Expert System for Early Diagnosis of Heart Disease Using the Random Forest Method

Yogi Prawira Putra, D. C. Khrisne, I. M. A. Suyadnya
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引用次数: 1

Abstract

In Indonesia, coronary heart disease continues to grow. However, the efforts to prevention it can still be done by diagnosing the initial symptoms caused by using an expert system. This study was designed to build an expert system application to diagnose early coronary disease by random forest methods. The application interface was built using the PHP programming language using framework bootstrap, and uses the python programming language to build a random forest. To make an early diagnosis of coronary heart disease, a decision tree was built by training data from the UCI Dataset Machine Learning Repository using the random forest method. Followed by patient classification data that has been collected through 13 questions to get the diagnosis. The diagnosis results were normal, stadium 1, stadium 2, stadium 3 and stadium 4. Based on the tests that had been carried out, the application was able to provide results in accordance with the sample data collected using a confusion matrix resulting in an accuracy of 92.25% +/- 0.62 with 70% precision, remember 46%, which obtained a score of f0,5 72%.
基于随机森林方法的心脏病早期诊断专家系统
在印度尼西亚,冠心病继续增长。然而,预防它的努力仍然可以通过使用专家系统诊断引起的初始症状来完成。本研究旨在建立一个应用随机森林方法诊断早期冠心病的专家系统。应用程序接口使用PHP编程语言使用框架引导构建,并使用python编程语言构建随机森林。为了对冠心病进行早期诊断,利用UCI Dataset Machine Learning Repository中的训练数据,采用随机森林方法构建决策树。其次是收集到的患者分类数据,通过13个问题得到诊断。诊断结果正常,1号、2号、3号、4号体育场。根据已经进行的测试,该应用程序能够提供与使用混淆矩阵收集的样本数据相一致的结果,准确度为92.25% +/- 0.62,精度为70%,记住46%,其得分为f0,5 72%。
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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