基于模糊逻辑的慢性肾衰竭及疾病诊断可能性预测模型

M. Ajinaja, Kehinde Wiilams
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引用次数: 0

摘要

模糊逻辑是开发基于知识的医学系统用于不同任务的高度适当和有效的基础,并且已知它可以产生高度准确的结果。这类任务的例子包括辨证、儿科镰状细胞贫血患者的生存可能性、诊断和最佳选择医疗方法以及对患者的实时监测。在本文中,采用基于模糊逻辑的系统,为确定人类慢性肾衰竭/疾病检测的可能性提供预测模型的综合模拟。基于模糊的系统使用4元组记录,包括以下测试:血尿素测试,尿素清除率测试,肌酐清除率测试和估计肾小球滤液率(eGFR)。通过一名经验丰富的合格护士的帮助,从伊巴丹的一家私立医院获得了对该检查的了解,该护士也进行了国家肾脏基金会提供的相同检查。然后使用MATLAB软件开发模拟和基于规则的预测模型。本文还讨论了模糊逻辑的三个主要阶段。给出了变量模糊化、推理、模型检验和变量去模糊化的结果。这反过来又简化了使用基于模糊逻辑的模型检测慢性肾衰竭/疾病所涉及的并发症。关键词:模糊逻辑,预测模型,可能性,慢性肾脏疾病/衰竭DOI: 10.7176/JIEA/9-3-04出版日期:2019年5月31日
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Model for Likelihood of Detecting Chronic Kidney Failure and Disease Using Fuzzy Logic
Fuzzy logic is highly appropriate and valid basis for developing knowledge-based systems in medicine for different tasks and it has been known to produce highly accurate results. Examples of such tasks include syndrome differentiation, likelihood survival for sickle cell anaemia among paediatric patients, diagnosis and optimal selection of medical treatments and real time monitoring of patients. For this paper, a Fuzzy logic-based system is untaken used to provide a comprehensive simulation of a prediction model for determining the likelihood of detecting Chronic Kidney failure/diseases in humans. The Fuzzy-based system uses a 4-tuple record comprising of the following test taken: Blood Urea Test, Urea Clearance Test, Creatinine Clearance test and Estimated Glomerular Filtrate rate (eGFR). Understanding of the test was elicited from a private hospital in Ibadan through the help of an experienced and qualified nurse which also follows same test according to National Kidney Foundation. This knowledge was then used in the developing the simulated and rule-base prediction model using MATLAB software. The paper also follows the 3 major stages of Fuzzy logic. The results of fuzzification of variables, inference, model testing and defuzzification of variables was also presented. This in turn simplifies the complication involved in detecting Chronic Kidney failure/disease using Fuzzy logic based model. Keywords: Fuzzy logic, prediction model, likelihood, chronic kidney disease/failure DOI : 10.7176/JIEA/9-3-04 Publication date :May 31 st 2019
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