基于混合梯度升压的心力衰竭预测系统

Gargee Athalye, Atharva Sarde, Mayur Badgujar, Vijay Gaikwad, S. Sondkar
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引用次数: 0

摘要

由于脂质紊乱(高胆固醇血症)、肥胖(肥胖)、甘油三酯水平增加(脂肪酸酯化成甘油的脂质)、高血压等因素,心脏病在当今世界很普遍。据估计,每年有近1800万人的生命受到各种心脏病的影响。这些疾病的早期发现可以帮助挽救一些生命。在该系统中,使用梯度增强检测和决策树的组合来估计心力衰竭的预测。在特征处理中采用并行处理的方法,加快了结果的处理速度,获得了最佳的性能。使用生成和判别方法验证其他算法和伪码的结果。本文使用来自加州大学欧文分校智能系统存储库的数据文件对结果进行测试。从几个实验中观察到,在f1分数、召回率和准确性方面,与其他预测器相比,它提供了最佳的性能。梯度Boost的ROC曲线对于低假阳性提供了更高的偏差。Gradient Boost的ROC值为0.919,准确率为92%,F1得分为0.928,召回率为0.934。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Gradient Boost based Heart Failure Prediction System
Heart diseases are prevalent in today's world due to many factors like lipid disorder (hypercholesterolemia), corpulence (obesity), increase in triglycerides levels (lipids obtained from esterification fatty acids to glycerol), hypertension, etc. It is estimated that nearly 18 million lives are affected yearly due to various heart diseases. Early detection of such diseases could help save several lives. In the proposed system, heart failure prediction is estimated using the combination of Gradient boost detection and decision trees. The parallel handling approach is used for feature processing to speed up the results and for optimal performance. The generation and discrimination approach are used to verify the outcomes concerning other algorithms and pseudo-codes. This paper uses the data file from the University of California, Irvine Intelligent Systems Repository to test the results. It is observed from several experiments that it provides optimal performance compared to the remaining predictors in the context of f1 score, recall, and accuracy. The ROC curve of Gradient Boost provides a higher deviation for low false positives. The Gradient Boost shows a 0.919 ROC value and 92 % of accuracy with an F1 score of 0.928 and a recall of 0.934.
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