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Predicting Major Adverse Cardiovascular Events in Asian Type 2 Diabetes Patients With Lasso-Cox Regression

机译:预测亚洲2型糖尿病患者的主要不良心血管事件套索COX回归

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摘要

Background: South-East Asia has seen a dramatic increase in type 2 diabetes (T2D). Risk prediction models for Major adverse cardiovascular events (MACE) identify patients who may benefit most from intensive prevention strategies. Existing risk prediction models for T2D were developed mainly in Caucasian populations, limiting their generalizability to Asian populations. We developed a Lasso-Cox regression model to predict the 5-year risk of incident MACE in Asian patients with T2DM using data from the largest diabetes registry in Singapore. Methodology: The diabetes registry contained public healthcare data from 9 primary healthcare centers, 4 hospitals and 3 national specialty centers. Data from 120,131 T2D subjects without MACE at baseline, from 2008 to 2018, were used for model development and validation. Patients with less than 5 years of follow-up data were excluded. Lasso-Cox, a semi-parametric variant of the Cox Proportional Hazard Model with l1-regularization, was used to predict individual survival distribution of incident MACE. A total of 69 features within electronic health records, including demographic data, vital signs, laboratory tests, and prescriptions for blood pressure, lipid and glucose-lowering medication were supplied to the model. Regression shrinkage and selection via the lasso method was used to identify variables associated with incident MACE. Identified variables were used to generate individual survival probability curves. Incident MACE was defined as the first occurrence of nonfatal myocardial infarction, nonfatal stroke, and CV disease-related death. Results: A total of 12,535 (10.4%) subjects developed MACE between 2008 and 2018. Model performance was evaluated by time-dependent concordance index and Brier score at 1, 2 and 5 years. The results of 5-fold cross validation shows that the model displayed good discrimination, achieving time-dependent C-statistics of 0.746±0.005, 0.742±0.003 and 0.738±0.002 at 1, 2 and 5 years respectively. The model demonstrated low Brier scores of 0.0355±0.0004, 0.0601±0.0011, 0.104±0.004 at 1, 2 and 5 years respectively, indicating good calibration. Factors most predictive of MACE were age and a history of hypertension and hyperlipidemia. Conclusions: We have developed a risk prediction model for MACE in Asian T2D using a large Singaporean T2D cohort, which can be used to support clinical decision-making. The individual survival probability estimates achieve an average C-statistics of 0.742 and are well-calibrated at 1, 2 and 5 years.
机译:背景:东南亚患有2型糖尿病(T2D)的急剧增加。主要不良心血管事件(MACE)的风险预测模型识别可能从密集预防策略中受益的患者。 T2D的现有风险预测模型主要以高加索人群开发,限制了其对亚洲人口的普遍性。我们开发了一个卢斯 - 考克索回归模型,以预测亚洲患者的5年发生的术术风险,使用来自新加坡最大的糖尿病登记处的数据。方法论:糖尿病登记处包含来自9个主要医疗中心,4家医院和3个国家专业中心的公共医疗保健数据。从2008年到2018年的基线上没有MACE的120,131 T2D受试者用于模型开发和验证。排除了不到5年后续数据的患者。 Lasso-Cox是一种具有L1-Ralalization的Cox比例危险模型的半参数变体,用于预测事件术士的单独存活分布。在模型中,共有69个电子健康记录中的功能,包括人口统计数据,生命体征,实验室测试和血压,血脂和降低药物的处方。通过Lasso方法的回归收缩和选择用于识别与事件钉钉相关的变量。鉴定的变量用于产生单独的存活概率曲线。事件蒙地被定义为第一次出现非常见心肌梗死,非缺乏中风和CV病相关死亡。结果:共有12,535名(10.4%)受试者在2008年至2018年间发育迈空。模型表现通过时间依赖的一致性指数和雷尔得分在1,2和5年内评估。 5倍交叉验证的结果表明,该模型显示出良好的歧视,达到0.746±0.005,0.742±0.003和0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.738±0.002。该模型分别展示了0.0355±0.0004,0.0601±0.0011,0.04±0.004,分别为0.0601±0.004,分别为0.104±0.004,表明校准良好。最预测术术的因素是年龄和高血压和高脂血症的历史。结论:使用大型新加坡T2D队列,我们​​已经开发了亚洲T2D股价的风险预测模型,可用于支持临床决策。个体存活概率估计达到0.742的平均C统计,并在1,2和5年间校准。

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