Kidney failure diagnosis based on case-based reasoning (CBR) method and statistical analysis

Anthony Anggrawan, Khasnur Hidjah, Qudsi S. Jihadil
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引用次数: 4

Abstract

The kidney is one of the most important organs for human beings. It mainly functions to remove the waste products of the human body metabolism. 850.000 mortalities are caused by chronic kidney failure. According to the World Health Organization (WHO), chronic kidney failure was ranked as one of the top 12 causes of death in the world. For that reason, we need to develop CBR that can help in diagnosing kidney failure. CBR is a computer reasoning system which uses pre-existing cases and knowledge to solve new problems. CBR provides solutions to new cases by looking at the previous cases which are the most similar to new case. The patients' medical records on kidney failure are used as data. Calculation of similarity between the old and new cases was measured by using a simple matching coefficient. This study used a waterfall methodology begins with information system engineering, need analysis, design coding, and testing. For coding, authors used PHP programming language and MySQL data base. Having obtained the result of CBR statistics further tested whether CBR can be wholly accepted when there is a new case. The result of the CBR experiment showed that the system can diagnose kidney failure based on the experiment done by the experts with a 80% success rate and that rate has been tested by using a statistical Spearman rank test with a significant level of 5%, resulting there are 15 symptoms that can explain the stadium levels of the kidney failure patients.
基于案例推理(CBR)方法和统计分析的肾衰竭诊断
肾脏是人体最重要的器官之一。它的主要作用是清除人体代谢产生的废物。85万人死于慢性肾衰竭。根据世界卫生组织(WHO)的数据,慢性肾衰竭被列为全球12大死亡原因之一。因此,我们需要开发有助于诊断肾衰竭的CBR。CBR是一种利用已有案例和知识来解决新问题的计算机推理系统。CBR通过查看与新案例最相似的先前案例,为新案例提供解决方案。以患者肾衰竭病历为资料。采用简单的匹配系数计算新旧案例的相似度。本研究使用瀑布方法,从信息系统工程、需求分析、设计编码和测试开始。在编码方面,作者使用PHP编程语言和MySQL数据库。获得了CBR统计结果,进一步检验了在出现新病例时是否可以完全接受CBR。CBR实验结果表明,系统可以根据专家的实验诊断肾衰竭,成功率为80%,采用统计学Spearman秩检验,显著性水平为5%,有15种症状可以解释肾衰竭患者的运动水平。
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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