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AI-enhanced human-machine collaboration in long-term care: A mixed-methods study on service efficiency and quality improvement
Published in Volume 28, Issue 1 (Vol. 28, Issue 1, 2024)

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Abstract
The global demographic transition toward an aging population presents unprecedented challenges for long-term care systems, with critical workforce shortages affecting $92 \%$ of nursing homes and $70 \%$ of assisted living facilities. This mixed-methods study investigates the effectiveness of AI-enhanced human-machine collaboration in improving long-term care service efficiency and quality. Following PRISMA and STROBE guidelines, we conducted a systematic review of 105 studies and controlled trials across 218 facilities ( 94 intervention, 124 control) over 18 months. The AI-enhanced system analyzed 150 daily clinical data points per patient, providing real-time alerts for condition changes, fall risk assessment, and medication monitoring. Results demonstrated significant improvements in $89 \%$ of quality measures, including a $9 \%$ reduction in major falls ( $p=0.034$ ), 22\% decrease in ADL dependency ( $p
DOI: https://dx.doi.org/10.17654/0973700626007
Received: October 18, 2025
Accepted: November 3, 2025;
Authors (2)
Yih-Chang Chen
Published in Pushpa Publishing...Published in Pushpa Publishing HousePublished in Pushpa Publishing HousePublished in Pushpa Publishing House
View all publications →Chia-Ching Lin
Published in Pushpa Publishing...Published in Pushpa Publishing HousePublished in Pushpa Publishing HousePublished in Pushpa Publishing House
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Article Information
Published in:
Volume 28, Issue 1 (Vol. 28, Issue 1, 2024)- Article ID:
- FJEC1280042
- Paper ID:
- fjec-01-000042
- Published Date:
- 2026-03-06
Article Impact
Views:5,802
Downloads:1,368
How to Cite
, Y. & , C. (2026). AI-enhanced human-machine collaboration in long-term care: A mixed-methods study on service efficiency and quality improvement. Far East Journal of Electronics and Communications, 28(1), xx-xx. https://fjec.scholarjms.com/articles/24
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