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Journal Article

Citation

Brew B, Faux SG, Blanchard E. JMIR Form. Res. 2022; 6(3): e30121.

Copyright

(Copyright © 2022, JMIR Publications)

DOI

10.2196/30121

PMID

35311686

Abstract

BACKGROUND: Older adults are at an increased risk of falls with the consequent impacts on the health of the individual and health expenditure for the population. Smartwatch apps have been developed to detect a fall, but their sensitivity and specificity have not been subjected to blinded assessment nor have the factors that influence the effectiveness of fall detection been fully identified.

OBJECTIVE: This study aims to assess accuracy metrics for a novel fall detection smartwatch algorithm.

METHODS: We performed a cross-sectional study of 22 healthy adults comparing the detection of induced forward, side (left and right), and backward falls and near falls provided by a smartwatch threshold-based algorithm, with a video record of induced falls serving as the gold standard; a blinded assessor compared the two. Three different smartwatches with two different operating systems were used. There were 226 falls: 64 were backward, 51 forward, 55 left sided, and 56 right sided.

RESULTS: The overall smartwatch app sensitivity for falls was 77%, the specificity was 99%, the false-positive rate was 1.7%, and the false-negative rate was 16.4%. The positive and negative predictive values were 98% and 84%, respectively, while the accuracy was 89%. There were 249 near falls: the sensitivity was 89%, the specificity was 100%, there were no false positives, 11% were false negatives, the positive predictive value was 100%, the false-negative predictive value was 83%, and the accuracy was 93%.

CONCLUSIONS: Falls were more likely to be detected if the fall was on the same side as the wrist with the smartwatch. There was a trend toward some smartwatches and operating systems having superior sensitivity, but these did not reach statistical significance. The effectiveness data and modifying factors pertaining to this smartwatch app can serve as a reference point for other similar smartwatch apps.


Language: en

Keywords

elderly; falls; accelerometer; app fall detection; inertial sensors; mobile health; old age; older adult; smart watch; smartwatch; threshold-based algorithm

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