Recognizing cardiovascular risk from photoplethysmogram signals using ELM

Shobitha S, Sandhya R, Niranjana Krupa, M. Alauddin, M. Ali
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引用次数: 6

Abstract

In this paper, photoplethysmogram (PPG) signals, 30 healthy and 30 pathological, are classified as `healthy' or `at risk' of cardiovascular diseases (CVDs) using extreme learning machine (ELM), a supervised learning algorithm. Additionally, two other supervised learning algorithms, backpropagation and support vector machine are used for classification to compare their results with that of ELM and hence validate its performance. Based on the results obtained, ELM gives the best accuracy, a sensitivity of 89.33% and a specificity of 90.33%, with minimum training time and minimum number of features as input.
利用ELM从光容积图信号识别心血管风险
在本文中,使用极限学习机(ELM),一种监督学习算法,将30个健康和30个病理的光容积脉搏图(PPG)信号分类为心血管疾病(cvd)的“健康”或“危险”。此外,还使用了另外两种监督学习算法反向传播和支持向量机进行分类,将其结果与ELM进行比较,从而验证其性能。结果表明,在训练时间最短、特征输入数量最少的情况下,ELM的准确率最高,灵敏度为89.33%,特异性为90.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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