Opin vísindi

Comparative study of machine learning methods for modeling associations between risk factors and future dementia cases

Comparative study of machine learning methods for modeling associations between risk factors and future dementia cases


Titill: Comparative study of machine learning methods for modeling associations between risk factors and future dementia cases
Höfundur: Valsdóttir, Vaka
Jónsdóttir, María Kristín
Magnúsdóttir, Brynja Björk
Chang, Milan
Hu, Yi Han
Gudnason, Vilmundur   orcid.org/0000-0001-5696-0084
Launer, Lenore J.
Stefánsson, Hlynur   orcid.org/0000-0001-8689-8074
Útgáfa: 2024-02
Tungumál: Enska
Umfang: 14
Háskóli/Stofnun: Landspitali - The National University Hospital of Iceland
Deild: Department of Psychology
Faculty of Medicine
Department of Engineering
Birtist í: GeroScience; 46(1)
ISSN: 2509-2715
DOI: 10.1007/s11357-023-01040-9
Efnisorð: Sálfræði; Öldrunarlæknisfræði; AGES-Reykjavik Study; Cognitive aging; Cognitive risk factors; Machine learning; Model performance; Random forest; Humans; Risk Factors; Logistic Models; Cognition; Dementia/diagnosis; Machine Learning; Aged; Aging; Veterinary (miscellaneous); Complementary and Alternative Medicine; Geriatrics and Gerontology; Cardiology and Cardiovascular Medicine
URI: https://hdl.handle.net/20.500.11815/4804

Skoða fulla færslu

Tilvitnun:

Valsdóttir , V , Jónsdóttir , M K , Magnúsdóttir , B B , Chang , M , Hu , Y H , Gudnason , V , Launer , L J & Stefánsson , H 2024 , ' Comparative study of machine learning methods for modeling associations between risk factors and future dementia cases ' , GeroScience , vol. 46 , no. 1 , pp. 737-750 . https://doi.org/10.1007/s11357-023-01040-9

Útdráttur:

A substantial portion of dementia risk can be attributed to modifiable risk factors that can be affected by lifestyle changes. Identifying the contributors to dementia risk could prove valuable. Recently, machine learning methods have been increasingly applied to healthcare data. Several studies have attempted to predict dementia progression by using such techniques. This study aimed to compare the performance of different machine-learning methods in modeling associations between known cognitive risk factors and future dementia cases. A subset of the AGES-Reykjavik Study dataset was analyzed using three machine-learning methods: logistic regression, random forest, and neural networks. Data were collected twice, approximately five years apart. The dataset included information from 1,491 older adults who underwent a cognitive screening process and were considered to have healthy cognition at baseline. Cognitive risk factors included in the models were based on demographics, MRI data, and other health-related data. At follow-up, participants were re-evaluated for dementia using the same cognitive screening process. Various performance metrics for all three machine learning algorithms were assessed. The study results indicate that a random forest algorithm performed better than neural networks and logistic regression in predicting the association between cognitive risk factors and dementia. Compared to more traditional statistical analyses, machine-learning methods have the potential to provide more accurate predictions about which individuals are more likely to develop dementia than others.

Athugasemdir:

Publisher Copyright: © 2023, The Author(s), under exclusive licence to American Aging Association.

Skrár

Þetta verk birtist í eftirfarandi safni/söfnum: