrant default mode network in subjects with amnestic mild cognitive impairment using resting-state functional MRI. , 2012, Magnetic resonance imaging.

[48]  Q. Xi,et al.  Spontaneous brain activity in mild cognitive impairment revealed by amplitude of low-frequency fluctuation analysis: a resting-state fMRI study , 2012, La radiologia medica.

[49]  Marisa O. Hollinshead,et al.  The organization of the human cerebral cortex estimated by intrinsic functional connectivity. , 2011, Journal of neurophysiology.

[50]  Rex E. Jung,et al.  A Baseline for the Multivariate Comparison of Resting-State Networks , 2011, Front. Syst. Neurosci..

[51]  Peter N. C. Mohr,et al.  Variability in Brain Activity as an Individual Difference Measure in Neuroscience? , 2010, The Journal of Neuroscience.

[52]  Yong He,et al.  Graph-based network analysis of resting-state functional MRI. , 2010 .

[53]  M. Bondi,et al.  Heterogeneity in mild cognitive impairment: Differences in neuropsychological profile and associated white matter lesion pathology , 2009, Journal of the International Neuropsychological Society.

[54]  Bradford C. Dickerson,et al.  Functional abnormalities of the medial temporal lobe memory system in mild cognitive impairment and Alzheimer's disease: Insights from functional MRI studies , 2008, Neuropsychologia.

[55]  Geoffrey E. Hinton,et al.  Visualizing Data using t-SNE , 2008 .

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

[57]  Richard S. Sutton,et al.  Reinforcement Learning: An Introduction , 1998, IEEE Trans. Neural Networks.

[58]  Yishay Mansour,et al.  Policy Gradient Methods for Reinforcement Learning with Function Approximation , 1999, NIPS.