Stroke Disease Analysis and Classification Using Decision Tree and Random Forest Methods

D. Puspitasari, Al Fath Riza Kholdani, Adani Dharmawati, M. E. Rosadi, Windha Mega Pradnya Dhuhita
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引用次数: 3

Abstract

A stroke is a medical emergency that occurs when blood flow to the brain is blocked or decreased, depriving brain tissue of oxygen and nutrients. Stroke is the world's second leading cause of death, according to the World Health Organization (WHO). Stroke patients die within the first year of their illness. To reduce the risk of stroke, simple and effective tools are required. The goal of this study was to look into the classification of stroke potential and come up with a simple and reliable model. The Kaggle database provided the stroke prediction data set, which was based on input criteria such as gender, age, various illnesses, and smoking status. To determine the prediction of the construction model, decision trees and random forest classification methods were utilized. The independent variables determining the incidence of stroke were determined to be age (AUC 0.85), hypertension (AUC 0.62), blood sugar level (AUC 0.61), history of heart disease (0.56), married status (0.60), and body mass index (BMI) (AUC 0.56). Age, hypertension, blood sugar level, and BMI were all valid, with a random forest method accuracy of 98.90 percent and decision tree method accuracy of 95.90 percent.
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基于决策树和随机森林方法的中风疾病分析与分类
中风是一种医疗紧急情况,当流向大脑的血液被阻塞或减少时,就会发生大脑组织的氧气和营养物质被剥夺。据世界卫生组织(WHO)称,中风是世界上第二大死亡原因。中风患者在发病的第一年就会死亡。为了降低中风的风险,需要使用简单有效的工具。本研究的目的是探讨脑卒中的分类,并提出一个简单可靠的模型。Kaggle数据库提供中风预测数据集,该数据集基于输入标准,如性别、年龄、各种疾病和吸烟状况。为了确定构建模型的预测效果,采用了决策树和随机森林分类方法。确定脑卒中发生率的自变量为年龄(AUC 0.85)、高血压(AUC 0.62)、血糖水平(AUC 0.61)、心脏病史(0.56)、婚姻状况(0.60)和体重指数(BMI) (AUC 0.56)。年龄、高血压、血糖水平和BMI均有效,随机森林法的准确率为98.90%,决策树法的准确率为95.90%。
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