PREDIKSI PASIEN DENGAN PENYAKIT KARDIOVASKULAR MENGGUNAKAN RANDOM FOREST

M. Anshori, Nindynar Rikatsih, M. Haris
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Abstract

Cardiovascular disease is one of the deadliest diseases in the world. This is evidenced by data released by WHO which shows around 18 million deaths. This disease causes the cessation of the heartbeat which is the main source of life for the human body.This disease is caused by various things including an unhealthy lifestyle. Examples are consuming cigarettes and alcohol. In addition, it is also caused by other factors, namely health problems such as high blood pressure, cholesterol, diabetes, depression, or anxiety. The cardiovascular disease tends to be difficult to cure, therefore a precise and accurate prediction is needed in diagnosing patients. One method of making predictions is using machine learning techniques. In machine learning, there are various methods that can be used, one of which is the decision tree-based method, namely random forest. Before the random forest is implemented to create a model, the data is pre-processed by normalizing and applying cross-validation with k-fold = 10. The prediction results with the random forest in this study provide an accuracy of 98%. This accuracy is higher when compared to previous studies with the same dataset, namely 96.75% using the ensemble method and 91.61% with logistic regression. On this basis, it proves that the random forest can be used to predict cardiovascular disease. Key Words: cardiovascular disease, tree model, random forest, machine learning.
心血管疾病患者预测使用随机森林
心血管疾病是世界上最致命的疾病之一。世卫组织公布的数据证明了这一点,数据显示约有1800万人死亡。这种疾病导致心跳停止,而心跳是人体生命的主要来源。这种疾病是由多种因素引起的,包括不健康的生活方式。例如抽烟和喝酒。此外,它也由其他因素引起,即健康问题,如高血压、胆固醇、糖尿病、抑郁或焦虑。心血管疾病往往难以治愈,因此在诊断患者时需要精确准确的预测。进行预测的一种方法是使用机器学习技术。在机器学习中,可以使用的方法有很多种,其中一种是基于决策树的方法,即随机森林。在实现随机森林以创建模型之前,通过规范化和应用k-fold = 10的交叉验证对数据进行预处理。本研究使用随机森林的预测结果准确率为98%。与以往使用相同数据集的研究相比,这一准确率更高,使用集成方法为96.75%,使用逻辑回归为91.61%。在此基础上,证明了随机森林可以用于心血管疾病的预测。关键词:心血管疾病,树模型,随机森林,机器学习
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