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Predicting high cost patients with type 2 diabetes mellitus using hospital databases in a multi-ethnic Asian population

机译:使用医院数据库在亚洲多族裔人群中预测高成本的2型糖尿病患者

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Data analytics is playing an important role in health care because of the potential actionable insights that can be derived from individual-level medical records in the electronic health records (EHRs). This paper explores the utilization of EHR data for predictive analytics at an academic health system in Singapore to facilitate patient stratification for intensive case management among individuals with type 2 diabetes mellitus (T2DM). Though a multidisciplinary team approach, we developed a risk score for high health care utilizers with EHRs. A backward stepwise variable selection model building approach was performed to develop a risk score using the multiple logistic regression model and Akaike Information Criterion where the variables from 2010 was used to predict the top 10% health care spenders in 2011. The list of predictors in the risk score included sociodemographic, biochemistry, comorbidity and healthcare utilization variables. The Area under the Curve (AUC) of the risk score was 0.708, which was higher than having total cost in 2010 as the only predictor (AUC = 0.658). The absence of biochemistry measurements could either be a proxy of no regular follow-up for managing T2DM condition if their regular measurements were part of the clinical practice for T2DM, or be a proxy of a favorable perception of patient's medical condition otherwise. A close collaboration across multiple disciplines is important to ensure a holistic interpretation of a risk score.
机译:数据分析在医疗保健中起着重要的作用,因为可以从电子医疗记录(EHR)中的个人级别的医疗记录中获得潜在的可行见解。本文探讨了利用EHR数据在新加坡的学术医疗系统中进行预测分析,以促进患者分层以加强2型糖尿病(T2DM)患者的病例管理。通过跨学科团队方法,我们为拥有EHR的高级医疗保健从业者开发了风险评分。使用多元逻辑回归模型和Akaike信息准则,进行了向后逐步变量选择模型建立方法,以开发风险评分,其中使用2010年的变量来预测2011年医疗保健支出的前10%。风险评分包括社会人口统计学,生物化学,合并症和医疗保健利用变量。风险分数的曲线下面积(AUC)为0.708,高于以2010年总成本为唯一预测因子​​(AUC = 0.658)。如果没有生物化学测量,则可以定期管理T2DM疾病,如果他们的常规测量是T2DM临床实践的一部分,则可以不进行常规随访,否则可以替代对患者病情的良好理解。跨多个学科的密切合作对于确保对风险评分的整体解释非常重要。

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