Explainable artificial intelligence for investigating the effect of lifestyle factors on obesity

Tarek Khater , Hissam Tawfik , Balbir Singh
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Abstract

Obesity is a critical health issue associated with severe medical conditions. To enhance public health and well-being, early prediction of obesity risk is crucial. This study introduces an innovative approach to predicting obesity levels using explainable artificial intelligence, focusing on lifestyle factors rather than traditional BMI measures. Our best-performing machine learning model, free from BMI parameters, achieved 86.5% accuracy using the Random Forest algorithm. Explainability techniques, including SHAP, PDP and feature importance are employed to gain insights into lifestyle factors’ impact on obesity. Key findings indicate the importance of meal frequency and technology usage. This work demonstrates the significance of lifestyle factors in obesity risk and the power of model-agnostic methods to uncover these relationships.

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用于研究生活方式因素对肥胖症影响的可解释人工智能
肥胖是一个严重的健康问题,与严重的医疗状况有关。为了增进公众健康和福祉,及早预测肥胖风险至关重要。本研究介绍了一种利用可解释人工智能预测肥胖程度的创新方法,重点关注生活方式因素而非传统的体重指数衡量标准。我们使用随机森林算法建立了不含 BMI 参数的最佳机器学习模型,准确率达到 86.5%。我们采用了可解释性技术,包括SHAP、PDP和特征重要性,以深入了解生活方式因素对肥胖的影响。主要研究结果表明了进餐频率和技术使用的重要性。这项工作证明了生活方式因素在肥胖风险中的重要性,以及模型识别方法揭示这些关系的能力。
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