用集合模型预测心脏病

A. Vinora, E. Lloyds, R. Nancy Deborah, M.S. Anandha Surya, V. Krithik Deivarajan, M. MuthuVignesh
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引用次数: 1

摘要

心脏病是几十年来造成大量死亡的主要致命疾病之一。机器学习作为一个有效的领域,已经成为解决广泛领域中各种问题的关键因素。如果这种致命疾病的存在或迹象可以提前预测,医生将毫不费力地诊断出来。集成堆叠模型提供了一种结合支持向量机(SVM)和决策树(DT)模型的方法,是机器学习领域的一部分,已应用于我们的模型中,以开发智能系统来预测疾病的准确性。在各种预测方法中,SVM和DT的集成模型取得了较高的效率百分比。该系统提出了一种预测心脏病的机器学习方法,使用来自患者的重要健康因素(如年龄、性别、胆固醇、血压和血糖)的数据集。该系统能够精确预测心脏病,从而提高医疗保健水平,降低预测成本。数据集从Kaggle获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart Disease Prediction using Ensemble Model
Heart Disease is one of the prominent fatal diseases that have caused a colossal amount of deaths over decades. Machine learning an effective domain has been a key factor to solve various problems over a wide spread of areas. If the presence or the indication of such a fatal disease can be predicted in advance, it will be effortless for doctors to diagnose them. The ensemble stacked model which offers a way to combine Support Vector Machine (SVM) and Decision Tree(DT) models is part of the Machine learning domain that has been applied in our model to develop an intelligent system to predict the accuracy of the disease. The ensemble model of SVM and DT has achieved a higher percentage of efficiency among the various methods used for prediction. The proposed system presents a machine-learning approach for predicting heart disease, using a dataset of significant health factors such as age, sex, cholesterol, blood pressure, and sugar, from patients. The proposed system enables precise prediction of heart disease that enhances medical care and reduces the cost incurred for prediction. The dataset has been obtained from Kaggle.
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