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Percent Body Fat Prediction from Body Mass Index and Waist Circumference: New Cross-validated Equations for Young Adults

机译:通过体重指数和腰围预测身体脂肪百分比:针对年轻人的交叉验证新方程

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Background: A simple prediction equation that accurately predicts an individual’s percent body fat (PBF) with easy to obtain inputs could benefit health and exercise science professionals. The purpose of this study was to develop and cross-validate a set of regression equations predicting PBF in young adults. Methods: A subset of N=684 participants from a national health survey between the ages of 18 and 24 years was used in this study. Criterion values of PBF (PBF.DXA) were obtained using dual energy X-ray absorptiometry (DXA). Predictor variables included age, sex, body mass index (BMI), and waist circumference (WC). The sample was split equally and randomly into training and validation samples. Two sets of equations were evaluated in the training sample, one set using BMI and the other using WC. Both sets were tested to determine if age was a useful predictor of PBF.DXA. Cross-validation of selected model coefficients using the validation sample was evaluated using Pearson correlation coefficients, Bland and Altman limits of agreement (LOA) plots and Kappa statistics for obesity classification. Results: The selected models were both two-predictor equations: PBF.BMI2 = 10.47827 + BMI*0.98342 – 12.50670; R2 = .872 and PBF.WC2 = 2.51020 + WC*0.38914 – 13.34843; R2 = .866. Cross-validation correlation coefficients were large for both PBF.BMI2 (r = .91) and PBF.WC2 (r = .92) equations. LOA plots indicated small bias of -0.49 ± 7.5% and -0.25 ± 6.8% in PBF.BMI2 and PBF.WC2 analyses, respectively. Kappa coefficients for agreement between the two obesity classification methods were considered “substantial” for PBF.BMI2 (κ = .64) and PBF.WC2 (κ = .70) models. Conclusion: This study provides validation evidence supporting the use of BMI- and WC-based PBF prediction equations in young adult populations.
机译:背景:一个简单的预测方程式,可以通过容易获得的输入准确地预测一个人的身体脂肪百分比(PBF),这可能有益于健康和运动科学专业人员。这项研究的目的是开发和交叉验证一组预测年轻人中PBF的回归方程。方法:本研究使用了来自18至24岁国家健康调查的N = 684名参与者的子集。使用双能X射线吸收法(DXA)获得PBF的标准值(PBF.DXA)。预测变量包括年龄,性别,体重指数(BMI)和腰围(WC)。将样本均等地随机分为训练样本和验证样本。在训练样本中评估了两组方程,一组使用BMI,另一组使用WC。两组均经过测试以确定年龄是否是PBF.DXA的有用预测指标。使用Pearson相关系数,Bland和Altman一致性极限(LOA)图以及用于肥胖分类的Kapp统计数据,评估了使用验证样本对所选模型系数的交叉验证。结果:所选模型均为两个预测方程:PBF.BMI2 = 10.47827 + BMI * 0.98342 – 12.50670; R2 = .872和PBF.WC2 = 2.51020 + WC * 0.38914 – 13.34843; R 2 = .866。对于PBF.BMI2(r = .91)和PBF.WC2(r = .92)方程,交叉验证相关系数都很大。 LOA图显示,在PBF.BMI2和PBF.WC2分析中,偏差分别为-0.49±7.5%和-0.25±6.8%。对于PBF.BMI2(κ= .64)和PBF.WC2(κ= .70)模型,两种肥胖分类方法之间的一致性的Kappa系数被认为是“实质性的”。结论:这项研究提供了验证证据,支持在年轻人群中使用基于BMI和WC的PBF预测方程。

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