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Predictive Model Based on Health Data Analysis for Risk of Readmission in Disease-Specific Cohorts

机译:基于健康数据分析的预测模型,疾病特定群体入伍风险

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Background:Intervention planning to reduce 30-day readmission post-acute myocardial infarction (AMI) in an environment of resource scarcity can be improved by readmission prediction score. The aim of study is to derive and validate a prediction model based on routinely collected hospital data for identification of risk factors for all-cause readmission within zero to 30 days post discharge from AMI.MethodsOur study includes 2,849 AMI patient records (January 2005 to December 2014) from a tertiary care facility in India. EMR with ICD-10 diagnosis, admission, pathological, procedural and medication data is used for model building. Model performance is analyzed for different combination of feature groups and diabetes sub-cohort. The derived models are evaluated to identify risk factors for readmissions.Results:The derived model using all features has the highest discrimination in predicting readmission, with AUC as 0.62; (95 percent confidence interval) in internal validation with 70/30 split for derivation and validation. For the sub-cohort of diabetes patients (1359) the discrimination is slightly better with AUC 0.66; (95 percent CI;). Some of the positively associated predictive variables, include age group 80-90, medicine class administered during index admission (Anti-ischemic drugs, Alpha 1 blocker, Xanthine oxidase inhibitors), additional procedure in index admission (Dialysis). While some of the negatively associated predictive variables, include patient demography (Male gender), medicine class administered during index admission (Betablocker, Anticoagulant, Platelet inhibitors, Anti-arrhythmic).Conclusions:Routinely collected data in the hospital's clinical and administrative data repository can identify patients at high risk of readmission following AMI, potentially improving AMI readmission rate.
机译:背景:入学计划减少资源稀缺环境中急性心肌梗死(AMI)的干预计划可以通过入院预测得分改善。研究的目的是基于常规收集的医院数据获得并验证预测模型,用于识别全归还入院的危险因素,从AMI中的释放后30天内出院。包括2,849名AMI患者记录(2005年1月至12月2014年)来自印度的三级护理设施。 EMR与ICD-10诊断,入院,病理,程序和药物数据用于模型建筑。分析模型性能,针对特征组和糖尿病子队列的不同组合进行分析。评估派生模型以确定Readmissions的危险因素。结果:使用所有功能的派生模型在预测入读时具有最高的识别,AUC为0.62; (95%的置信区间)在内部验证中,70/30分裂用于推导和验证。对于糖尿病患者的副群(1359),AUC 0.66的歧视略微好; (95%CI;)。一些正相关的预测变量,包括年龄组80-90,在指数入院期间施用的药类(抗缺血药物,α1阻断剂,黄嘌呤氧化酶抑制剂),指数入院(透析)中的附加程序。虽然一些负相关的预测变量包括患者人口或男性性别),但在指数入院期间给药(Betablocker,抗凝血剂,血小板抑制剂,抗心律失常)。结论:经常收集医院的临床和行政数据储存库的数据在AMI后识别患者的高风险,潜在地提高AMI再入率。

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