Literature DB >> 32763427

Predicting Alzheimer's disease progression using deep recurrent neural networks.

Minh Nguyen1, Tong He1, Lijun An1, Daniel C Alexander2, Jiashi Feng3, B T Thomas Yeo4.   

Abstract

Early identification of individuals at risk of developing Alzheimer's disease (AD) dementia is important for developing disease-modifying therapies. In this study, given multimodal AD markers and clinical diagnosis of an individual from one or more timepoints, we seek to predict the clinical diagnosis, cognition and ventricular volume of the individual for every month (indefinitely) into the future. We proposed and applied a minimal recurrent neural network (minimalRNN) model to data from The Alzheimer's Disease Prediction Of Longitudinal Evolution (TADPOLE) challenge, comprising longitudinal data of 1677 participants (Marinescu et al., 2018) from the Alzheimer's Disease Neuroimaging Initiative (ADNI). We compared the performance of the minimalRNN model and four baseline algorithms up to 6 years into the future. Most previous work on predicting AD progression ignore the issue of missing data, which is a prevalent issue in longitudinal data. Here, we explored three different strategies to handle missing data. Two of the strategies treated the missing data as a "preprocessing" issue, by imputing the missing data using the previous timepoint ("forward filling") or linear interpolation ("linear filling). The third strategy utilized the minimalRNN model itself to fill in the missing data both during training and testing ("model filling"). Our analyses suggest that the minimalRNN with "model filling" compared favorably with baseline algorithms, including support vector machine/regression, linear state space (LSS) model, and long short-term memory (LSTM) model. Importantly, although the training procedure utilized longitudinal data, we found that the trained minimalRNN model exhibited similar performance, when using only 1 input timepoint or 4 input timepoints, suggesting that our approach might work well with just cross-sectional data. An earlier version of our approach was ranked 5th (out of 53 entries) in the TADPOLE challenge in 2019. The current approach is ranked 2nd out of 63 entries as of June 3rd, 2020.
Copyright © 2020. Published by Elsevier Inc.

Entities:  

Year:  2020        PMID: 32763427     DOI: 10.1016/j.neuroimage.2020.117203

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  7 in total

Review 1.  Recent Advances in Imaging of Preclinical, Sporadic, and Autosomal Dominant Alzheimer's Disease.

Authors:  Rachel F Buckley
Journal:  Neurotherapeutics       Date:  2021-03-29       Impact factor: 7.620

2.  Interpretable temporal graph neural network for prognostic prediction of Alzheimer's disease using longitudinal neuroimaging data.

Authors:  Mansu Kim; Jaesik Kim; Jeffrey Qu; Heng Huang; Qi Long; Kyung-Ah Sohn; Dokyoon Kim; Li Shen
Journal:  Proceedings (IEEE Int Conf Bioinformatics Biomed)       Date:  2021-12

3.  Dementia-related user-based collaborative filtering for imputing missing data and generating a reliability scale on clinical test scores.

Authors:  Savas Okyay; Nihat Adar
Journal:  PeerJ       Date:  2022-05-26       Impact factor: 3.061

4.  EEG-Based Alzheimer's Disease Recognition Using Robust-PCA and LSTM Recurrent Neural Network.

Authors:  Michele Alessandrini; Giorgio Biagetti; Paolo Crippa; Laura Falaschetti; Simona Luzzi; Claudio Turchetti
Journal:  Sensors (Basel)       Date:  2022-05-12       Impact factor: 3.847

5.  Improved Prediction of Cognitive Outcomes via Globally Aligned Imaging Biomarker Enrichments Over Progressions.

Authors:  Lyujian Lu; Saad Elbeleidy; Lauren Baker; Hua Wang; Li Shen; Huang Heng
Journal:  IEEE Trans Biomed Eng       Date:  2021-10-19       Impact factor: 4.538

6.  DeepAtrophy: Teaching a neural network to detect progressive changes in longitudinal MRI of the hippocampal region in Alzheimer's disease.

Authors:  Mengjin Dong; Long Xie; Sandhitsu R Das; Jiancong Wang; Laura E M Wisse; Robin deFlores; David A Wolk; Paul A Yushkevich
Journal:  Neuroimage       Date:  2021-08-24       Impact factor: 6.556

7.  Explainable AI toward understanding the performance of the top three TADPOLE Challenge methods in the forecast of Alzheimer's disease diagnosis.

Authors:  Monica Hernandez; Ubaldo Ramon-Julvez; Francisco Ferraz
Journal:  PLoS One       Date:  2022-05-06       Impact factor: 3.752

  7 in total

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