Latent Dirichlet Allocation for Medical Records Topic Modeling: Systematic Literature Review

M. Mustakim, Retantyo Wardoyo, K. Mustofa, G. Rahayu, Ida Rosyidah
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引用次数: 2

Abstract

The fast growth of Electronic Medical Records (EMR) has improved its functionalities and increase its use in secondary functions. EMRs can be used to improve the quality and capacity of physicians and medical students. It is done by using EMRs as a data source for researches and learning. A lot of studies have been done in this area. Various methods are also proposed. One of the methods used in medical records retrieval is Latent Dirichlet Allocation (LDA). Thus, research on LDA for medical records has also been carried out quite a lot. Unfortunately, those researches are still scattered and make it difficult to know the state of the arts of utilizing LDA in the medical records field. Our research intends to explore the studies of the LDA method progress in the medical field. To better present responsible literature study, our research used Systematic Literature Review as a research methodology. The literature review was conducted on studies from 2015 to 2021. The result of the literature review showed that the LDA method had been used in several research topics. And most of the literature used private datasets in their experiments. Some researchers also added a modification in the LDA method. Even though the LDA method proved a great method in medical fields, it has several limitations that need to be overcome.
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病历主题建模的潜在狄利克雷分配:系统文献综述
电子病历(EMR)的快速发展改进了其功能,并增加了其在辅助功能中的使用。电子病历可用于提高医生和医学生的素质和能力。它是通过使用电子病历作为研究和学习的数据源来完成的。在这个领域已经做了很多研究。还提出了各种方法。病历检索中常用的方法之一是潜狄利克雷分配(Latent Dirichlet Allocation, LDA)。因此,对病案LDA的研究也开展了不少。不幸的是,这些研究仍然是分散的,很难了解在病历领域利用LDA的技术现状。本研究旨在探讨LDA方法在医学领域的研究进展。为了更好地展现负责任的文献研究,本研究采用系统文献综述作为研究方法。文献综述选取2015 - 2021年的研究。文献综述的结果表明,LDA方法已在多个研究课题中得到应用。大多数文献在他们的实验中使用了私人数据集。一些研究人员还对LDA方法进行了修改。尽管LDA方法在医学领域被证明是一种伟大的方法,但它有一些需要克服的局限性。
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