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Incorporating Topic Assignment Constraint and Topic Correlation Limitation into Clinical Goal Discovering for Clinical Pathway Mining

机译:将主题分配约束和主题相关限制纳入临床途径挖掘的临床目标发现中

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Clinical pathways are widely used around the world for providing quality medical treatment and controlling healthcare cost. However, the expert-designed clinical pathways can hardly deal with the variances among hospitals and patients. It calls for more dynamic and adaptive process, which is derived from various clinical data. Topic-based clinical pathway mining is an effective approach to discover a concise process model. Through this approach, the latent topics found by latent Dirichlet allocation (LDA) represent the clinical goals. And process mining methods are used to extract the temporal relations between these topics. However, the topic quality is usually not desirable due to the low performance of the LDA in clinical data. In this paper, we incorporate topic assignment constraint and topic correlation limitation into the LDA to enhance the ability of discovering high-quality topics. Two real-world datasets are used to evaluate the proposed method. The results show that the topics discovered by our method are with higher coherence, informativeness, and coverage than the original LDA. These quality topics are suitable to represent the clinical goals. Also, we illustrate that our method is effective in generating a comprehensive topic-based clinical pathway model.
机译:临床途径已在世界范围内广泛用于提供优质的医疗服务和控制医疗费用。但是,专家设计的临床路径几乎无法应对医院和患者之间的差异。它要求从各种临床数据中获得更多动态和适应性的过程。基于主题的临床途径挖掘是发现简洁过程模型的有效方法。通过这种方法,潜在的狄利克雷分配(LDA)发现的潜在主题代表了临床目标。并且使用过程挖掘方法来提取这些主题之间的时间关系。但是,由于LDA在临床数据中的性能较低,因此通常不希望使用主题质量。在本文中,我们将主题分配约束和主题相关性限制合并到LDA中,以增强发现高质量主题的能力。使用两个真实世界的数据集来评估该方法。结果表明,与原始LDA相比,我们的方法发现的主题具有更高的连贯性,信息量和覆盖率。这些质量主题适合代表临床目标。此外,我们说明了我们的方法可有效地生成基于主题的综合临床途径模型。

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