Predicting Alzheimer’s disease progression using multi-modal deep learning approach

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作者
Garam Lee
Kwangsik Nho
Byungkon Kang
Kyung-Ah Sohn
Dokyoon Kim
机构
[1] Ajou University,Department of Software and Computer Engineering
[2] Biomedical & Translational Informatics Institute,Center for Neuroimaging, Department of Radiology and Imaging Sciences
[3] Geisinger,The Huck Institute of the Life Sciences
[4] Center for Computational Biology and Bioinformatics,undefined
[5] Indiana University School of Medicine,undefined
[6] Indiana University School of Medicine,undefined
[7] Pennsylvania State University,undefined
[8] UC San Francisco,undefined
[9] UC San Diego,undefined
[10] Mayo Clinic,undefined
[11] UC Berkeley,undefined
[12] Berkeley,undefined
[13] University of Pennsylvania,undefined
[14] USC,undefined
[15] UC Davis,undefined
[16] Brigham and Women’s Hospital/Harvard Medical School,undefined
[17] Indiana University,undefined
[18] Washington University St. Louis,undefined
[19] Prevent Alzheimer’s Disease 2020,undefined
[20] Siemens,undefined
[21] Alzheimer’s Association,undefined
[22] University of Pittsburg,undefined
[23] Cornell University,undefined
[24] Albert Einstein College of Medicine of Yeshiva University,undefined
[25] AD Drug Discovery Foundation,undefined
[26] Acumen Pharmaceuticals,undefined
[27] Northwestern University,undefined
[28] National Institute of Mental Health,undefined
[29] Brown University,undefined
[30] University of Washington,undefined
[31] University of London,undefined
[32] UCLA,undefined
[33] University of Michigan,undefined
[34] University of Utah,undefined
[35] Banner Alzheimer’s Institute,undefined
[36] UUC Irvine,undefined
[37] Johns Hopkins University,undefined
[38] Richard Frank Consulting,undefined
[39] National Institute on Aging,undefined
[40] Oregon Health and Science University,undefined
[41] University of Alabama,undefined
[42] Mount Sinai School of Medicine,undefined
[43] Rush University Medical Center,undefined
[44] Baylor College of Medicine,undefined
[45] Wien Center,undefined
[46] Columbia University Medical Center,undefined
[47] New York University,undefined
[48] University of Texas Southwestern Medical School,undefined
[49] Duke University Medical Center,undefined
[50] Emory University,undefined
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摘要
Alzheimer’s disease (AD) is a progressive neurodegenerative condition marked by a decline in cognitive functions with no validated disease modifying treatment. It is critical for timely treatment to detect AD in its earlier stage before clinical manifestation. Mild cognitive impairment (MCI) is an intermediate stage between cognitively normal older adults and AD. To predict conversion from MCI to probable AD, we applied a deep learning approach, multimodal recurrent neural network. We developed an integrative framework that combines not only cross-sectional neuroimaging biomarkers at baseline but also longitudinal cerebrospinal fluid (CSF) and cognitive performance biomarkers obtained from the Alzheimer’s Disease Neuroimaging Initiative cohort (ADNI). The proposed framework integrated longitudinal multi-domain data. Our results showed that 1) our prediction model for MCI conversion to AD yielded up to 75% accuracy (area under the curve (AUC) = 0.83) when using only single modality of data separately; and 2) our prediction model achieved the best performance with 81% accuracy (AUC = 0.86) when incorporating longitudinal multi-domain data. A multi-modal deep learning approach has potential to identify persons at risk of developing AD who might benefit most from a clinical trial or as a stratification approach within clinical trials.
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