Survey on Knowledge Representation Models in Healthcare

Information Pub Date : 2024-07-26 DOI:10.3390/info15080435
Batoul Msheik, Mehdi Adda, H. Mcheick, M. Dbouk
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Abstract

Knowledge representation models that aim to present data in a structured and comprehensible manner have gained popularity as a research focus in the pursuit of achieving human-level intelligence. Humans possess the ability to understand, reason and interpret knowledge. They acquire knowledge through their experiences and utilize it to carry out various actions in the real world. Similarly, machines can also perform these tasks, a process known as knowledge representation and reasoning. In this survey, we present a thorough analysis of knowledge representation models and their crucial role in information management within the healthcare domain. We provide an overview of various models, including ontologies, first-order logic and rule-based systems. We classify four knowledge representation models based on their type, such as graphical, mathematical and other types. We compare these models based on four criteria: heterogeneity, interpretability, scalability and reasoning in order to determine the most suitable model that addresses healthcare challenges and achieves a high level of satisfaction.
医疗保健领域知识表示模型调查
知识表示模型旨在以结构化和可理解的方式呈现数据,在追求实现人类智能水平的过程中,知识表示模型已成为研究的热点。人类拥有理解、推理和解释知识的能力。他们通过自己的经验获取知识,并利用这些知识在现实世界中执行各种行动。同样,机器也可以完成这些任务,这一过程被称为知识表示和推理。在本调查中,我们将全面分析知识表示模型及其在医疗保健领域信息管理中的关键作用。我们概述了各种模型,包括本体、一阶逻辑和基于规则的系统。我们根据图形、数学和其他类型对四种知识表示模型进行了分类。我们根据四个标准对这些模型进行比较:异构性、可解释性、可扩展性和推理性,从而确定最适合的模型,以应对医疗保健领域的挑战,并达到较高的满意度。
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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