Intelligent Analysis of Some Factors Accompanying Hepatitis B

Bouharati Khaoula, Bouharati Imene, Guenifi Wahiba, Gasmi Abdelkader, Laouamri Slimane
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引用次数: 2

Abstract

Background. It is evident that the B hepatitis disease is favored by several risk factors. Among the factors analyzed in this study, gender, diabetes, arterial hypertension, and body mass index. The age of the first infection is related to these variables. As the system is very complex, because other factors can have an effect and which are ignored, this study processes data using artificial intelligence techniques. Method. The study concerns 30 patients diagnosed at our service of the university hospital of Setif in Algeria. The study period runs from 2011 to 2020. The risk factors are considered imprecise and therefore fuzzy. A fuzzy inference system is applied in this study. The data is fuzzyfied and a rule base is established. Results. As the principles of fuzzy logic deal with the uncertain, this allowed us to take care of this imprecision and complexity. The established rule base maps the inputs, which are the risk factors, to hepatitis as the output variable. Conclusion. Several factors promote hepatitis B. The physiological system differs from one individual to another. Also, the weight of each factor is ignored. Given this complexity, the principles of fuzzy logic proposed are adequate. Once the system has been completed, it allows the random introduction of values at the input to automatically read the result at the output. This tool can be considered as a prevention system in the appearance and and establish a typical profile of people likely to be affected by hepatitis.
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乙型肝炎伴发因素智能分析
背景。很明显,B型肝炎有几个危险因素。本研究分析的因素包括性别、糖尿病、动脉高血压和体重指数。第一次感染的年龄与这些变量有关。由于系统非常复杂,由于其他因素可能会产生影响而被忽略,因此本研究使用人工智能技术处理数据。方法。这项研究涉及在阿尔及利亚塞提夫大学医院接受我们服务的30名患者。研究时间从2011年到2020年。风险因素被认为是不精确的,因此是模糊的。本研究采用了模糊推理系统。对数据进行模糊化处理,建立规则库。结果。由于模糊逻辑的原理处理不确定性,这使我们能够处理这种不精确性和复杂性。已建立的规则库将输入(即风险因素)映射到作为输出变量的肝炎。结论。多种因素可促进乙肝的发展。每个人的生理系统不同。同时,忽略每个因素的权重。考虑到这种复杂性,所提出的模糊逻辑原理是足够的。一旦系统完成,它允许在输入处随机引入值,以自动读取输出处的结果。该工具在外观上可被视为一种预防系统,并可建立可能受肝炎影响的人群的典型概况。
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