对选定的身体部位进行快速、精确的体表面积估计的计算方法

Gustaw Rzyman, G. Redlarski, Aleksander Palkowski, Piotr Tojza, M. Krawczuk, J. Siebert
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引用次数: 1

摘要

目前使用的体表面积(BSA)公式仅对典型体质的个体给出满意的结果,而对于老年人,肥胖或厌食症患者则不能期望准确的结果。特别值得注意的是对于严重肥胖个体(身体质量指数大于35 kg/m2)的结果,其BSA估计误差达到80%。我们研究的主要目标是为特定身体部位开发精确的BSA模型。我们已经为广泛的患者取得了满意的结果。使用回归模型,如:支持向量回归,多层感知器回归,随机梯度下降,或岭回归,误差比例降低了四倍。机器学习算法使平均估计误差从1.2倍降低到8倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computing methods for fast and precise body surface area estimation of selected body parts
Currently used body surface area (BSA) formulas give satisfactory results only for individuals with typical physique, while for elderly, obese or anorectic people accurate results cannot be expected. Particularly noteworthy are the results for individuals with severe obesity (body-mass index greater than 35 kg/m2), for which BSA estimation errors reached 80%. The main goal of our study is the development of precise BSA models for specific body parts. We have achieved satisfactory results for a wide range of patients. Using regression models, such as: support vector regression, multilayer perceptron regressor, stochastic gradient descent, or ridge regression, a fourfold decrease in errors proportion is achieved. Machine learning algorithms led to reduction from 1.2 to 8 times for mean estimation error.
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