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Associations between relative body fat and areal body surface roughness characteristics in 3D photonic body scans-a proof of feasibility

机译:3D光子体扫描中相对体脂肪和面体表面粗糙度特性的关联 - 可行性证据

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A reliable and accurate estimate of the percentage and distribution of adipose tissue in the human body is essential for evaluating the risk of developing chronic and noncommunicable diseases. A precise and differentiated method, which at the same time is fast, noninvasive, and straightforward to perform, would, therefore, be desirable. We sought a new approach to this research area by linking a person's relative body fat with their body surface's areal roughness characteristics. For this feasibility study, we compared areal surface roughness characteristics, assessed from 3D photonic full-body scans of 76 Swiss young men, and compared the results with body impedance-based estimates of relative body fat. We developed an innovative method for characterizing the areal surface roughness distribution of a person's entire body, in a similar approach as it is currently used in geoscience or material science applications. We then performed a statistical analysis using different linear and stepwise regression models. In a stepwise regression analysis of areal surface roughness frequency tables, a combination of standard deviation, interquartile range, and mode showed the best association with relative body fat (R2-=-0.55, p-<-0.0001). The best results were achieved by calculating the arithmetic mean height, capable of explaining up to three-quarters of the variance in relative body fat (R2-=-0.74, p-<-0.001). This study shows that areal surface roughness characteristics assessed from 3D photonic whole-body scans associate well with relative body fat, therefore representing a viable new approach to improve current 3D scanner-based methods for determining body composition and obesity-associated health risks. Further investigations may validate our method with other data or provide a more detailed understanding of the relation between the body's areal surface characteristics and adipose tissue distribution by including larger and more diverse populations or focusing on particular body segments.
机译:对人体中脂肪组织百分比和分布的可靠和准确的估计对于评估慢性和非传染性疾病的风险至关重要。一种精确和分化的方法,同时是快速,非侵入性和直接的执行,因此是可取的。我们通过将一个人的相对体脂与身体表面的面积粗糙度特征联系起来,我们向这一研究领域寻求了新的方法。对于这种可行性研究,我们比较了来自76瑞士青年男性的3D光子全身扫描的面表面粗糙度特征,并将结果与​​基于身体阻抗的相对体脂的估算进行了比较。我们开发了一种创新方法,用于表征一个人整个身体的面表面粗糙度分布,以类似的方法,因为它目前用于地球科学或材料科学应用。然后,我们使用不同的线性和逐步回归模型进行统计分析。在地面粗糙度频率表的逐步回归分析中,标准偏差,狭窄范围和模式的组合显示了与相对体脂肪的最佳关系(R2 - = - 0.55,P - < - 0.0001)。通过计算算术平均高度来实现最佳结果,能够解释相对体脂肪的差异的四分之三(R2 - = - 0.74,P - <-<0.001)。该研究表明,从3D光子全身扫描评估的面表面粗糙度特征与相对体脂吻合,因此代表了改善基于3D扫描仪的基于3D扫描仪的方法的可行的新方法,以确定身体成分和肥胖症相关的健康风险。进一步的调查可以通过其他数据验证我们的方法,或者通过包括较大和更多样化的群体或聚焦特定的身体段,更详细地了解对身体面表面特征和脂肪组织分布之间的关系。

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