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Prediction of Body Mass Index: A comparative study of multiple linear regression, ANN and ANFIS models

机译:体重指数预测:多元线性回归,ANN和ANFIS模型的比较研究

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A report by the National Cholesterol Education Program’s Adult Treatment Panel III recognized metabolic syndrome as a multiplex risk factor for cardiovascular hearth disease (CHD) as well as type 2 diabetes; therefore, it is important to give these factors further clinical attention. Early diagnosis and prediction of disease, particularly the diseases related to metabolic syndrome, are increasing dramatically. On the other hand, most patients with metabolic syndrome are obese or overweight. In this regard, an accurate BMI estimation model based on metabolic syndrome components and risk factors provides facilities to control these modifiable components through various lifestyle changes. Thus, this study investigates if the people who have metabolic syndrome components and risk factors are expected to be obese. The central issue is selecting the appropriate model from a potentially large class of candidate models. Multiple Linear Regression (MLR) and two soft computing techniques, namely: Artificial Neural Networks (ANN) and Adaptive Neuro-Fuzzy Inference System (ANFIS) by considering Metabolic Syndrome components as input variables, were chosen and applied in this study. ANFIS is a particular form of ANN with a hybrid intelligent system. ANFIS benefits from the ANN’s superior learning algorithms and Fuzzy Inference Systems’ excellent estimation functions. Obviously, all three developed models are capable of predicting BMI value. The performance of these three estimation models (MLR, ANN and ANFIS) were compared based on RMSE, MAPE and R 2 . Consequently, the results indicate that the ANFIS model is more feasible than the other two models in predicting BMI.
机译:美国国家胆固醇教育计划的成人治疗小组III的一份报告认为,代谢综合症是心血管病和2型糖尿病的多重危险因素。因此,重要的是给予这些因素更多的临床注意。疾病的早​​期诊断和预测,尤其是与代谢综合征有关的疾病,正在急剧增加。另一方面,大多数患有代谢综合征的患者肥胖或超重。在这方面,基于代谢综合征成分和危险因素的准确BMI估计模型提供了通过各种生活方式变化来控制这些可改变成分的设施。因此,本研究调查了具有代谢综合征成分和危险因素的人是否肥胖。中心问题是从潜在的大量候选模型中选择合适的模型。通过将代谢综合征的成分作为输入变量,选择了多元线性回归(MLR)和两种软计算技术:人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)。 ANFIS是具有混合智能系统的ANN的一种特殊形式。 ANFIS得益于ANN出色的学习算法和Fuzzy Inference Systems出色的估算功能。显然,所有三个开发的模型都能够预测BMI值。基于RMSE,MAPE和R 2比较了这三种估计模型(MLR,ANN和ANFIS)的性能。因此,结果表明,在预测BMI方面,ANFIS模型比其他两个模型更可行。

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