Early Prediction Of Alzheimer’s Disease Dementia Based On Baseline Hippocampal MRI and 1-Year Follow-Up Cognitive Measures Using Deep Recurrent Neural Networks

Multi-modal biological, imaging, and neuropsychological markers have demonstrated promising performance for distinguishing Alzheimer’s disease (AD) patients from cognitively normal elders. However, it remains difficult to early predict when and which mild cognitive impairment (MCI) individuals will convert to AD dementia. Informed by pattern classification studies which have demonstrated that pattern classifiers built on longitudinal data could achieve better classification performance than those built on cross-sectional data, we develop a deep learning model based on recurrent neural networks (RNNs) to learn informative representation and temporal dynamics of longitudinal cognitive measures of individual subjects and combine them with baseline hippocampal MRI for building a prognostic model of AD dementia progression. Experimental results on a large cohort of MCI subjects have demonstrated that the deep learning model could learn informative measures from longitudinal data for characterizing the progression of MCI subjects to AD dementia, and the prognostic model could early predict AD progression with high accuracy.

[1]  Yong Fan,et al.  Brain Decoding from Functional MRI Using Long Short-Term Memory Recurrent Neural Networks , 2018, MICCAI.

[2]  C. Jack,et al.  NIA-AA Research Framework: Toward a biological definition of Alzheimer’s disease , 2018, Alzheimer's & Dementia.

[3]  D.,et al.  Regression Models and Life-Tables , 2022 .

[4]  Kan Li,et al.  A prognostic model of Alzheimer's disease relying on multiple longitudinal measures and time-to-event data , 2018, Alzheimer's & Dementia.

[5]  Dinggang Shen,et al.  Conversion and time‐to‐conversion predictions of mild cognitive impairment using low‐rank affinity pursuit denoising and matrix completion , 2018, Medical Image Anal..

[6]  C. Jack,et al.  Comparison of different MRI brain atrophy rate measures with clinical disease progression in AD , 2004, Neurology.

[7]  S. Resnick,et al.  Detection of prodromal Alzheimer's disease via pattern classification of magnetic resonance imaging , 2008, Neurobiology of Aging.

[8]  et al.,et al.  Spatial patterns of brain atrophy in MCI patients, identified via high-dimensional pattern classification, predict subsequent cognitive decline , 2008, NeuroImage.

[9]  Susan M. Resnick,et al.  Trajectories of Alzheimer disease-related cognitive measures in a longitudinal sample , 2014, Alzheimer's & Dementia.

[10]  Nitish Srivastava,et al.  Unsupervised Learning of Video Representations using LSTMs , 2015, ICML.

[11]  Andrew J. Saykin,et al.  Longitudinal measurement and hierarchical classification framework for the prediction of Alzheimer’s disease , 2017, Scientific Reports.

[12]  Jürgen Schmidhuber,et al.  Long Short-Term Memory , 1997, Neural Computation.

[13]  Christos Davatzikos,et al.  Baseline and longitudinal patterns of brain atrophy in MCI patients, and their use in prediction of short-term conversion to AD: Results from ADNI , 2009, NeuroImage.

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

[15]  Yong Fan,et al.  Identification of Temporal Transition of Functional States Using Recurrent Neural Networks from Functional MRI , 2018, MICCAI.

[16]  Mohamad Habes,et al.  A DEEP LEARNING PROGNOSTIC MODEL FOR EARLY PREDICTION OF ALZHEIMER’S DISEASE BASED ON HIPPOCAMPAL MRI DATA , 2018, Alzheimer's & Dementia.

[17]  Peter P. Zandi,et al.  Apolipoprotein E ϵ4 Count Affects Age at Onset of Alzheimer Disease,but Not Lifetime Susceptibility: The Cache County Study , 2004 .

[18]  S. Resnick,et al.  Longitudinal progression of Alzheimer's-like patterns of atrophy in normal older adults: the SPARE-AD index. , 2009, Brain : a journal of neurology.

[19]  Magda Tsolaki,et al.  Application of a MRI based index to longitudinal atrophy change in Alzheimer disease, mild cognitive impairment and healthy older individuals in the AddNeuroMed cohort , 2014, Front. Aging Neurosci..

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

[21]  Sabina Sonia Tangaro,et al.  Integrating longitudinal information in hippocampal volume measurements for the early detection of Alzheimer's disease , 2016, NeuroImage.

[22]  Hongtu Zhu,et al.  Predicting Alzheimer's Disease Using Combined Imaging-Whole Genome SNP Data. , 2015, Journal of Alzheimer's disease : JAD.