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Intention Mining in Medical Process: A Case Study in Trauma Resuscitation

机译:医疗过程中的意向挖掘:创伤复苏的案例研究

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In medical processes such as surgical procedures and trauma resuscitations, medical teams perform treatment activities according to underlying invisible goals or intentions. In this study, we presented an approach to uncover these intentions from observed treatment activities. Developed on top of a hierarchical hidden Markov model (H-HMM), our approach can identify multi-level intentions. To accurately infer the H-HMM, we used state splitting method with maximum a posteriori probability (MAP) as the scoring function. We evaluated our approach in both qualitative and quantitative ways, using a case study of the trauma resuscitation process. This dataset includes 123 trauma resuscitation cases collected at a level 1 trauma center. Our results show our intention mining achieved an accuracy of 86.6% in classifying medical teams' intentions. This work shows the feasibility of unsupervised intention mining of complex real-world medical processes.
机译:在诸如外科手术和创伤复苏之类的医疗过程中,医疗团队会根据潜在的隐形目标或意图进行治疗活动。在这项研究中,我们提出了一种从观察到的治疗活动中发现这些意图的方法。我们的方法是在分层隐式马尔可夫模型(H-HMM)的基础上开发的,可以识别多级意图。为了准确地推断H-HMM,我们使用具有最大后验概率(MAP)的状态拆分方法作为评分功能。我们使用创伤复苏过程的案例研究以定性和定量的方式评估了我们的方法。该数据集包括在1级创伤中心收集的123例创伤复苏案例。我们的结果表明,我们的意图挖掘在对医疗团队的意图进行分类时达到了86.6%的准确性。这项工作表明了在复杂的现实世界医疗过程中进行无监督意图挖掘的可行性。

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