Analysis of In-Home Movement Patterns for Depression Assessment in Older Adults - A Feasibility Study
Dennis, Mitchell, Prabhu, Deepa, Baker, Stephanie, and Silvera-Tawil, David (2024) Analysis of In-Home Movement Patterns for Depression Assessment in Older Adults - A Feasibility Study. In: Studies in Health Technology and Informatics (318) pp. 144-149. From: HIC 2024: Health Innovation Community COnference, 5-7 August 2024, Brisbane, QLD, Australia.
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Abstract
Depression significantly impacts the wellbeing of older Australians, posing considerable challenges to their overall quality of life. This study aimed to detect in-home movement patterns of participants that could be indicative of depressive states. Utilising data collected over a 12-month period via smart home ambient sensors, this feasibility study conducted a comparative analysis using machine learning techniques on features derived from motion sensors, sociodemographic variables, and the Geriatric Depression Scale. Three machine learning models, specifically Extreme Gradient Boost (XGBoost), Random Forest (RF), and Logistic Regression (LR), were implemented. Results showed that the performance of XGBoost was relatively higher compared to RF and LR, with an Area Under the Receiver Operating Characteristic Curve (AUROC) value of 0.67. Feature analysis indicated that bathroom and kitchen movements and the level of home care support were among the top influential features influencing depression assessment. This is consistent with clinical evidence on appetite, hygiene, and overall mobility changes during depression. These findings underscore the feasibility of leveraging in-home movement monitoring as an indicator of health risks among older adults.
| Item ID: | 87207 | 
|---|---|
| Item Type: | Conference Item (Research - E1) | 
| ISBN: | 978-1-64368-541-0 | 
| Keywords: | depression, health informatics, machine learning, motion sensor, older adults, smart home | 
| Copyright Information: | © 2024 The Authors. This article is published online with Open Access by IOS Press and distributed under the terms of the Creative Commons Attribution Non-Commercial License 4.0 (CC BY-NC 4.0). | 
| Date Deposited: | 30 Oct 2025 02:31 | 
| FoR Codes: | 42 HEALTH SCIENCES > 4206 Public health > 420699 Public health not elsewhere classified @ 40% 46 INFORMATION AND COMPUTING SCIENCES > 4611 Machine learning > 461199 Machine learning not elsewhere classified @ 60% | 
| SEO Codes: | 20 HEALTH > 2001 Clinical health > 200101 Diagnosis of human diseases and conditions @ 50% 22 INFORMATION AND COMMUNICATION SERVICES > 2204 Information systems, technologies and services > 220499 Information systems, technologies and services not elsewhere classified @ 50% | 
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