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紧跟可穿戴设备潮流:系统评价综述的实时更新,评估消费者可穿戴技术在健康测量中的准确性。

Keeping Pace with Wearables: A Living Umbrella Review of Systematic Reviews Evaluating the Accuracy of Consumer Wearable Technologies in Health Measurement.

机构信息

School of Public Health, Physiotherapy and Sports Science, University College Dublin, Dublin, Ireland.

Insight SFI Research Centre for Data Analytics, University College Dublin, Dublin, Ireland.

出版信息

Sports Med. 2024 Nov;54(11):2907-2926. doi: 10.1007/s40279-024-02077-2. Epub 2024 Jul 30.

Abstract

BACKGROUND

Consumer wearable technologies have become ubiquitous, with clinical and non-clinical populations leveraging a variety of devices to quantify various aspects of health and wellness. However, the accuracy with which these devices measure biometric outcomes such as heart rate, sleep and physical activity remains unclear.

OBJECTIVE

To conduct a 'living' (i.e. ongoing) evaluation of the accuracy of consumer wearable technologies in measuring various physiological outcomes.

METHODS

A systematic search of the literature was conducted in the following scientific databases: MEDLINE via PubMed, Embase, Cinahl and SPORTDiscus via EBSCO. The inclusion criteria required systematic reviews or meta-analyses that evaluated the validation of consumer wearable devices against accepted reference standards. In addition to publication details, review protocol, device specifics and a summary of the authors' results, we extracted data on mean absolute percentage error (MAPE), pooled absolute bias, intraclass correlation coefficients (ICCs) and mean absolute differences.

RESULTS

Of 904 identified studies through the initial search, 24 systematic reviews met our inclusion criteria; these systematic reviews included 249 non-duplicate validation studies of consumer wearable devices involving 430,465 participants (43% female). Of the commercially available wearable devices released to date, approximately 11% have been validated for at least one biometric outcome. However, because a typical device can measure a multitude of biometric outcomes, the number of validation studies conducted represents just 3.5% of the total needed for a comprehensive evaluation of these devices. For heart rate, wearables showed a mean bias of ± 3%. In arrhythmia detection, wearables exhibited a pooled sensitivity and specificity of 100% and 95%, respectively. For aerobic capacity, wearables significantly overestimated VO by ± 15.24% during resting tests and ± 9.83% during exercise tests. Physical activity intensity measurements had a mean absolute error ranging from 29 to 80%, depending on the intensity of the activity being undertaken. Wearables mostly underestimated step counts (mean absolute percentage errors ranging from - 9 to  12%) and energy expenditure (mean bias =  - 3 kcal per minute, or - 3%, with error ranging from - 21.27 to 14.76%). For blood oxygen saturation, wearables showed a mean absolute difference of up to 2.0%. Sleep measurement showed a tendency to overestimate total sleep time (mean absolute percentage error typically > 10%).

CONCLUSIONS

While consumer wearables show promise in health monitoring, a conclusive assessment of their accuracy is impeded by pervasive heterogeneity in research outcomes and methodologies. There is a need for standardised validation protocols and collaborative industry partnerships to enhance the reliability and practical applicability of wearable technology assessments.

PROSPERO ID

CRD42023402703.

摘要

背景

消费者可穿戴技术已经无处不在,临床和非临床人群正在使用各种设备来量化健康和健康的各个方面。然而,这些设备测量生物特征结果(如心率、睡眠和身体活动)的准确性尚不清楚。

目的

对消费者可穿戴技术测量各种生理结果的准确性进行“实时”(即正在进行的)评估。

方法

在以下科学数据库中进行了文献的系统搜索:MEDLINE 通过 PubMed、Embase、Cinahl 和 SPORTDiscus 通过 EBSCO。纳入标准要求系统评价或荟萃分析评估消费者可穿戴设备与公认的参考标准的验证。除了出版细节、审查方案、设备具体信息和作者结果摘要外,我们还提取了平均绝对百分比误差(MAPE)、汇总绝对偏差、组内相关系数(ICC)和平均绝对差异的数据。

结果

通过初步搜索共确定了 904 项研究,其中 24 项系统评价符合纳入标准;这些系统评价包括 249 项针对消费者可穿戴设备的验证研究,涉及 430,465 名参与者(43%为女性)。迄今为止已发布的可商用可穿戴设备中,约有 11%已针对至少一项生物特征结果进行了验证。然而,由于典型的设备可以测量多种生物特征结果,因此进行的验证研究仅代表这些设备全面评估所需的 3.5%。对于心率,可穿戴设备的平均偏差为±3%。在心律失常检测中,可穿戴设备的敏感性和特异性分别为 100%和 95%。对于有氧能力,可穿戴设备在静息测试时高估 VO 约±15.24%,在运动测试时高估 VO 约±9.83%。身体活动强度测量的平均绝对误差范围为 29%至 80%,具体取决于所进行的活动强度。可穿戴设备大多低估步数(平均绝对百分比误差范围为-9%至-12%)和能量消耗(平均偏差为-3 卡路里每分钟,或-3%,误差范围为-21.27%至 14.76%)。对于血氧饱和度,可穿戴设备的平均绝对差异高达 2.0%。睡眠测量结果显示总睡眠时间有高估趋势(平均绝对百分比误差通常>10%)。

结论

虽然消费者可穿戴设备在健康监测方面显示出前景,但由于研究结果和方法的普遍异质性,对其准确性的明确评估受到阻碍。需要标准化的验证方案和协作性的行业合作伙伴关系,以提高可穿戴技术评估的可靠性和实际适用性。

PROSPERO ID

CRD42023402703。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3782/11560992/5292b8185b3c/40279_2024_2077_Fig1_HTML.jpg

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