Similarity Matching for Workflows in Medical Domain Using Topic Modeling

Khalid Khawaji, Ibrahim Almubark, Abdullah Almalki, Bradley W Taylor
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Abstract

The healthcare industry is a complex domain involving a range of different interests including individual patients, medical service providers, hospitals, clinics, and support organizations, including insurance, testing, and research organizations. Given increasing patient loading, accelerating expansion of domain knowledge, advent of online healthcare and the greater number of institutions now participating in medical decision making, the challenges of its management are daunting. Handling of data has already evolved from individual care providers operating in isolation to varied approaches more reliant on automated systems. Expert systems have become more welcome, but in isolation, provide limited assistance. We develop a corpus of automatically captured information using workflow technology of patient history, testing and treatment along with disease research, symptoms, and treatment. We present an automated method using topic modeling and knowledge-based similarity measurements to suggest meaningful similarities between patients and applicable diagnoses.
基于主题建模的医疗领域工作流相似度匹配
医疗保健行业是一个复杂的领域,涉及一系列不同的利益,包括个体患者、医疗服务提供商、医院、诊所和支持组织,包括保险、测试和研究组织。考虑到不断增加的患者负荷、领域知识的加速扩展、在线医疗保健的出现以及参与医疗决策的机构数量的增加,其管理面临的挑战令人生畏。数据处理已经从单个护理提供者孤立操作发展到更依赖自动化系统的各种方法。专家系统越来越受欢迎,但孤立地提供的帮助有限。我们使用患者病史、测试和治疗以及疾病研究、症状和治疗的工作流技术开发了一个自动捕获信息的语料库。我们提出了一种自动化的方法,使用主题建模和基于知识的相似性测量来建议患者和适用诊断之间有意义的相似性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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