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Real-world prediction of preclinical Alzheimer's disease with a deep generative modelopen access

Authors
Hwang, UiwonKim, Sung-WooJung, DahuinKim, SeungWookLee, HyejooSeo, Sang WonSeong, Joon-KyungYoon, SungrohAlzheimer’s Disease Neuroimaging Initiative
Issue Date
Oct-2023
Publisher
ELSEVIER
Keywords
Deep generative models; Preclinical Alzheimer's disease; Real-world classification; Explainable AI
Citation
ARTIFICIAL INTELLIGENCE IN MEDICINE, v.144
Journal Title
ARTIFICIAL INTELLIGENCE IN MEDICINE
Volume
144
URI
https://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/49480
DOI
10.1016/j.artmed.2023.102654
ISSN
0933-3657
1873-2860
Abstract
Amyloid positivity is an early indicator of Alzheimer's disease and is necessary to determine the disease. In this study, a deep generative model is utilized to predict the amyloid positivity of cognitively normal individuals using proxy measures, such as structural MRI scans, demographic variables, and cognitive scores, instead of invasive direct measurements. Through its remarkable efficacy in handling imperfect datasets caused by missing data or labels, and imbalanced classes, the model outperforms previous studies and widely used machine learning approaches with an AUROC of 0.8609. Furthermore, this study illuminates the model's adaptability to diverse clinical scenarios, even when feature sets or diagnostic criteria differ from the training data. We identify the brain regions and variables that contribute most to classification, including the lateral occipital lobes, posterior temporal lobe, and APOE epsilon 4 allele. Taking advantage of deep generative models, our approach can not only provide inexpensive, non-invasive, and accurate diagnostics for preclinical Alzheimer's disease, but also meet real-world requirements for clinical translation of a deep learning model, including transferability and interpretability.
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