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Development and Preliminary Evaluation of a Prototype of a Learning Electronic Medical Record System

机译:学习型电子病历系统原型的开发和初步评估

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摘要

Electronic medical records (EMRs) are capturing increasing amounts of data per patient. For clinicians to efficiently and accurately understand a patient’s clinical state, better ways are needed to determine when and how to display EMR data. We built a prototype system that records how physicians view EMR data, which we used to train models that predict which EMR data will be relevant in a given patient. We call this approach a Learning EMR (LEMR). A physician used the prototype to review 59 intensive care unit (ICU) patient cases. We used the data-access patterns from these cases to train logistic regression models that, when evaluated, had AUROC values as high as 0.92 and that averaged 0.73, supporting that the approach is promising. A preliminary usability study identified advantages of the system and a few concerns about implementation. Overall, 3 of 4 ICU physicians were enthusiastic about features of the prototype.
机译:电子病历(EMR)正在捕获每位患者越来越多的数据。为了使临床医生有效,准确地了解患者的临床状况,需要更好的方法来确定何时以及如何显示EMR数据。我们构建了一个原型系统来记录医生如何查看EMR数据,我们使用该系统来训练模型,这些模型预测哪些EMR数据将与给定患者相关。我们称这种方法为学习EMR(LEMR)。一位医师使用该原型检查了59例重症监护病房(ICU)患者病例。我们使用这些案例中的数据访问模式来训练逻辑回归模型,该模型在评估时具有AUROC值高达0.92,平均值为0.73,证明该方法是有前途的。初步的可用性研究确定了该系统的优势以及对实施的一些担忧。总体而言,ICU的4位医生中有3位对原型的功能充满热情。

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