Improving clinical efficiency in screening for cognitive impairment due to Alzheimer's

Author:

Ren Yueqi12ORCID,Shahbaba Babak13,Stark Craig E. L.14

Affiliation:

1. Mathematical, Computational and Systems Biology Graduate Program Center for Complex Biological Systems University of California Irvine Irvine California USA

2. Medical Scientist Training Program, School of Medicine University of California Irvine Irvine California USA

3. Department of Statistics Donald Bren School of Information and Computer Sciences University of California Irvine Irvine California USA

4. Department of Neurobiology and Behavior University of California Irvine Neurobiology and Behavior Irvine California USA

Abstract

AbstractINTRODUCTIONTo reduce demands on expert time and improve clinical efficiency, we developed a framework to evaluate whether inexpensive, accessible data could accurately classify Alzheimer's disease (AD) clinical diagnosis and predict the likelihood of progression.METHODSWe stratified relevant data into three tiers: obtainable at primary care (low‐cost), mostly available at specialty visits (medium‐cost), and research‐only (high‐cost). We trained several machine learning models, including a hierarchical model, an ensemble model, and a clustering model, to distinguish between diagnoses of cognitively unimpaired, mild cognitive impairment, and dementia due to AD.RESULTSAll models showed viable classification, but the hierarchical and ensemble models outperformed the conventional model. Classifier “error” was predictive of progression rates, and cluster membership identified subgroups with high and low risk of progression within 1.5 to 3 years.DISCUSSIONAccessible, inexpensive clinical data can be used to guide AD diagnosis and are predictive of current and future disease states.HIGHLIGHTS Classification performance using cost‐effective features was accurate and robust Hierarchical classification outperformed conventional multinomial classification Classification labels indicated significant changes in conversion risk at follow‐up A clustering‐classification method identified subgroups at high risk of decline

Funder

National Institute on Aging

National Institute of Mental Health

Publisher

Wiley

Subject

Psychiatry and Mental health,Neurology (clinical)

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