基于loglog的MLP网络心脏异常预测

Syahrull Hi-Fi Syam Ahmad Jamil, Abdul Rashid Alias, Mohamad Taufik A. Rahman, F.R. Hashim, S. Shaharuddin, Mohd. Sabri
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引用次数: 2

摘要

不论性别、年龄或种族,任何人都可能得心脏病。然而,家族史可以很好地预测中度心力衰竭的可能性。很少出现早期症状的心血管异常会导致患者突然死亡。构成心跳的电活动或脉冲通常是不稳定的。在本研究中,多层感知器(MLP)网络被用作心脏问题的早期检测方法。使用Logsig作为MLP网络的激活函数,使用来自MIT-BIH数据库的心脏异常数据集来训练所选的MLP网络。根据研究,MLP网络的BR训练策略优于其他策略,均方误差(MSE)为0.0212,回归性能为0.9867。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cardiac Abnormality Prediction using Logsig-Based MLP Network
Regardless of gender, age, or ethnicity, anyone can get cardiac illness. However, the likelihood of intermediate heart failure is very well predicted by family history. Cardiovascular abnormalities, which rarely show early symptoms, cause patients to die suddenly. The electrical activity or surge that makes up the heartbeat is usually erratic. The Multilayer Perceptron (MLP) network is used in this study as an early detection method for cardiac issues. Using a number of training techniques using Logsig as the MLP network's activation function, the cardiac anomaly dataset from the MIT-BIH database is used to train the chosen MLP network. According to the study, the MLP network's BR training strategy outperformed other strategies with mean square errors (MSE) of 0.0212 and regression performance of 0.9867.
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