Claas Lendt, Theresa Braun, Bianca Biallas, Ingo Froböse, Peter J Johansson
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Participants completed standardized activities with varying intensities in the laboratory. Activities included walking, running, cycling, sitting, standing, and lying down. Subsequently, participants performed unrestricted free-living activities outside of the laboratory while being video-recorded with a chest-mounted camera. Videos were annotated using a predefined labelling scheme and annotations served as a reference for the free-living condition. Classification output from the SENS motion software and ActiPASS software was compared to reference labels.</p><p><strong>Results: </strong>A total of 63.6 h of activity data were analysed. We observed a high level of agreement between the two classification algorithms and their respective references in both conditions. In the free-living condition, Cohen's kappa coefficients were 0.86 for SENS and 0.92 for ActiPASS. The mean balanced accuracy ranged from 0.81 (cycling) to 0.99 (running) for SENS and from 0.92 (walking) to 0.99 (sedentary) for ActiPASS across all activity types.</p><p><strong>Conclusions: </strong>The study shows that two available no-code classification methods can be used to accurately identify basic physical activity types and postures. Our results highlight the accuracy of both methods based on relatively low sampling frequency data. The classification methods showed differences in performance, with lower sensitivity observed in free-living cycling (SENS) and slow treadmill walking (ActiPASS). Both methods use different sets of activity classes with varying definitions, which may explain the observed differences. Our results support the use of the SENS motion system and both no-code classification methods.</p>","PeriodicalId":50336,"journal":{"name":"International Journal of Behavioral Nutrition and Physical Activity","volume":"21 1","pages":"77"},"PeriodicalIF":5.6000,"publicationDate":"2024-07-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11253440/pdf/","citationCount":"0","resultStr":"{\"title\":\"Thigh-worn accelerometry: a comparative study of two no-code classification methods for identifying physical activity types.\",\"authors\":\"Claas Lendt, Theresa Braun, Bianca Biallas, Ingo Froböse, Peter J Johansson\",\"doi\":\"10.1186/s12966-024-01627-1\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>The more accurate we can assess human physical behaviour in free-living conditions the better we can understand its relationship with health and wellbeing. Thigh-worn accelerometry can be used to identify basic activity types as well as different postures with high accuracy. User-friendly software without the need for specialized programming may support the adoption of this method. This study aims to evaluate the classification accuracy of two novel no-code classification methods, namely SENS motion and ActiPASS.</p><p><strong>Methods: </strong>A sample of 38 healthy adults (30.8 ± 9.6 years; 53% female) wore the SENS motion accelerometer (12.5 Hz; ±4 g) on their thigh during various physical activities. Participants completed standardized activities with varying intensities in the laboratory. Activities included walking, running, cycling, sitting, standing, and lying down. Subsequently, participants performed unrestricted free-living activities outside of the laboratory while being video-recorded with a chest-mounted camera. Videos were annotated using a predefined labelling scheme and annotations served as a reference for the free-living condition. Classification output from the SENS motion software and ActiPASS software was compared to reference labels.</p><p><strong>Results: </strong>A total of 63.6 h of activity data were analysed. We observed a high level of agreement between the two classification algorithms and their respective references in both conditions. In the free-living condition, Cohen's kappa coefficients were 0.86 for SENS and 0.92 for ActiPASS. The mean balanced accuracy ranged from 0.81 (cycling) to 0.99 (running) for SENS and from 0.92 (walking) to 0.99 (sedentary) for ActiPASS across all activity types.</p><p><strong>Conclusions: </strong>The study shows that two available no-code classification methods can be used to accurately identify basic physical activity types and postures. Our results highlight the accuracy of both methods based on relatively low sampling frequency data. 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引用次数: 0
