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An electronic health record based model predicts statin adherence, LDL cholesterol, and cardiovascular disease in the United States Military Health System

机译:基于电子健康记录的模型可预测美国军事卫生系统中他汀类药物的依从性,LDL胆固醇和心血管疾病

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摘要

HMG-CoA reductase inhibitors (or “statins”) are important and commonly used medications to lower cholesterol and prevent cardiovascular disease. Nearly half of patients stop taking statin medications one year after they are prescribed leading to higher cholesterol, increased cardiovascular risk, and costs due to excess hospitalizations. Identifying which patients are at highest risk for not adhering to long-term statin therapy is an important step towards individualizing interventions to improve adherence. Electronic health records (EHR) are an increasingly common source of data that are challenging to analyze but have potential for generating more accurate predictions of disease risk. The aim of this study was to build an EHR based model for statin adherence and link this model to biologic and clinical outcomes in patients receiving statin therapy. We gathered EHR data from the Military Health System which maintains administrative data for active duty, retirees, and dependents of the United States armed forces military that receive health care benefits. Data were gathered from patients prescribed their first statin prescription in 2005 and 2006. Baseline billing, laboratory, and pharmacy claims data were collected from the two years leading up to the first statin prescription and summarized using non-negative matrix factorization. Follow up statin prescription refill data was used to define the adherence outcome (> 80 percent days covered). The subsequent factors to emerge from this model were then used to build cross-validated, predictive models of 1) overall disease risk using coalescent regression and 2) statin adherence (using random forest regression). The predicted statin adherence for each patient was subsequently used to correlate with cholesterol lowering and hospitalizations for cardiovascular disease during the 5 year follow up period using Cox regression. The analytical dataset included 138 731 individuals and 1840 potential baseline predictors that were reduced to 30 independent EHR “factors”. A random forest predictive model taking patient, statin prescription, predicted disease risk, and the EHR factors as potential inputs produced a cross-validated c-statistic of 0.736 for classifying statin non-adherence. The addition of the first refill to the model increased the c-statistic to 0.81. The predicted statin adherence was independently associated with greater cholesterol lowering (correlation = 0.14, p < 1e-20) and lower hospitalization for myocardial infarction, coronary artery disease, and stroke (hazard ratio = 0.84, p = 1.87E-06). Electronic health records data can be used to build a predictive model of statin adherence that also correlates with statins’ cardiovascular benefits.
机译:HMG-CoA还原酶抑制剂(或“他汀”)是重要的常用药物,可降低胆固醇并预防心血管疾病。开处方一年后,将近一半的患者停止服用他汀类药物,这会导致胆固醇升高,心血管疾病风险增加以及因过度住院而产生的费用。识别哪些患者不坚持长期他汀类药物治疗的风险最高,是朝着个性化干预措施改善依从性迈出的重要一步。电子健康记录(EHR)是一种日益普遍的数据来源,难以分析,但具有产生更准确的疾病风险预测的潜力。这项研究的目的是建立基于EHR的他汀类药物依从性模型,并将该模型与接受他汀类药物治疗的患者的生物学和临床结局联系起来。我们从军事健康系统收集了EHR数据,该数据维护了现役,退休人员和获得医疗福利的美国武装部队军人的行政管理数据。数据是从2005年和2006年开具第一他汀类药物处方的患者那里收集的。基线计费,实验室和药房索赔数据是从开具第一个他汀类药物处方的两年开始收集的,并使用非负矩阵分解法进行了汇总。后续他汀类药物处方补充数据用于定义依从性结果(涵盖80%以上的天数)。然后从该模型中得出的后续因素用于建立交叉验证的预测模型,这些模型包括:1)使用合并回归和2)他汀类药物依从性(使用随机森林回归)的总体疾病风险。随后使用Cox回归将每位患者的他汀类药物预测依从性与胆固醇降低和心血管疾病住院期间的5年随访期间相关联。分析数据集包括138 731个个体和1840个潜在的基线预测因子,这些预测因子被简化为30个独立的EHR“因素”。以患者,他汀类药物处方,预测的疾病风险和EHR因子为潜在输入的随机森林预测模型产生的交叉验证的c统计量为0.736,用于对他汀类药物的不依从性进行分类。在模型中添加第一个笔芯后,c统计量增加到0.81。预计他汀类药物的依从性与降低胆固醇(相关性= 0.14,p <1e-20)和降低心肌梗塞,冠状动脉疾病和中风的住院率(危险比= 0.84,p = 1.87E-06)无关。电子病历数据可用于建立他汀类药物依从性的预测模型,该模型也与他汀类药物的心血管益处相关。

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