Approaches to Extracting Patterns of Service Utilization for Patients with Complex Conditions: Graph Community Detection vs. Natural Language Processing Clustering

Jonas Bambi, Hanieh Sadri, Ken Moselle, Ernie Chang, Yudi Santoso, Joseph Howie, Abraham Rudnick, Lloyd T. Elliott, Alex Kuo
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Abstract

Background: As patients interact with a healthcare service system, patterns of service utilization (PSUs) emerge. These PSUs are embedded in the sparse high-dimensional space of longitudinal cross-continuum health service encounter data. Once extracted, PSUs can provide quality assurance/quality improvement (QA/QI) efforts with the information required to optimize service system structures and functions. This may improve outcomes for complex patients with chronic diseases. Method: Working with longitudinal cross-continuum encounter data from a regional health service system, various pattern detection analyses were conducted, employing (1) graph community detection algorithms, (2) natural language processing (NLP) clustering, and (3) a hybrid NLP–graph method. Result: These approaches produced similar PSUs, as determined from a clinical perspective by clinical subject matter experts and service system operations experts. Conclusions: The similarity in the results provides validation for the methodologies. Moreover, the results stress the need to engage with clinical or service system operations experts, both in providing the taxonomies and ontologies of the service system, the cohort definitions, and determining the level of granularity that produces the most clinically meaningful results. Finally, the uniqueness of each approach provides an opportunity to take advantage of the various analytical capabilities that each approach brings, which will be further explored in our future research.
提取病情复杂患者服务使用模式的方法:图形群落检测与自然语言处理聚类
背景:随着患者与医疗服务系统的互动,服务利用模式(PSUs)也随之出现。这些 PSU 蕴含在纵向跨连续性医疗服务会诊数据的稀疏高维空间中。一旦提取出来,PSUs 就能为质量保证/质量改进(QA/QI)工作提供优化服务系统结构和功能所需的信息。这可能会改善复杂慢性病患者的治疗效果。方法:利用一个地区医疗服务系统的纵向跨序列就诊数据,采用(1)图社区检测算法、(2)自然语言处理(NLP)聚类和(3)NLP-图混合方法,进行了各种模式检测分析。结果:根据临床专家和服务系统运营专家从临床角度得出的结论,这些方法产生了相似的 PSU。结论:结果的相似性为这些方法提供了验证。此外,这些结果还强调了与临床专家或服务系统运营专家合作的必要性,无论是在提供服务系统的分类法和本体论、队列定义方面,还是在确定能产生最有临床意义结果的粒度水平方面。最后,每种方法的独特性为利用每种方法带来的各种分析能力提供了机会,我们将在今后的研究中进一步探讨这些能力。
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CiteScore
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