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Data-Mining Electronic Medical Records for Clinical Order Recommendations: Wisdom of the Crowd or Tyranny of the Mob?

机译:临床订单建议的数据挖掘电子病历:人群的智慧还是暴民的暴政?

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摘要

Uncertainty and variability is pervasive in medical decision making with insufficient evidence-based medicine and inconsistent implementation where established knowledge exists. Clinical decision support constructs like order sets help distribute expertise, but are constrained by knowledge-based development. We previously produced a data-driven order recommender system to automatically generate clinical decision support content from structured electronic medical record data on >19K hospital patients. We now present the first structured validation of such automatically generated content against an objective external standard by assessing how well the generated recommendations correspond to orders referenced as appropriate in clinical practice guidelines. For example scenarios of chest pain, gastrointestinal hemorrhage, and pneumonia in hospital patients, the automated method identifies guideline reference orders with ROC AUCs (c-statistics) (0.89, 0.95, 0.83) that improve upon statistical prevalence benchmarks (0.76, 0.74, 0.73) and pre-existing human-expert authored order sets (0.81, 0.77, 0.73) (P<10−30 in all cases). We demonstrate that data-driven, automatically generated clinical decision support content can reproduce and optimize top-down constructs like order sets while largely avoiding inappropriate and irrelevant recommendations. This will be even more important when extrapolating to more typical clinical scenarios where well-defined external standards and decision support do not exist.
机译:不确定性和可变性普遍存在于医疗决策中,其中基于证据的药物不足,并且在存在已有知识的情况下实施不一致。诸如订单集之类的临床决策支持结构有助于分配专业知识,但受到基于知识的开发的约束。我们以前曾生产过一种数据驱动的订单推荐系统,该系统可根据超过19K例患者的结构化电子病历数据自动生成临床决策支持内容。现在,我们通过评估生成的建议与临床实践指南中适当引用的订单的对应程度,来针对客观的外部标准对这种自动生成的内容进行首次结构化验证。例如,在医院患者的胸痛,胃肠道出血和肺炎的情况下,该自动方法可通过ROC AUC(c统计量)(0.89、0.95、0.83)识别指南参考顺序,从而改善统计患病率基准(0.76、0.74、0.73) )和预先存在的人类专家编写的订单集(0.81、0.77、0.73)(在所有情况下,P <10 −30 )。我们证明了数据驱动的,自动生成的临床决策支持内容可以重现和优化自上而下的结构(如订单集),同时很大程度上避免了不恰当和不相关的建议。当推断出不存在明确定义的外部标准和决策支持的更典型的临床情况时,这将变得尤为重要。

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