Predicting daily cognition and lifestyle behaviors for older adults using smart home data and ecological momentary assessment.

Journal: The Clinical neuropsychologist

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Affiliated Institutions:  Department of Psychology, Washington State University, Pullman, WA, USA. College of Education, Washington State University, Pullman, WA, USA. School of Electrical Engineering and Computer Science, Washington State University, Pullman, WA, USA.

Abstract summary 

Extraction of digital markers from passive sensors placed in homes is a promising method for understanding real-world behaviors. In this study, machine learning (ML) and multilevel modeling (MLM) are used to examine types of digital markers and whether smart home sensors can predict cognitive functioning, lifestyle behaviors, and contextual factors measured through ecological momentary assessment (EMA).Smart home sensors were installed in the homes of 44 community-dwelling midlife and older adults for 3-4 months. Sensor data were categorized into eight digital markers. Participants responded to iPad-delivered EMA prompts 4×/day for 2 wk. Prompts included an -back task and survey on recent (past 2 h) lifestyle and contextual factors.ML marker rankings revealed that sensor counts (indicating increased activity) and time outside the home were among the most influential markers for all survey questions. Additionally, MLM revealed for every 1000 sensor counts, mental sharpness, social, physical, and cognitive EMA responses increased by 0.134-0.155 points on a 5-point scale. For every additional 30-minutes spent outside home, social, physical, and cognitive EMA responses increased by 0.596, 0.472, and 0.157 points. Advanced ML joint classification/regression significantly predicted EMA responses from smart home digital markers with error of 0.370 on a 5-point scale, and -back performance with a normalized error of 0.040.Results from ML and MLM were complimentary and comparable, suggesting that machine learning may be used to develop generalized models to predict everyday cognition and track lifestyle behaviors and contextual factors that impact health outcomes using smart home sensor data.

Authors & Co-authors:  Schmitter-Edgecombe Luna Dai Cook

Study Outcome 

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Statistics
Citations : 
Authors :  4
Identifiers
Doi : 10.1080/13854046.2024.2330143
SSN : 1744-4144
Study Population
Male,Female
Mesh Terms
Other Terms
Aging;digital phenotyping;ecological momentary assessment;machine learning;smart homes
Study Design
Study Approach
Country of Study
Mali
Publication Country
England