Hybrid Majority Voting: Prediction and Classification Model for Obesity.
Dahlak Daniel SolomonShakir KhanSonia GargGaurav GuptaAbrar AlmjallyBayan Ibrahimm AlabduallahHatoon S AlsagriMandour Mohamed IbrahimAlsadig Mohammed Adam AbdallahPublished in: Diagnostics (Basel, Switzerland) (2023)
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.
Keyphrases
- weight loss
- machine learning
- insulin resistance
- metabolic syndrome
- weight gain
- type diabetes
- bariatric surgery
- high fat diet induced
- roux en y gastric bypass
- deep learning
- artificial intelligence
- gastric bypass
- global health
- glycemic control
- big data
- body mass index
- adipose tissue
- blood pressure
- healthcare
- cardiovascular disease
- minimally invasive
- obese patients
- body composition
- skeletal muscle
- rna seq