首页> 外文期刊>BMC Medical Informatics and Decision Making >Development, validation, and proof-of-concept implementation of a two-year risk prediction model for undiagnosed atrial fibrillation using common electronic health data (UNAFIED)
【24h】

Development, validation, and proof-of-concept implementation of a two-year risk prediction model for undiagnosed atrial fibrillation using common electronic health data (UNAFIED)

机译:使用普通电子健康数据(未收获)未确诊心房颤动的两年风险预测模型的开发,验证和概念证明。

获取原文
           

摘要

Many patients with atrial fibrillation (AF) remain undiagnosed despite availability of interventions to reduce stroke risk. Predictive models to date are limited by data requirements and theoretical usage. We aimed to develop a model for predicting the 2-year probability of AF diagnosis and implement it as proof-of-concept (POC) in a production electronic health record (EHR). We used a nested case–control design using data from the Indiana Network for Patient Care. The development cohort came from 2016 to 2017 (outcome period) and 2014 to 2015 (baseline). A separate validation cohort used outcome and baseline periods shifted 2?years before respective development cohort times. Machine learning approaches were used to build predictive model. Patients?≥?18?years, later restricted to age?≥?40?years, with at least two encounters and no AF during baseline, were included. In the 6-week EHR prospective pilot, the model was silently implemented in the production system at a large safety-net urban hospital. Three new and two previous logistic regression models were evaluated using receiver-operating characteristics. Number, characteristics, and CHA2DS2-VASc scores of patients identified by the model in the pilot are presented. After restricting age to?≥?40?years, 31,474 AF cases (mean age, 71.5?years; female 49%) and 22,078 controls (mean age, 59.5?years; female 61%) comprised the development cohort. A 10-variable model using age, acute heart disease, albumin, body mass index, chronic obstructive pulmonary disease, gender, heart failure, insurance, kidney disease, and shock yielded the best performance (C-statistic, 0.80 [95% CI 0.79–0.80]). The model performed well in the validation cohort (C-statistic, 0.81 [95% CI 0.8–0.81]). In the EHR pilot, 7916/22,272 (35.5%; mean age, 66?years; female 50%) were identified as higher risk for AF; 5582 (70%) had CHA2DS2-VASc score?≥?2. Using variables commonly available in the EHR, we created a predictive model to identify 2-year risk of developing AF in those previously without diagnosed AF. Successful POC implementation of the model in an EHR provided a practical strategy to identify patients who may benefit from interventions to reduce their stroke risk.
机译:尽管有可用于减少卒中风险的干预措施,但许多心房颤动(AF)的患者仍未结束。迄今为止的预测模型受数据要求和理论使用的限制。我们旨在制定一种模型,以预测AF诊断的2年概率,并将其实施为生产电子健康记录(EHR)中的概念证明(POC)。我们使用来自印第安纳网络的数据进行患者护理的嵌套案例控制设计。发展队列来自2016年至2017年(成果期)和2014年至2015年(基线)。单独的验证队员使用的结果和基线期间转移2?几年以前的发展队列队列。机器学习方法用于构建预测模型。患者?≥?18?年,后来估计年龄?≥?40?年,包括至少两个遇到和基线期间的AF。在6周的EHR潜在飞行员中,该模型在大型安全网市医院的生产系统中默默地实施。使用接收器操作特性评估三种新的和两个先前的逻辑回归模型。提出了由飞行员模型确定的患者的数量,特征和CHA2DS2-VASC评分。在限制年龄后?≥?40?年,31,474岁案例(平均年龄,71.5岁;女性49%)和22,078个控制(平均年龄,59.5?年;女性61%)包括发展队列。 10变量模型使用年龄,急性心脏病,白蛋白,体重指数,慢性阻塞性肺病,性别,心力衰竭,保险,肾病和休克产生最佳性能(C统计,0.80 [95%CI 0.79] -0.80])。该模型在验证队列中表现良好(C统计,0.81 [95%CI 0.8-0.81])。在EHR Pilot,7916 / 22,272(35.5%;平均年龄,66岁以下;女50%)被确定为AF的风险更高; 5582(70%)有CHA2DS2-VASC评分吗?≥?2。使用ehr中常用的变量,我们创建了一种预测模型,以识别在未经诊断的AF诊断的情况下在此期间开发AF的2年风险。成功的PoC实施模型在EHR中实施了实际策略,以确定可能从干预措施中受益以减少卒中风险的患者。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号