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Development of predictive risk models for major adverse cardiovascular events among patients with type 2 diabetes mellitus using health insurance claims data

机译:使用健康保险理赔数据开发2型糖尿病患者重大心血管不良事件的预测风险模型

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There exist several predictive risk models for cardiovascular disease (CVD), including some developed specifically for patients with type 2 diabetes mellitus (T2DM). However, the models developed for a diabetic population are based on information derived from medical records or laboratory results, which are not typically available to entities like payers or quality of care organizations. The objective of this study is to develop and validate models predicting the risk of cardiovascular events in patients with T2DM based on medical insurance claims data. Patients with T2DM aged 50?years or older were identified from the Optum? Integrated Real World Evidence Electronic Health Records and Claims de-identified database (10/01/2006–09/30/2016). Risk factors were assessed over a 12-month baseline period and cardiovascular events were monitored from the end of the baseline period until end of data availability, continuous enrollment, or death. Risk models were developed using logistic regressions separately for patients with and without prior CVD, and for each outcome: (1) major adverse cardiovascular events (MACE; i.e., non-fatal myocardial infarction, non-fatal stroke, CVD-related death); (2) any MACE, hospitalization for unstable angina, or hospitalization for congestive heart failure; (3) CVD-related death. Models were developed and validated on 70% and 30% of the sample, respectively. Model performance was assessed using C-statistics. A total of 181,619 patients were identified, including 136,544 (75.2%) without prior CVD and 45,075 (24.8%) with a history of CVD. Age, diabetes-related hospitalizations, prior CVD diagnoses and chronic pulmonary disease were the most important predictors across all models. C-statistics ranged from 0.70 to 0.81, indicating that the models performed well. The additional inclusion of risk factors derived from pharmacy claims (e.g., use of antihypertensive, and use of antihyperglycemic) or from medical records and laboratory measures (e.g., hemoglobin A1c, urine albumin to creatinine ratio) only marginally improved the performance of the models. The claims-based models developed could reliably predict the risk of cardiovascular events in T2DM patients, without requiring pharmacy claims or laboratory measures. These models could be relevant for providers and payers and help implement approaches to prevent cardiovascular events in high-risk diabetic patients.
机译:存在几种心血管疾病(CVD)的预测风险模型,包括一些专门为2型糖尿病(T2DM)患者开发的模型。但是,为糖尿病人群开发的模型基于医疗记录或实验室结果得出的信息,而付款人或护理组织的质量通常无法获得这些信息。这项研究的目的是建立和验证基于医疗保险理赔数据的预测T2DM患者心血管事件风险的模型。从Optum?中识别出年龄在50岁以上的T2DM患者。综合的真实世界证据电子健康记录和索偿已取消标识数据库(10/01 / 2006–09 / 30/2016)。在12个月的基线期内评估风险因素,并从基线期结束直至数据可用性,持续注册或死亡结束期间监测心血管事件。使用logistic回归分别针对有或没有先前CVD的患者以及每种结局开发风险模型:(1)重大不良心血管事件(MACE;即非致命性心肌梗塞,非致命性中风,与CVD相关的死亡); (2)任何MACE,因不稳定型心绞痛而住院或因充血性心力衰竭而住院; (3)与CVD相关的死亡。建立模型并分别对70%和30%的样本进行验证。使用C统计量评估模型性能。总共鉴定出181,619例患者,其中136,544例(75.2%)没有进行过CVD,有45,075例(24.8%)有CVD史。在所有模型中,年龄,糖尿病相关的住院治疗,先前的CVD诊断和慢性肺部疾病是最重要的预测指标。 C统计量介于0.70到0.81之间,表明模型表现良好。由药房索赔(例如,使用降压药和使用降糖药)或病历和实验室指标(例如,血红蛋白A1c,尿白蛋白与肌酐之比)衍生的风险因素仅在一定程度上改善了模型的性能。开发的基于声明的模型可以可靠地预测T2DM患者发生心血管事件的风险,而无需药房声明或实验室措施。这些模型可能与提供者和付款人有关,并有助于实施预防高危糖尿病患者心血管事件的方法。

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