Development and Independent Validation of Energy Expenditure Models Using SmartStep

Nagaraj Hegde, T. Swibas, E. Melanson, E. Sazonov
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Abstract

In this work we developed and validated a method to capture the activities of daily living (ADL), transitions between ADL, and the associated Energy Expenditure (EE) using a novel insole based wearable system (SmartStep). A 15-participant study was conducted in a controlled laboratory environment while participants wore the SmartStep and performed various ADL. Machine learning models were developed using 4-branched and 8-branched steady-state activities to estimate the total energy expenditure (TEE) and physical activity energy expenditure (PAEE). Additional models accounting for transitions between activities were also developed. These models were validated in an independent study with 8-participants, performed in a whole room indirect calorimeter. In the controlled study, the 8-branched models had a lower root mean square error (RMSE, 0.58 vs. 0.67 kcal/min) and lower total error (−1.5% vs. 3%). In the validation study, the 8-branched models also had a lower RMSE (0.9 kcal/min vs. 1.2 kcal/min) and lower total error (−4.5% vs 11%). Accounting for activity transitions reduced the total error in the EE estimation to −1.3%. The results suggested that SmartStep can be used to accurately monitor the EE of the wearers in their daily living. The validation study results suggested that 8-branched models more accurately predict EE than 4-branched models and that accounting for activity transitions improves the estimation of EE in daily living.
使用SmartStep开发和独立验证能量消耗模型
在这项工作中,我们开发并验证了一种方法来捕捉日常生活活动(ADL), ADL之间的转换,以及相关的能量消耗(EE)使用一种新型的鞋垫可穿戴系统(SmartStep)。一项15名参与者的研究在受控的实验室环境中进行,参与者佩戴SmartStep并进行各种ADL。利用4支和8支稳态活动建立了机器学习模型,以估计总能量消耗(TEE)和身体活动能量消耗(PAEE)。另外还开发了考虑活动之间转换的其他模型。这些模型在一项有8名参与者的独立研究中得到了验证,该研究在整个房间的间接量热计中进行。在对照研究中,8支模型具有较低的均方根误差(RMSE, 0.58 vs. 0.67 kcal/min)和较低的总误差(- 1.5% vs. 3%)。在验证研究中,8支模型也具有较低的RMSE (0.9 kcal/min vs. 1.2 kcal/min)和较低的总误差(- 4.5% vs. 11%)。考虑活动转换将EE估计的总误差降低到- 1.3%。结果表明,SmartStep可以用来准确地监测佩戴者在日常生活中的情感表达。验证研究结果表明,8支模型比4支模型更准确地预测情感表达,并且考虑活动转换可以改善对日常生活中情感表达的估计。
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