학술논문

Circular-SWAT for deep learning based diagnostic classification of Alzheimer's disease: application to metabolome data
Document Type
article
Author
Jo, TaehoKim, JunpyoBice, PaulaHuynh, KevinWang, TingtingArnold, MatthiasMeikle, Peter JGiles, CoreyKaddurah-Daouk, RimaSaykin, Andrew JNho, KwangsikKueider-Paisley, AlexandraDoraiswamy, P MuraliBlach, ColetteMoseley, ArthurThompson, WillSt John-Williams, LisaMahmoudiandehkhordi, SiamakTenenbaum, JessicaWelsh-Balmer, KathleenPlassman, BrendaRisacher, Shannon LKastenmüller, GabiHan, XianlinBaillie, RebeccaKnight, RobDorrestein, PieterBrewer, JamesMayer, EmeranLabus, JenniferBaldi, PierreGupta, ArpanaFiehn, OliverBarupal, DineshMeikle, PeterMazmanian, SarkisRader, DanKling, MitchelShaw, LeslieTrojanowski, Johnvan Duijin, CorneliaNevado-Holgado, AlejoBennett, DavidKrishnan, RangaKeshavarzian, AliVogt, RobinIkram, ArfanHankemeier, ThomasThiele, InesPrice, NathanFunk, CoryBaloni, PriyankaJia, WeiWishart, DavidBrinton, RobertaChang, RuiFarrer, LindsayAu, RhodaQiu, WendyWürtz, PeterKoal, ThereseMangravite, LaraKrumsiek, JanSuhre, KarstenNewman, JohnMoreno, HermanForoud, TataniaSacks, FrankJansson, JanetWeiner, Michael WAisen, PaulPetersen, RonaldJack, Clifford RJagust, WilliamTrojanowki, John QToga, Arthur WBeckett, LaurelGreen, Robert CMorris, John CPerrin, Richard JShaw, Leslie MKhachaturian, ZavenCarrillo, MariaPotter, WilliamBarnes, LisaBernard, MarieGonzalez, HectorHo, CaroleHsiao, John KJackson, JonathanMasliah, EliezerMasterman, DonnaOkonkwo, OziomaPerrin, RichardRyan, Laurie
Source
Subject
Medical Biochemistry and Metabolomics
Biomedical and Clinical Sciences
Neurosciences
Dementia
Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD)
Acquired Cognitive Impairment
Neurodegenerative
Brain Disorders
Alzheimer's Disease
Aging
Neurological
Humans
Aged
Magnetic Resonance Imaging
Deep Learning
Alzheimer Disease
Neuroimaging
Metabolome
Lipids
Cognitive Dysfunction
Alzheimer's Disease Metabolomics Consortium
Alzheimer's Disease Neuroimaging Initiative
Alzheimer's disease
Deep learning
Lipidomics
Machine learning
Metabolomics
Clinical Sciences
Public Health and Health Services
Clinical sciences
Epidemiology
Language
Abstract
BackgroundDeep learning has shown potential in various scientific domains but faces challenges when applied to complex, high-dimensional multi-omics data. Alzheimer's Disease (AD) is a neurodegenerative disorder that lacks targeted therapeutic options. This study introduces the Circular-Sliding Window Association Test (c-SWAT) to improve the classification accuracy in predicting AD using serum-based metabolomics data, specifically lipidomics.MethodsThe c-SWAT methodology builds upon the existing Sliding Window Association Test (SWAT) and utilizes a three-step approach: feature correlation analysis, feature selection, and classification. Data from 997 participants from the Alzheimer's Disease Neuroimaging Initiative (ADNI) served as the basis for model training and validation. Feature correlations were analyzed using Weighted Gene Co-expression Network Analysis (WGCNA), and Convolutional Neural Networks (CNN) were employed for feature selection. Random Forest was used for the final classification.FindingsThe application of c-SWAT resulted in a classification accuracy of up to 80.8% and an AUC of 0.808 for distinguishing AD from cognitively normal older adults. This marks a 9.4% improvement in accuracy and a 0.169 increase in AUC compared to methods without c-SWAT. These results were statistically significant, with a p-value of 1.04 × 10ˆ-4. The approach also identified key lipids associated with AD, such as Cer(d16:1/22:0) and PI(37:6).InterpretationOur results indicate that c-SWAT is effective in improving classification accuracy and in identifying potential lipid biomarkers for AD. These identified lipids offer new avenues for understanding AD and warrant further investigation.FundingThe specific funding of this article is provided in the acknowledgements section.