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OrderRex: clinical order decision support and outcome predictions by data-mining electronic medical records

机译:OrderRex:通过电子病历数据挖掘来进行临床订单决策支持和结果预测

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摘要

>Objective: To answer a “grand challenge” in clinical decision support, the authors produced a recommender system that automatically data-mines inpatient decision support from electronic medical records (EMR), analogous to Netflix or Amazon.com’s product recommender.>Materials and Methods: EMR data were extracted from 1 year of hospitalizations (>18K patients with >5.4M structured items including clinical orders, lab results, and diagnosis codes). Association statistics were counted for the ∼1.5K most common items to drive an order recommender. The authors assessed the recommender’s ability to predict hospital admission orders and outcomes based on initial encounter data from separate validation patients.>Results: Compared to a reference benchmark of using the overall most common orders, the recommender using temporal relationships improves precision at 10 recommendations from 33% to 38% (P < 10−10) for hospital admission orders. Relative risk-based association methods improve inverse frequency weighted recall from 4% to 16% (P < 10−16). The framework yields a prediction receiver operating characteristic area under curve (c-statistic) of 0.84 for 30 day mortality, 0.84 for 1 week need for ICU life support, 0.80 for 1 week hospital discharge, and 0.68 for 30-day readmission.>Discussion: Recommender results quantitatively improve on reference benchmarks and qualitatively appear clinically reasonable. The method assumes that aggregate decision making converges appropriately, but ongoing evaluation is necessary to discern common behaviors from “correct” ones.>Conclusions: Collaborative filtering recommender algorithms generate clinical decision support that is predictive of real practice patterns and clinical outcomes. Incorporating temporal relationships improves accuracy. Different evaluation metrics satisfy different goals (predicting likely events vs. “interesting” suggestions).
机译:>目的::为应对临床决策支持中的“巨大挑战”,作者制作了一个推荐系统,该系统自动从电子病历(EMR)中挖掘住院决策支持数据,类似于Netflix或Amazon.com的产品推荐者。>材料和方法: EMR数据是从住院1年中提取的(1.8万名患者中有5.4M以上结构化项目,包括临床订单,实验室结果和诊断代码)。协会统计了约1.5K个最常见的商品,以推动推荐商品。作者评估了推荐人根据来自不同验证患者的初次遭遇数据预测医院入院顺序和结局的能力。>结果:与使用总体最常见命令的参考基准相比,推荐人使用时间关系将住院建议的10条建议的准确性从33%提高到38%(P <10 -10 )。基于相对风险的关联方法将逆向频率加权召回率从4%提高到16%(P <10 −16 )。该框架得出的预测接收器操作特征区域在30天死亡率下的曲线(c统计量)为0.84,ICU生命支持需要1周为0.84,出院1周为0.80,再住院30天为0.68。 >讨论:推荐结果在参考基准上得到了定量的改善,并且在质量上看来在临床上是合理的。该方法假定总体决策制定能够适当收敛,但是需要进行持续评估才能区分“正确”行为的常见行为。>结论:协作过滤推荐算法可生成可预测实际实践模式的临床决策支持,临床结果。合并时间关系可以提高准确性。不同的评估指标满足不同的目标(预测可能发生的事件与“有趣”的建议)。

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