Unraveling the multiple chronic conditions patterns among people with Alzheimer's disease and related dementia: A machine learning approach to incorporate synergistic interactions

Author:

Yew Pui Ying1,Devera Ryan2,Liang Yue1,Khalifa Razan A. El3,Sun Ju2,Chi Nai‐Ching4,Chou Ying‐Chyi5,Tonellato Peter J.6,Chi Chih‐Lin17

Affiliation:

1. Institute for Health Informatics University of Minnesota Minneapolis Minnesota USA

2. Department of Computer Science & Engineering University of Minnesota Minneapolis Minnesota USA

3. Bioinformatics and Computational Biology University of Minnesota Rochester Minnesota USA

4. College of Nursing University of Iowa Iowa City Iowa USA

5. Department of Business Administration Tunghai University Taichung Taiwan

6. Department of Biomedical Informatics Biostatistics and Medical Epidemiology University of Missouri School of Medicine Columbia Missouri USA

7. School of Nursing University of Minnesota Minneapolis Minnesota USA

Abstract

AbstractINTRODUCTIONMost people with Alzheimer's disease and related dementia (ADRD) also suffer from two or more chronic conditions, known as multiple chronic conditions (MCC). While many studies have investigated the MCC patterns, few studies have considered the synergistic interactions with other factors (called the syndemic factors) specifically for people with ADRD.METHODSWe included 40,290 visits and identified 18 MCC from the National Alzheimer's Coordinating Center. Then, we utilized a multi‐label XGBoost model to predict developing MCC based on existing MCC patterns and individualized syndemic factors.RESULTSOur model achieved an overall arithmetic mean of 0.710 AUROC (SD = 0.100) in predicting 18 developing MCC. While existing MCC patterns have enough predictive power, syndemic factors related to dementia, social behaviors, mental and physical health can improve model performance further.DISCUSSIONOur study demonstrated that the MCC patterns among people with ADRD can be learned using a machine‐learning approach with syndemic framework adjustments.Highlights Machine learning models can learn the MCC patterns for people with ADRD. The learned MCC patterns should be adjusted and individualized by syndemic factors. The model can predict which disease is developing based on existing MCC patterns. As a result, this model enables early specific MCC identification and prevention.

Publisher

Wiley

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