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Developing data-driven clinical pathways using electronic health records: The cases of total laparoscopic hysterectomy and rotator cuff tears

机译:利用电子健康记录开发数据驱动的临床途径:全腹腔镜子宫切除术和肩袖撕裂的病例

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Objective: A clinical pathway is one of the tools used to support clinical decision making that provides a standardized care process in a specific context. The objective of this research was to develop a method for building data-driven clinical pathways using electronic health record data.Materials and methods: We proposed a matching rate-based clinical pathway mining algorithm that produces the optimal set of clinical orders for each clinical stage by employing matching rates. To validate the approach, we utilized two different datasets of deidentified inpatient records directly related to total laparoscopic hysterectomy (TLH) and rotator cuff tears (RCTs) from a hospital in South Korea. The derived data-driven clinical pathways were evaluated with knowledge-based models by health professionals using a delta analysis.Results: Two different data-driven clinical pathways, i.e., TLH and RCTs, were produced by applying the matching rate-based clinical pathway mining algorithm. We identified that there were significant differences in clinical orders between the data-driven and knowledge-based models. Additionally, the data-driven clinical pathways based on our algorithm outperformed the models by clinical experts, with average matching rates of 82.02% and 79.66%, respectively.Conclusion: The proposed algorithm will be helpful for supporting clinical decisions and directly applicable in medical practices.
机译:目的:临床途径是用于支持临床决策的工具之一,可以在特定情况下提供标准化的护理流程。这项研究的目的是开发一种使用电子健康记录数据构建数据驱动的临床路径的方法。材料和方法:我们提出了一种基于匹配率的临床路径挖掘算法,该算法可为每个临床阶段产生最佳的临床订单集通过采用匹配率。为了验证该方法,我们利用了两个不同的身份不明的住院记录数据集,这些数据与韩国一家医院的全腹腔镜子宫切除术(TLH)和肩袖撕裂症(RCT)直接相关。卫生专业人员使用基于知识的模型通过增量分析对衍生的数据驱动的临床途径进行了评估。结果:通过应用基于匹配率的临床途径挖掘,产生了两种不同的数据驱动的临床途径,即TLH和RCT。算法。我们发现,在数据驱动模型和基于知识的模型之间,临床顺序存在显着差异。此外,基于我们算法的数据驱动的临床途径优于临床专家的模型,平均匹配率分别为82.02%和79.66%。结论:该算法将有助于支持临床决策并直接应用于医学实践。

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