医学
决策树
逻辑回归
糖尿病
并发症
随机森林
肾病
重症监护医学
疾病
视网膜病变
机器学习
人工智能
外科
内科学
计算机科学
内分泌学
作者
Ye Shiren,Ye Jiangnan,YE Xin-hua,Xinye Ni
标识
DOI:10.1016/j.diabres.2024.111560
摘要
With growing concerns over complications in diabetes sufferers, this study sought to develop an interpretable machine learning model to offer enhanced diagnostic and treatment recommendations.We assessed coronary heart disease, diabetic nephropathy, diabetic retinopathy, and fatty liver disease using logistic regression, decision tree, random forest, and CatBoost algorithms. The SHAP algorithm was employed to elucidate the model's predictions, offering a more in-depth understanding of influential features.The CatBoost model notably outperformed other algorithms in AUC, achieving an average AUC of 90.47 % for the four complications. Through SHAP analysis and visualization, we provided clear and actionable insights into risk factors, enabling better complication risk assessment.We introduced an innovative, interpretable complication risk model for people with diabetes. This not only offers a potent tool for healthcare professionals but also empowers sufferers with clearer self-assessment capabilities, encouraging earlier preventive actions. Further studies will underscore the model's clinical applicability.
科研通智能强力驱动
Strongly Powered by AbleSci AI