使用上下文主题建模揭示卫生保健系统学术景观的趋势

IF 1.3 3区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Muhammad Inaam ul haq, Qianmu Li
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引用次数: 0

摘要

医疗保健系统包括提供服务的个人、团体、机构和资源的参与,以满足个人、社区和人口在健康方面的要求。与医疗保健系统在疾病、治疗、干预、药物和临床实践指南方面日益激烈的辩论同时,世界目前正在讨论医疗保健行业、技术视角和医疗保健成本。为了全面了解医疗保健系统研究范式,我们提供了一种新的上下文主题建模方法,将CombinedTM模型与我们的医疗保健Bert联系起来,以发现医疗保健领域的上下文主题。这项研究发现了60个上下文主题,其中15个主题是最热门的,包括智能医疗监测系统、压力和焦虑的原因和影响,以及医疗成本估计,12个主题最冷门。此外,33个专题显示出微不足道的趋势。我们进一步调查了主题之间的各种聚类和相关性,探索了主题间距离图,这为理解这一科学领域的研究结构增加了深度。当前的研究增强了先前的主题建模方法,该方法从特定学科的角度检查医疗保健文献。它进一步扩展了现有的主题建模方法,这些方法在主题发现过程中不包含上下文信息,通过基于转换器的模型创建句子嵌入向量来添加上下文信息。我们还使用了语料库调整、均值池技术和拥抱脸工具。与最先进的模型(LSA、LDA和Ber-Topic)相比,我们的方法给出了更高的一致性分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revealing the trends in the academic landscape of the health care system using contextual topic modeling
The health care system encompasses the participation of individuals, groups, agencies, and resources that offer services to address the requirements of the person, community, and population in terms of health. Parallel to the rising debates on the healthcare systems in relation to diseases, treatments, interventions, medication, and clinical practice guidelines, the world is currently discussing the healthcare industry, technology perspectives, and healthcare costs. To gain a comprehensive understanding of the healthcare systems research paradigm, we offered a novel contextual topic modeling approach that links up the CombinedTM model with our healthcare Bert to discover the contextual topics in the domain of healthcare. This research work discovered 60 contextual topics among them fifteen topics are the hottest which include smart medical monitoring systems, causes, and effects of stress and anxiety, and healthcare cost estimation and twelve topics are the coldest. Moreover, thirty-three topics are showing insignificant trends. We further investigated various clusters and correlations among the topics exploring inter-topic distance maps which add depth to the understanding of the research structure of this scientific domain. The current study enhances the prior topic modeling methodologies that examine the healthcare literature from a particular disciplinary perspective. It further extends the existing topic modeling approaches that do not incorporate contextual information in the topic discovery process adding contextual information by creating sentence embedding vectors through transformers-based models. We also utilized corpus tuning, the mean pooling technique, and the hugging face tool. Our method gives a higher coherence score as compared to the state-of-the-art models (LSA, LDA, and Ber Topic).
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来源期刊
Data Intelligence
Data Intelligence COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
6.50
自引率
15.40%
发文量
40
审稿时长
8 weeks
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