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3D Shape-based Body Composition Prediction Model Using Machine Learning

机译:使用机器学习的基于3D形状的身体成分预测模型

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A booming development of 3D body scan and modeling technologies has facilitated large-scale anthropometric data collections for biomedical research and applications. However, usages of the digitalized human body shape data are relatively limited due to a lack of corresponding medical data to establish correlations between body shapes and underlying health information, such as the Body Fat Percentage (BFP). We present a novel prediction model to estimate the BFP by analyzing 3D body shapes. We introduce the concept of “visual cue” by analyzing the second-order shape descriptors. We first establish our baseline regression model for feature selection of the zeroth-order shape descriptors. Then, we use the visual cue as a shape-prior to improve the baseline prediction. In our study, we take the Dual-energy X-ray Absorptiometry (DXA) BFP measure as the ground truth for model training and evaluation. DXA is considered the “gold standard” in body composition assessment. We compare our results with the clinical BFP estimation instrument-the BOD POD. The result shows that our prediction model, on the average, outperforms the BOD POD by 20.28% in prediction accuracy.
机译:3D体扫描和建模技术的蓬勃发展促进了用于生物医学研究和应用的大规模人体测量数据收集。然而,由于缺乏相应的医疗数据,以缺乏相应的医疗数据来建立身体形状与底层健康信息(例如体脂百分比(BFP)之间的相关性,所述数字化人体形状数据的用法相对较为有限。我们提出了一种新的预测模型来通过分析3D体形状来估计BFP。我们通过分析二阶形状描述符来介绍“视觉提示”的概念。我们首先建立我们的基准回归模型,以便选择零顺序形状描述符。然后,我们在改善基线预测之前使用视觉提示作为形状。在我们的研究中,我们采用双能X射线吸收测量(DXA)BFP措施作为模型培训和评估的基础事实。 DXA被认为是身体成分评估中的“黄金标准”。我们将结果与临床BFP估计仪器 - BOD POD进行比较。结果表明,我们的预测模型平均,以预测准确度达到20.28%的BOD POD。

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