全国健康与营养检查调查
一致性
危险系数
算法
统计
比例危险模型
医学
人口
数学
人口学
置信区间
环境卫生
内科学
社会学
作者
Lily Koffman,Ciprian Crainiceanu,John Muschelli
标识
DOI:10.1249/mss.0000000000003616
摘要
ABSTRACT Purpose To quantify the relative performance of step counting algorithms in studies that collect free-living high-resolution wrist accelerometry data and to highlight the implications of using these algorithms in translational research. Methods Five step counting algorithms (four open source and one proprietary) were applied to the publicly available, free-living, high-resolution wrist accelerometry data collected by the National Health and Nutrition Examination Survey (NHANES) in 2011-2014. The mean daily total step counts were compared in terms of correlation, predictive performance, and estimated hazard ratios of mortality. Results The estimated number of steps were highly correlated (median = 0.91, range 0.77 to 0.98), had high and comparable predictive performance of mortality (median concordance = 0.72, range 0.70 to 0.73). The distributions of the number of steps in the population varied widely (mean step counts range from 2,453 to 12,169). Hazard ratios of mortality associated with a 500-step increase per day varied among step counting algorithms between HR = 0.88 and 0.96, corresponding to a 300% difference in mortality risk reduction ([1 − 0.88] / [1 − 0.96] = 3). Conclusions Different step counting algorithms provide correlated step estimates and have similar predictive performance that is better than traditional predictors of mortality. However, they provide widely different distributions of step counts and estimated reductions in mortality risk for a 500-step increase.
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