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DYNAMICALLY EVOLVING CLINICAL PRACTICES AND IMPLICATIONS FOR PREDICTING MEDICAL DECISIONS

机译:动态发展临床实践和对预测医学决策的影响

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Automatically data-mining clinical practice patterns from electronic health records (EHR) can enable prediction of future practices as a form of clinical decision support (CDS). Our objective is to determine the stability of learned clinical practice patterns over time and what implication this has when using varying longitudinal historical data sources towards predicting future decisions. We trained an association rule engine for clinical orders (e.g., labs, imaging, medications) using structured inpatient data from a tertiary academic hospital. Comparing top order associations per admission diagnosis from training data in 2009 vs. 2012, we find practice variability from unstable diagnoses with rank biased overlap(RBO)<0.35 (e.g., pneumonia) to stable admissions for planned procedures (e.g., chemotherapy, surgery) with comparatively high RBO>0.6. Predicting admission orders for future (2013) patients with associations trained on recent (2012) vs. older (2009) data improved accuracy evaluated by area under the receiver operating characteristic curve (ROC-AUC) 0.89 to 0.92, precision at ten (positive predictive value of the top ten predictions against actual orders) 30% to 37%, and weighted recall (sensitivity) at ten 2.4% to 13%, (P<10~(-10)). Training with more longitudinal data (2009-2012) was no better than only using recent (2012) data. Secular trends in practice patterns likely explain why smaller but more recent training data is more accurate at predicting future practices.
机译:从电子健康记录(EHR)自动数据挖掘临床实践模式可以使未来实践预测为临床决策支持(CD)的形式。我们的目标是确定学习临床实践模式的稳定性随着时间的推移,并且在利用不同纵向历史数据来源迈向预测未来决策时,这有什么意义。我们培训了使用来自第三学术医院的结构性住院数据的临床订单(例如,实验室,成像,药物)的关联规则引擎。比较2009年培训数据每次入学诊断的最高订单关联与2012年,我们发现从不稳定诊断的实践可变性与等级偏差重叠(RBO)<0.35(例如,肺炎)以稳定的计划程序核算(例如化疗,手术)具有相对高的RBO> 0.6。预测未来的入学订单(2013年)近期(2012年)培训的协会患者与较旧的(2009)数据提高了由接收器操作特性曲线(Roc-AUC)的面积评估的精度0.89至0.92,精度为10(阳性预测)对实际订单的前十个预测值的价值)30%至37%,加权召回(敏感性)为10 2.4%至13%,(P <10〜( - 10))。具有更多纵向数据(2009-2012)的培训不仅仅是使用最近(2012)数据。实践模式的世俗趋势可能解释为什么更小但最近的训练数据更准确地预测未来的实践。

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