摘要
背景:我们越能准确评估人在自由生活条件下的身体行为,就越能更好地了解其与健康和幸福的关系。大腿佩戴式加速度计可用于高精度识别基本活动类型和不同姿势。无需专门编程的用户友好型软件可支持这种方法的采用。本研究旨在评估两种新型无代码分类方法(即 SENS motion 和 ActiPASS)的分类准确性:方法:38 名健康成年人(30.8 ± 9.6 岁;53% 为女性)在进行各种体育活动时在大腿上佩戴了 SENS 运动加速度计(12.5 Hz;±4 g)。参与者在实验室完成了不同强度的标准化活动。这些活动包括步行、跑步、骑自行车、坐、站和躺。随后,参与者在实验室外进行不受限制的自由活动,并用胸前安装的摄像头进行录像。使用预定义的标签方案对视频进行注释,注释可作为自由活动状态的参考。将 SENS 运动软件和 ActiPASS 软件的分类输出结果与参考标签进行比较:共分析了 63.6 小时的活动数据。我们观察到,在这两种情况下,两种分类算法与各自的参考值之间的一致性都很高。在自由活动状态下,SENS 的科恩卡帕系数为 0.86,ActiPASS 为 0.92。在所有活动类型中,SENS 的平均平衡准确度从 0.81(骑自行车)到 0.99(跑步)不等,ActiPASS 的平均平衡准确度从 0.92(步行)到 0.99(久坐)不等:这项研究表明,现有的两种无代码分类方法可用于准确识别基本的体力活动类型和姿势。我们的研究结果表明,基于相对较低的采样频率数据,这两种方法都很准确。这两种分类方法在性能上存在差异,在自由生活骑自行车(SENS)和慢速跑步机行走(ActiPASS)中观察到的灵敏度较低。这两种方法使用不同的活动类别集,定义也各不相同,这可能是观察到的差异的原因。我们的结果支持使用 SENS 运动系统和这两种无代码分类方法。
Thigh-worn accelerometry: a comparative study of two no-code classification methods for identifying physical activity types.
Background: The more accurate we can assess human physical behaviour in free-living conditions the better we can understand its relationship with health and wellbeing. Thigh-worn accelerometry can be used to identify basic activity types as well as different postures with high accuracy. User-friendly software without the need for specialized programming may support the adoption of this method. This study aims to evaluate the classification accuracy of two novel no-code classification methods, namely SENS motion and ActiPASS.
Methods: A sample of 38 healthy adults (30.8 ± 9.6 years; 53% female) wore the SENS motion accelerometer (12.5 Hz; ±4 g) on their thigh during various physical activities. Participants completed standardized activities with varying intensities in the laboratory. Activities included walking, running, cycling, sitting, standing, and lying down. Subsequently, participants performed unrestricted free-living activities outside of the laboratory while being video-recorded with a chest-mounted camera. Videos were annotated using a predefined labelling scheme and annotations served as a reference for the free-living condition. Classification output from the SENS motion software and ActiPASS software was compared to reference labels.
Results: A total of 63.6 h of activity data were analysed. We observed a high level of agreement between the two classification algorithms and their respective references in both conditions. In the free-living condition, Cohen's kappa coefficients were 0.86 for SENS and 0.92 for ActiPASS. The mean balanced accuracy ranged from 0.81 (cycling) to 0.99 (running) for SENS and from 0.92 (walking) to 0.99 (sedentary) for ActiPASS across all activity types.
Conclusions: The study shows that two available no-code classification methods can be used to accurately identify basic physical activity types and postures. Our results highlight the accuracy of both methods based on relatively low sampling frequency data. The classification methods showed differences in performance, with lower sensitivity observed in free-living cycling (SENS) and slow treadmill walking (ActiPASS). Both methods use different sets of activity classes with varying definitions, which may explain the observed differences. Our results support the use of the SENS motion system and both no-code classification methods.
期刊介绍:
International Journal of Behavioral Nutrition and Physical Activity (IJBNPA) is an open access, peer-reviewed journal offering high quality articles, rapid publication and wide diffusion in the public domain.
IJBNPA is devoted to furthering the understanding of the behavioral aspects of diet and physical activity and is unique in its inclusion of multiple levels of analysis, including populations, groups and individuals and its inclusion of epidemiology, and behavioral, theoretical and measurement research areas.