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A machine learning approach relating 3D body scans to body composition in humans

机译:将3D体扫描与人体构成相关的机器学习方法

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A long-standing question in nutrition and obesity research involves quantifying the relationship between body fat and anthropometry. To date, the mathematical formulation of these relationships has relied on pairing easily obtained anthropometric measurements such as the body mass index (BMI), waist circumference, or hip circumference to body fat. Recent advances in 3D body shape imaging technology provides a new opportunity for quickly and accurately obtaining hundreds of anthropometric measurements within seconds, however, there does not yet exist a large diverse database that pairs these measurements to body fat. Herein, we leverage 3D scanned anthropometry obtained from a population of United States Army basic training recruits to derive four subpopulations of homogenous body shape archetypes using a combined principal components and cluster analysis. While the Army database was large and diverse, it did not have body composition measurements. Therefore, these body shape archetypes were paired to an alternate smaller sample of participants from the Pennington Biomedical Research Center in Baton Rouge, LA that were not only similarly imaged by the same 3D scanning machine, but also had concomitant measures of body composition by dual-energy X-ray absorptiometry body composition. With this enhanced ability to obtain anthropometry through 3D scanning quickly of large populations, our machine learning approach for pairing body shapes from large datasets to smaller datasets that also contain state-of-the-art body composition measurements can be extended to pair other health outcomes to 3D body shape anthropometry.
机译:营养和肥胖研究中的一个长期存在的问题涉及量化身体脂肪和人体测量术之间的关系。迄今为止,这些关系的数学制剂依赖于配对容易获得的人类测量测量,例如体重指数(BMI),腰围或臀部周长对体脂肪。 3D身体形状成像技术的最新进展为在几秒钟内快速准确地获得数百个人类测量测量提供了新的机会,然而,尚未存在大型多样化数据库,这些数据库对身体脂肪对这些测量进行了成对。在此,我们利用从美国陆军基本培训员工人群获得的3D扫描的人类测量法使用组合的主成分和聚类分析来得出四个均匀体形状原型的四个亚群。虽然陆军数据库大而多样化,但它没有身体成分测量。因此,这些体形原型与来自巴登胭脂的Pennington生物医学研究中心的参与者的交替较小的参与者配对,这不仅是由相同的3D扫描机器类似地成像,而且还通过双重伴随着身体组成的措施能量X射线吸收术体组合物。通过这种增强的能力,通过3D扫描通过3D扫描大量的大群体,我们的机器学习方法可以将来自大型数据集与较小数据集配对的机器的形状也可以扩展到与其他健康结果相对到3D身体形状的人体测量。

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