Literature DB >> 30682584

Training recurrent neural networks robust to incomplete data: Application to Alzheimer's disease progression modeling.

Mostafa Mehdipour Ghazi1, Mads Nielsen2, Akshay Pai2, M Jorge Cardoso3, Marc Modat3, Sébastien Ourselin3, Lauge Sørensen2.   

Abstract

Disease progression modeling (DPM) using longitudinal data is a challenging machine learning task. Existing DPM algorithms neglect temporal dependencies among measurements, make parametric assumptions about biomarker trajectories, do not model multiple biomarkers jointly, and need an alignment of subjects' trajectories. In this paper, recurrent neural networks (RNNs) are utilized to address these issues. However, in many cases, longitudinal cohorts contain incomplete data, which hinders the application of standard RNNs and requires a pre-processing step such as imputation of the missing values. Instead, we propose a generalized training rule for the most widely used RNN architecture, long short-term memory (LSTM) networks, that can handle both missing predictor and target values. The proposed LSTM algorithm is applied to model the progression of Alzheimer's disease (AD) using six volumetric magnetic resonance imaging (MRI) biomarkers, i.e., volumes of ventricles, hippocampus, whole brain, fusiform, middle temporal gyrus, and entorhinal cortex, and it is compared to standard LSTM networks with data imputation and a parametric, regression-based DPM method. The results show that the proposed algorithm achieves a significantly lower mean absolute error (MAE) than the alternatives with p < 0.05 using Wilcoxon signed rank test in predicting values of almost all of the MRI biomarkers. Moreover, a linear discriminant analysis (LDA) classifier applied to the predicted biomarker values produces a significantly larger area under the receiver operating characteristic curve (AUC) of 0.90 vs. at most 0.84 with p < 0.001 using McNemar's test for clinical diagnosis of AD. Inspection of MAE curves as a function of the amount of missing data reveals that the proposed LSTM algorithm achieves the best performance up until more than 74% missing values. Finally, it is illustrated how the method can successfully be applied to data with varying time intervals. This paper shows that built-in handling of missing values in training an LSTM network benefits the application of RNNs in neurodegenerative disease progression modeling in longitudinal cohorts.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Alzheimer’s disease; Disease progression modeling; Linear discriminant analysis; Long short-term memory; Magnetic resonance imaging; Recurrent neural networks

Mesh:

Substances:

Year:  2019        PMID: 30682584     DOI: 10.1016/j.media.2019.01.004

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  8 in total

1.  Disentangling Normal Aging From Severity of Disease via Weak Supervision on Longitudinal MRI.

Authors:  Jiahong Ouyang; Qingyu Zhao; Ehsan Adeli; Greg Zaharchuk; Kilian M Pohl
Journal:  IEEE Trans Med Imaging       Date:  2022-09-30       Impact factor: 11.037

2.  Ascertaining Design Requirements for Postoperative Care Transition Interventions.

Authors:  Joanna Abraham; Christopher R King; Alicia Meng
Journal:  Appl Clin Inform       Date:  2021-02-24       Impact factor: 2.342

3.  Longitudinal self-supervised learning.

Authors:  Qingyu Zhao; Zixuan Liu; Ehsan Adeli; Kilian M Pohl
Journal:  Med Image Anal       Date:  2021-04-04       Impact factor: 13.828

4.  Robust parametric modeling of Alzheimer's disease progression.

Authors:  Mostafa Mehdipour Ghazi; Mads Nielsen; Akshay Pai; Marc Modat; M Jorge Cardoso; Sébastien Ourselin; Lauge Sørensen
Journal:  Neuroimage       Date:  2020-10-16       Impact factor: 7.400

5.  Longitudinal Pooling & Consistency Regularization to Model Disease Progression From MRIs.

Authors:  Jiahong Ouyang; Qingyu Zhao; Edith V Sullivan; Adolf Pfefferbaum; Susan F Tapert; Ehsan Adeli; Kilian M Pohl
Journal:  IEEE J Biomed Health Inform       Date:  2021-06-11       Impact factor: 7.021

Review 6.  Imaging biomarkers in neurodegeneration: current and future practices.

Authors:  Peter N E Young; Mar Estarellas; Emma Coomans; Meera Srikrishna; Helen Beaumont; Anne Maass; Ashwin V Venkataraman; Rikki Lissaman; Daniel Jiménez; Matthew J Betts; Eimear McGlinchey; David Berron; Antoinette O'Connor; Nick C Fox; Joana B Pereira; William Jagust; Stephen F Carter; Ross W Paterson; Michael Schöll
Journal:  Alzheimers Res Ther       Date:  2020-04-27       Impact factor: 6.982

7.  Quantifying Neurodegenerative Progression With DeepSymNet, an End-to-End Data-Driven Approach.

Authors:  Danilo Pena; Arko Barman; Jessika Suescun; Xiaoqian Jiang; Mya C Schiess; Luca Giancardo
Journal:  Front Neurosci       Date:  2019-10-04       Impact factor: 4.677

8.  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

  8 in total

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