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Predicting body fat percentage based on gender, age and BMI by using artificial neural networks

机译:使用人工神经网络根据性别,年龄和BMI预测体脂百分比

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摘要

In the human body, the relation between fat and fat-free mass (muscles, bones etc.) is necessary for the diagnosis of obesity and prediction of its comorbidities. Numerous formulas, such as Deurenberg et al., Gallagher et al., Jackson and Pollock, Jackson et al. etc., are available to predict body fat percentage (BF%) from gender (GEN), age (AGE) and body mass index (BMI). These formulas are all fairly similar and widely applicable, since they provide an easy, low-cost and non-invasive prediction of BF%. This paper presents a program solution for predicting BF% based on artificial neural network (ANN). ANN training, validation and testing are done by randomly divided dataset that includes 2755 subjects: 1332 women (GEN=0) and 1423 men (GEN=1), with AGE from 18 to 88 y and BMI from 16.60 to 64.60 kg/m2. BF% was estimated by using Tanita bioelectrical impedance measurements (Tanita Corporation, Tokyo, Japan). ANN inputs are: GEN, AGE and BMI, and output is BF%. The predictive accuracy of our solution is 80.43%. The main goal of this paper is to promote a new approach to predicting BF% that has same complexity and costs but higher predictive accuracy than above-mentioned formulas.
机译:在人体中,脂肪与无脂肪物质(肌肉,骨骼等)之间的关系对于诊断肥胖症和预测其合并症是必要的。许多公式,例如Deurenberg等,Gallagher等,Jackson和Pollock,Jackson等。等可用于根据性别(GEN),年龄(AGE)和体重指数(BMI)预测体脂百分比(BF%)。这些公式都非常相似并且可以广泛应用,因为它们提供了简单,低成本且无创的BF%预测。本文提出了一种基于人工神经网络(ANN)预测BF%的程序解决方案。 ANN培训,验证和测试是通过随机划分的数据集完成的,该数据集包括2755位受试者:年龄在18至88岁之间,年龄从18.88至88.60 kg / m2的1332位女性(GEN = 0)和1423位男性(GEN = 1)。 BF%通过使用Tanita生物电阻抗测量法(Tanita Corporation,东京,日本)估算。 ANN输入为:GEN,AGE和BMI,输出为BF%。我们解决方案的预测准确性为80.43%。本文的主要目的是提出一种新的BF%预测方法,该方法具有相同的复杂度和成本,但预测精度比上述公式高。

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