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Prediction of Abnormal Body Fat Percentage by Anthropometrics Parameters Using Receiver Operating Characteristic Curve

机译:使用接收机操作特性曲线预测人体计量参数异常体脂百分比

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The World Health Organization has defined obesity ‟as the abnormal or excessive fat accumulation that represents a risk to health". Although obesity is characterized by an excessive amount of body fat, it is commonly measured using body mass index which is unable to differentiate between elevated body fat content and increased lean mass. The indicator that best predicts obesity is the one that quantify adipose tissue and, therefore, the estimation of body fat percentage (BFP). Skinfolds have been used to measure the BFP, based on the Siri and Brozec formula. There are no official cut-off points for BFP, as the associated data is relatively insufficient worldwide. Studies agreed that fewer than 25% in men and 30% in women are commonly used as normal BFP. The aim of this study is to evaluate the capability of the anthropometrics variables to discriminate subjects with abnormal BFP. A database of 1053 subjects with 28 anthropometrics measures was used. Area under the receiver operating characteristic curves (AUCROC), sensibility (SEN), specificity (SPE) and negative predictive value (NPV) was calculated to evaluate the predictive ability of anthropometric variables measured. Three circumferences (Arm, waist and hip) and four skinfolds (calf, suprailiac, abdominal and thigh) were the variables with the best abnormal BFP detection capability, with an AUCROC>0.800 (SEN>0.760 and SPE>0.673). Having a high probability of detecting subjects with normal BFP (NPV>0.970). Easier variables to acquire, such as waist, arm, and hip circumferences, could be used in low-income countries where it is not easy to have a plicometer.
机译:世界卫生组织已经定义了肥胖症“作为对健康风险的异常或过度脂肪积累”。虽然肥胖的特征在于过量的体脂,但它通常使用不能区分升高的体重指数来测量身体脂肪含量和瘦肿大增加。最佳预测肥胖的指标是量化脂肪组织的指标,因此,估计体脂百分比(BFP)。已根据SIRI和Brozec来测量BFP的肤色公式。BFP没有官方截止点,因为相关数据在全球范围内相对不足。同意的研究同意,男性少于25%,女性常用于正常的BFP。本研究的目的是评估人体计量变量的能力,以区分BFP异常的鉴别受试者。使用了1053个受试者的数据库,具有28个人的28个人测量措施。接收器下的区域操作CH曲线(AUC roc ),计算敏感性(SEN),特异性(SPE)和负预测值(NPV)以评估测量的人体测量变量的预测能力。三个圆周(手臂,腰部和臀部)和四个肤色(小腿,上额外循环,腹部和大腿)是具有最佳异常异常的BFP检测能力,带有AUC的变量 roc > 0.800(SEN> 0.760和SPE> 0.673)。具有常规BFP(NPV> 0.970)的检测受试者的高可能性。更容易获取的变量,例如腰部,臂和臀部周期,可以在低收入国家中使用,在那里它不容易拥有电平计。

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