| Literature DB >> 32723711 |
Gerald Wilmink1, Katherine Dupey1, Schon Alkire2, Jeffrey Grote1, Gregory Zobel1, Howard M Fillit3,4, Satish Movva1.
Abstract
BACKGROUND: Wearables and artificial intelligence (AI)-powered digital health platforms that utilize machine learning algorithms can autonomously measure a senior's change in activity and behavior and may be useful tools for proactive interventions that target modifiable risk factors.Entities:
Keywords: AI; artificial intelligence; assisted living; health technology; long-term care providers; long-term services; preventive; senior technology
Year: 2020 PMID: 32723711 PMCID: PMC7516685 DOI: 10.2196/19554
Source DB: PubMed Journal: JMIR Aging ISSN: 2561-7605
Figure 1Workflow of data collection and analysis.
Figure 2AI-powered digital health platform, wearable device, and room location system. A. Wearable device and sample representation of gesture recognition and activity detection. B. System architecture and overview of the data collection process. C. Summary of the product’s primary functions.
Resident age in the CarePredict and control assisted-living communities.
| Age group | CarePredict (N=252), n (%) | Control (N=220), n (%) | |
| Below 75 years | 12 (4.76) | 21 (9.55) | .64 |
| 75-80 years | 40 (15.87) | 26 (11.82) | .47 |
| 81-85 years | 74 (29.37) | 55 (25.00) | .44 |
| 86-90 years | 69 (27.38) | 60 (27.27) | .62 |
| Over 90 years | 57 (22.62) | 58 (26.36) | .72 |
Average staff service time (hours) spent per headcount per month. There was no significant difference between groups (P=.94).
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| Hours | ||
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| 76.7 (20.9) | ||
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| 1 | 81 | |
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| 2 | 54 | |
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| 3 | 95 | |
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| 77.6 (2.6) | ||
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| 1 | 59 | |
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| 2 | 71 | |
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| 3 | 103 | |
Outcomes: hospitalization and fall rates for six assisted living communities.
| Community | CarePredict (+/-) | Hospital incidents per headcount, N=490 | Falls per headcount, N=490 | ||||
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| Baseline, n (%) | Change from baseline, (%) | End of study, n, % (SD) | Baseline, n, fall rate | Change from baseline | End of study, n, fall rate (SD) |
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| 1 | – | 70 (42.0) | 18.7 | 74, 60.7 (11.2) | 70, 2.46 | 1.38 | 74, 3.84 (0.5) |
| 2 | – | 70 (37.2) | 57.1 | 78, 94.3 (12.7) | 70, 2.31 | 0.81 | 78, 3.12 (0.8) |
| 3 | – | 80 (38.1) | 27.8 | 82, 65.9 (3.1) | 80, 2.11 | 0.28 | 82, 2.39 (0.1) |
| 4 | + | 80 (45.1) | –18.2 | 84, 26.9 (6.7) | 80, 1.92 | –0.65 | 84, 1.27 (0.8) |
| 5 | + | 84 (57.2) | –19.4 | 84, 37.8 (18.9) | 84, 2.40 | –1.67 | 84, 0.73 (0.5) |
| 6 | + | 88 (44.0) | –7.3 | 88, 36.7 (10.1) | 88, 1.62 | –0.72 | 88, 0.90 (0.7) |
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| Mean (SD) | – | 39.1 (2.5) | 34.5 (7.24) | 73.6 (18.1) | 2.29 (0.18) | 0.82 (0.55) | 3.11 (0.75) |
| Mean (SD) | + | 48.8 (7.3) | –15.0 (8.51) | 33.8 (6.0) | 1.98 (0.39) | –1.01 (0.57) | 0.97 (0.28) |
| Delta |
| 9.7 | –49.5 | –39.8 | 0.16 | –1.83 | –2.14 |
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| .21 | .04 | .02 | .30 | .05 | .01 | |
Length of stay in CarePredict and control communities.
| Community | CarePredict | Control | Difference in CarePredict vs control (%) | |
| Median length of stay (SD) | 214 (38) | 128 (8.7) | 67 | .03 |
| Geometric mean length of stay (SD) | 178 (46) | 92 (8.6) | 93 | .04 |
| Mean length of stay (SD) | 268 (42.4) | 192 (18) | 40 | .03 |
Average acknowledgment and response times at baseline and the end of the study.
| Response | Baseline, seconds, mean (SD) | End of study, seconds, mean (SD) | Improvement (%) | |
| Acknowledge alert | 580 (42) | 349.5 (82) | 40 | .03 |
| Reach resident | 763.5 (78) | 500 (35) | 37 | .02 |