Vigo Family and Community Medicine and Nursing Teaching Unit, Health Area of Vigo, SERGAS, Vigo, Spain.
I-Saúde Group, South Galicia Health Research Institute (Instituto de Investigación Sanitaria Galicia Sur), SERGAS-UVIGO, Vigo, Spain.
Eur J Pediatr. 2024 Sep;183(9):3885-3895. doi: 10.1007/s00431-024-05596-2. Epub 2024 Jun 19.
The assessment of body fat of children in primary care requires consideration of the dynamic changes in height, weight, lean mass, and fat mass during childhood growth. To achieve this, we aim to develop a predictive equation based on anthropometric values, with optimal diagnostic utility. This is a cross-sectional observational study, involving schoolgoers aged 11-17 years in the Vigo metropolitan area. Out of 10,747 individuals, 577 were randomly recruited.
age, sex, ethnicity/country of origin, weight, height, 8 skinfolds, 3 diameters, 7 perimeters, and 85% percentile of body fat mass as the gold standard. Generalized additive regression was selected by cross-validation and compared using receiver operating characteristic curves (ROC curves). Sensitivity, specificity, positive and negative predictive values, true positive and true negative values, false positive and false negative values, accuracy, and positive and negative likelihood ratios were calculated. Two models were identified. The optimal model includes sex, weight, height, leg perimeter, and arm perimeter, with sensitivity of 0.93 (0.83-1.00), specificity of 0.91 (0.83-0.96), accuracy of 0.91 (0.84-0.96), and area under the curve (AUC) of 0.957 (0.928-0.986). The second model includes sex, age, and body mass index, with sensitivity of 0.93 (0.81-1.00), specificity of 0.90 (0.80-0.97), accuracy of 0.90 (0.82-0.96), and an AUC of 0.944 (0.903-0.984).
Two predictive models, with the 85th percentile of fat mass as the gold standard, built with basic anthropometric measures, show very high diagnostic utility parameters. Their calculation is facilitated by a complementary online calculator.
• In routine clinical practice, mainly in primary care, BMI is used to determine overweight and obesity. This index has its weaknesses in the assessment of children.
• We provide a calculator whose validated algorithm, through the determination of fat mass by impedanciometry, makes it possible to determine the risk of overweight and obesity in the community setting, through anthropometric measurements, providing a new practical, accessible and reliable model that improves the classification of overweight and obesity in children with respect to that obtained by determining BMI.
在初级保健中评估儿童体脂需要考虑儿童生长过程中身高、体重、瘦体重和体脂的动态变化。为此,我们旨在开发一种基于人体测量值的预测方程,并具有最佳的诊断效用。这是一项横断面观察性研究,涉及维哥大都市区 11-17 岁的在校学生。在 10747 人中,随机招募了 577 人。
年龄、性别、种族/原籍国、体重、身高、8 个体脂厚度、3 个直径、7 个周长和 85%体脂量作为金标准。通过交叉验证选择广义加性回归,并通过接收者操作特征曲线(ROC 曲线)进行比较。计算了灵敏度、特异性、阳性和阴性预测值、真阳性和真阴性值、假阳性和假阴性值、准确性、阳性和阴性似然比。确定了两种模型。最优模型包括性别、体重、身高、腿围和臂围,灵敏度为 0.93(0.83-1.00),特异性为 0.91(0.83-0.96),准确性为 0.91(0.84-0.96),曲线下面积(AUC)为 0.957(0.928-0.986)。第二种模型包括性别、年龄和体重指数,灵敏度为 0.93(0.81-1.00),特异性为 0.90(0.80-0.97),准确性为 0.90(0.82-0.96),AUC 为 0.944(0.903-0.984)。
两种预测模型均以体脂第 85 百分位数为金标准,使用基本人体测量指标构建,显示出非常高的诊断效用参数。它们的计算通过一个补充的在线计算器来辅助。
在常规临床实践中,主要在初级保健中,BMI 用于确定超重和肥胖。该指数在评估儿童方面存在其局限性。
我们提供了一个计算器,其经过验证的算法通过阻抗法确定体脂量,使得能够通过人体测量值在社区环境中确定超重和肥胖的风险,提供了一种新的实用、可及和可靠的模型,相对于通过确定 BMI 获得的模型,改善了儿童超重和肥胖的分类。