Calibration and Validation of Machine Learning Models for Physical Behavior Characterization: Protocol and Methods for the Free-Living Physical Activity in Youth (FLPAY) Study.

IF 1.4 Q3 HEALTH CARE SCIENCES & SERVICES
Samuel Robert LaMunion, Paul Robert Hibbing, Scott Edward Crouter
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引用次数: 0

Abstract

Background: Wearable activity monitors are increasingly used to characterize physical behavior. The development and validation of these characterization methods require criterion-labeled data typically collected in a laboratory or simulated free-living environment, which does not generally translate well to free-living due to limited behavior engagement in development that is not representative of free living.

Objective: The Free-Living Physical Activity in Youth (FLPAY) study was designed in 2 parts to establish a criterion dataset for novel method development for identifying periods of transition between activities in youth.

Methods: The FLPAY study used criterion measures of behavior (direct observation) and energy expenditure (indirect calorimetry) to label data from research-grade accelerometer-based devices for the purpose of developing and cross-validating models to identify transitions, classify activity type, and estimate energy expenditure in youth aged 6-18 years. The first part of this study was a simulated free-living protocol in the laboratory, comprising short (roughly 60-90 s) and long (roughly 4-5 min) bouts of 16 activities that were completed in various orders over the span of 2 visits. The second part of this study involved an independent sample of participants who agreed to be measured twice (2 hours each time) in free-living environments such as the home and community.

Results: The FLPAY study was funded from 2016 to 2020. A no-cost extension was granted for 2021. A few secondary outcomes have been published, but extensive analysis of primary data is ongoing.

Conclusions: The 2-part design of the FLPAY study emphasized the collection of naturalistic behaviors and periods of transition between activities in both structured and unstructured environments. This filled an important gap, considering the traditional focus on scripted activity routines in structured laboratory environments. This protocol paper details the FLPAY procedures and participants, along with details about criterion datasets, which will be useful in future studies analyzing the wealth of device-based data in diverse ways.

International registered report identifier (irrid): RR1-10.2196/65968.

身体行为表征的机器学习模型的校准和验证:青年自由生活身体活动(FLPAY)研究的协议和方法。
背景:可穿戴式活动监视器越来越多地用于描述身体行为。这些表征方法的开发和验证需要标准标记的数据,这些数据通常是在实验室或模拟的自由生活环境中收集的,由于开发过程中有限的行为参与并不代表自由生活,因此通常不能很好地转化为自由生活。目的:青少年自由生活体力活动(FLPAY)研究分为两部分,旨在建立一个标准数据集,用于开发识别青少年活动之间过渡时期的新方法。方法:FLPAY研究使用行为(直接观察)和能量消耗(间接量热法)的标准测量来标记来自研究级加速度计设备的数据,目的是开发和交叉验证模型,以识别6-18岁青少年的转变,分类活动类型和估计能量消耗。本研究的第一部分是在实验室模拟自由生活方案,包括短(大约60-90秒)和长(大约4-5分钟)16次活动,这些活动在两次访问期间以不同的顺序完成。这项研究的第二部分涉及一个独立的参与者样本,他们同意在家庭和社区等自由生活环境中接受两次测量(每次2小时)。结果:FLPAY研究于2016年至2020年获得资助。免费延期至2021年。已经发表了一些次要结果,但对主要数据的广泛分析正在进行中。结论:FLPAY研究的两部分设计强调了在结构化和非结构化环境中自然行为的收集和活动之间的过渡时期。这填补了一个重要的空白,考虑到传统的重点是结构化实验室环境中的脚本活动例程。本协议文件详细介绍了FLPAY程序和参与者,以及有关标准数据集的详细信息,这将有助于未来的研究以不同的方式分析基于设备的大量数据。国际注册报告标识符(irrid): RR1-10.2196/65968。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.40
自引率
5.90%
发文量
414
审稿时长
12 weeks
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