Solomon Dahlak Daniel, Khan Shakir, Garg Sonia, Gupta Gaurav, Almjally Abrar, Alabduallah Bayan Ibrahimm, Alsagri Hatoon S, Ibrahim Mandour Mohamed, Abdallah Alsadig Mohammed Adam
Yogananda School of AI Computers and Data Sciences, Shoolini University, Solan 173229, India.
College of Computer and Information Sciences, Imam Mohammad Ibn Saud Islamic University (IMSIU), Riyadh 11432, Saudi Arabia.
Diagnostics (Basel). 2023 Aug 7;13(15):2610. doi: 10.3390/diagnostics13152610.
Because it is associated with most multifactorial inherited diseases like heart disease, hypertension, diabetes, and other serious medical conditions, obesity is a major global health concern. Obesity is caused by hereditary, physiological, and environmental factors, as well as poor nutrition and a lack of exercise. Weight loss can be difficult for various reasons, and it is diagnosed via BMI, which is used to estimate body fat for most people. Muscular athletes, for example, may have a BMI in the obesity range even when they are not obese. Researchers from a variety of backgrounds and institutions devised different hypotheses and models for the prediction and classification of obesity using different approaches and various machine learning techniques. In this study, a majority voting-based hybrid modeling approach using a gradient boosting classifier, extreme gradient boosting, and a multilayer perceptron was developed. Seven distinct machine learning algorithms were used on open datasets from the UCI machine learning repository, and their respective accuracy levels were compared before the combined approaches were chosen. The proposed majority voting-based hybrid model for prediction and classification of obesity that was achieved has an accuracy of 97.16%, which is greater than both the individual models and the other hybrid models that have been developed.
由于肥胖与大多数多因素遗传性疾病相关,如心脏病、高血压、糖尿病和其他严重疾病,因此它是全球主要的健康问题。肥胖是由遗传、生理、环境因素以及营养不良和缺乏运动引起的。由于各种原因,减肥可能会很困难,肥胖通过体重指数(BMI)来诊断,BMI用于估计大多数人的体脂。例如,肌肉发达的运动员即使不肥胖,其BMI也可能处于肥胖范围内。来自不同背景和机构的研究人员使用不同的方法和各种机器学习技术,为肥胖的预测和分类设计了不同的假设和模型。在本研究中,开发了一种基于多数投票的混合建模方法,该方法使用梯度提升分类器、极端梯度提升和多层感知器。在UCI机器学习库的开放数据集上使用了七种不同的机器学习算法,并在选择组合方法之前比较了它们各自的准确率水平。所实现的基于多数投票的肥胖预测和分类混合模型的准确率为97.16%,高于单个模型和已开发的其他混合模型。