生命体征
可穿戴计算机
医学诊断
可穿戴技术
计算机科学
心率
机器学习
随机森林
人工智能
持续监测
医学
模拟
病理
内科学
外科
工程类
血压
嵌入式系统
运营管理
作者
Jessilyn Dunn,Łukasz Kidziński,Ryan Runge,Daniel R. Witt,Jennifer L. Hicks,Sophia Miryam Schüssler‐Fiorenza Rose,Xiao Li,Amir Bahmani,Scott L. Delp,Trevor Hastie,M Snyder
出处
期刊:Nature Medicine
[Nature Portfolio]
日期:2021-05-24
卷期号:27 (6): 1105-1112
被引量:178
标识
DOI:10.1038/s41591-021-01339-0
摘要
Vital signs, including heart rate and body temperature, are useful in detecting or monitoring medical conditions, but are typically measured in the clinic and require follow-up laboratory testing for more definitive diagnoses. Here we examined whether vital signs as measured by consumer wearable devices (that is, continuously monitored heart rate, body temperature, electrodermal activity and movement) can predict clinical laboratory test results using machine learning models, including random forest and Lasso models. Our results demonstrate that vital sign data collected from wearables give a more consistent and precise depiction of resting heart rate than do measurements taken in the clinic. Vital sign data collected from wearables can also predict several clinical laboratory measurements with lower prediction error than predictions made using clinically obtained vital sign measurements. The length of time over which vital signs are monitored and the proximity of the monitoring period to the date of prediction play a critical role in the performance of the machine learning models. These results demonstrate the value of commercial wearable devices for continuous and longitudinal assessment of physiological measurements that today can be measured only with clinical laboratory tests.
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