Prediction and classification of obesity risk based on a hybrid metaheuristic machine learning approach.

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers in Big Data Pub Date : 2024-09-30 eCollection Date: 2024-01-01 DOI:10.3389/fdata.2024.1469981
Zarindokht Helforoush, Hossein Sayyad
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Abstract

Introduction: As the global prevalence of obesity continues to rise, it has become a major public health concern requiring more accurate prediction methods. Traditional regression models often fail to capture the complex interactions between genetic, environmental, and behavioral factors contributing to obesity.

Methods: This study explores the potential of machine-learning techniques to improve obesity risk prediction. Various supervised learning algorithms, including the novel ANN-PSO hybrid model, were applied following comprehensive data preprocessing and evaluation.

Results: The proposed ANN-PSO model achieved a remarkable accuracy rate of 92%, outperforming traditional regression methods. SHAP was employed to analyze feature importance, offering deeper insights into the influence of various factors on obesity risk.

Discussion: The findings highlight the transformative role of advanced machine-learning models in public health research, offering a pathway for personalized healthcare interventions. By providing detailed obesity risk profiles, these models enable healthcare providers to tailor prevention and treatment strategies to individual needs. The results underscore the need to integrate innovative machine-learning approaches into global public health efforts to combat the growing obesity epidemic.

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基于混合元启发式机器学习方法的肥胖风险预测与分类。
导言:随着全球肥胖症发病率的持续上升,肥胖症已成为一个重大的公共卫生问题,需要更准确的预测方法。传统的回归模型往往无法捕捉到导致肥胖的遗传、环境和行为因素之间复杂的相互作用:本研究探讨了机器学习技术在改善肥胖风险预测方面的潜力。在对数据进行全面预处理和评估后,应用了各种监督学习算法,包括新型 ANN-PSO 混合模型:结果:所提出的 ANN-PSO 模型准确率高达 92%,优于传统的回归方法。采用 SHAP 分析特征重要性,更深入地了解了各种因素对肥胖风险的影响:讨论:研究结果凸显了先进的机器学习模型在公共卫生研究中的变革性作用,为个性化医疗干预提供了途径。通过提供详细的肥胖风险概况,这些模型使医疗服务提供者能够根据个人需求制定预防和治疗策略。研究结果强调,有必要将创新的机器学习方法纳入全球公共卫生工作,以应对日益严重的肥胖症流行。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
期刊最新文献
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