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A Machine Learning Approach to Measure and Monitor Physical Activity in Children to Help Fight Overweight and Obesity

机译:一种测量和监控儿童身体活动的机器学习方法,以帮助解决超重和肥胖

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Physical Activity is important for maintaining healthy lifestyles. Recommendations for physical activity levels are issued by most governments as part of public health measures. As such, reliable measurement of physical activity for regulatory purposes is vital. This has lead research to explore standards for achieving this using wearable technology and artificial neural networks that produce classifications for specific physical activity events. Applied from a very early age, the ubiquitous capture of physical activity data using mobile and wearable technology may help us to understand how we can combat childhood obesity and the impact that this has in later life. A supervised machine learning approach is adopted in this paper that utilizes data obtained from accelerometer sensors worn by children in free-living environments. The paper presents a set of activities and features suitable for measuring physical activity and evaluates the use of a Multilayer Perceptron neural network to classify physical activities by activity type. A rigorous reproducible data science mediodology is presented for subsequent use in physical activity research. Our results show that it was possible to obtain an overall accuracy of 96 % with 95 % for sensitivity, 99 % for specificity and a kappa value of 94 % when three and four feature combinations were used.
机译:体育锻炼对于保持健康的生活方式很重要。大多数政府将体育锻炼水平的建议作为公共卫生措施的一部分发布。因此,出于监管目的对身体活动进行可靠的测量至关重要。这项领先的研究探索了使用可穿戴技术和人工神经网络来实现这一目标的标准,这些网络为特定的身体活动事件提供了分类。从很小的时候开始应用,使用移动和可穿戴技术无处不在地捕获身体活动数据可能有助于我们了解如何对抗儿童肥胖症及其对以后生活的影响。本文采用一种有监督的机器学习方法,该方法利用从儿童在自由生活环境中佩戴的加速度传感器获得的数据。本文介绍了一组适合测量身体活动的活动和特征,并评估了使用多层感知器神经网络按活动类型对身体活动进行分类的功能。提出了严格的可重现的数据科学方法论,供随后在体育活动研究中使用。我们的结果表明,当使用三个和四个特征组合时,有可能获得96%的总体准确度,其中灵敏度为95%,特异性为99%,kappa值为94%。

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