Analysis of Stroke Classification Using Random Forest Method

M. F. Banjar, Ira Irawati, Fitriyani Umar, Lilis Nur Hayati
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Abstract

Stroke is a disease in which the sufferer experiences or experiences a rupture of a blood vessel in the brain so that the brain does not get a blood supply that provides oxygen. Patients who suffer from stroke will experience cognitive disorders ranging from decreased consciousness, visuospatial disorders, non-verbal learning disorders, communication disorders, and reduced levels of patient attention. Data from the World Stroke Organization shows that there are 13.7 million new stroke cases every year, and about 5.5 million deaths occur due to stroke. This research aims to analyze the attributes of any variables that affect the classification of strike disease and to test the performance of stroke classification in the form of accuracy, precision, recall, and f-measure. The method used is a random forest using a tree, namely 50, 100, 200, and 500. The classification of stroke is divided into stroke and no stroke. The data used is 5110, divided into 70% training data and 30% testing data. The results showed that the performance of a random forest using 100 trees was better than using 50, 200, and 500 trees, with an accuracy value of 86.82%, a precision of 15.76%, a recall of 38.15%, and an f1-score 22.30% after doing SMOTE ..
基于随机森林方法的笔画分类分析
中风是一种患者经历或经历大脑血管破裂,导致大脑无法获得提供氧气的血液供应的疾病。中风患者会出现认知障碍,包括意识下降、视觉空间障碍、非语言学习障碍、沟通障碍和患者注意力水平下降。世界中风组织的数据显示,每年新增1370万例中风病例,约550万人死于中风。本研究旨在分析影响罢工疾病分类的任何变量的属性,并以准确性、准确性、召回率和f-measure的形式测试中风分类的性能。所使用的方法是使用树的随机森林,即50、100、200和500。中风的分类分为中风和无中风。使用的数据为5110,分为70%的训练数据和30%的测试数据。结果表明,使用100棵树的随机森林的性能优于使用50棵、200棵和500棵树,在进行SMOTE后,准确率为86.82%,精确度为15.76%,召回率为38.15%,f1得分为22.30%。。
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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