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An explainable XGBoost–based approach towards assessing the risk of cardiovascular disease in patients with Type 2 Diabetes Mellitus

机译:一种可解释的XGBoost基方法,旨在评估2型糖尿病患者心血管疾病风险的方法

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Cardiovascular Disease (CVD) is an important cause of disability and death among individuals with Diabetes Mellitus (DM). International clinical guidelines for the management of Type 2 DM (T2DM) are founded on primary and secondary prevention and favor the evaluation of CVD-related risk factors towards appropriate treatment initiation. CVD risk prediction models can provide valuable tools for optimizing the frequency of medical visits and performing timely preventive and therapeutic interventions against CVD events. The integration of explainability modalities in these models can enhance human understanding on the reasoning process, maximize transparency and embellish trust towards the models’ adoption in clinical practice. The aim of the present study is to develop and evaluate an explainable personalized risk prediction model for the fatal or non-fatal CVD incidence in T2DM individuals. An explainable approach based on the eXtreme Gradient Boosting (XGBoost) and the Tree SHAP (SHapley Additive exPlanations) method is deployed for the calculation of the 5-year CVD risk and the generation of individual explanations on the model’s decisions. Data from the 5-year follow up of 560 patients with T2DM are used for development and evaluation purposes. The obtained results (AUC=71.13%) indicate the potential of the proposed approach to handle the unbalanced nature of the used dataset, while providing clinically meaningful insights about the model’s decision process.
机译:心血管疾病(CVD)是糖尿病(DM)的个体残疾和死亡的重要原因。 2 DM(T2DM)管理的国际临床指南均基于初级和二级预防,并有利于评估CVD相关的风险因素对适当的治疗开始。 CVD风险预测模型可以提供有价值的工具,用于优化医疗访问的频率,并对CVD事件进行及时预防性和治疗干预措施。这些模型中可解释的方式的整合可以提高人类的理解,可以在推理过程中,最大化透明度和对临床实践中的模型采用的透明度和装饰信任。本研究的目的是为T2DM个体的致命或非致命的CVD发病率开发和评估可解释的个性化风险预测模型。一种可解释的方法,基于极端梯度升压(XGBoost)和树形(福芙添加剂解释)方法,用于计算5年的CVD风险以及对模型决策的个人解释的产生。 5年后560例T2DM患者的56名患者的数据用于开发和评估目的。所获得的结果(AUC = 71.13%)表示提出的方法处理使用数据集的不平衡性质的潜力,同时为模型的决策过程提供临床有意义的见解。

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