Classifying ischemic events using a Bayesian inference Multilayer Perceptron and input variable evaluation using automatic relevance determination

M.G. Smyrnakis, D.J. Evans
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引用次数: 7

Abstract

In this paper we present a Bayesian inference Multilayer Perceptron (MLP) which was used to classify the events of the Long Term ST Database (LTSTDB) as ischaemic or non-ischaemic episodes with an accuracy of 89.1%, sensitivity of 82.3% and specificity of 91.2% when the accuracy of the winning paper was 90.7%. The Automatic Relevance Determination (ARD) method was used to identify which of the extracted features that were used as input in the Bayesian inference MLP were the most important with respect to the models performance. ARD indicated that DeltaT, a combination of the ST deviation and the duration of the episode, inspired from Langley et al., was the most important feature for determining Ischaemic episodes, given the data. A simple MLP which had as input variable of only DeltaT was trained to verify the results of the ARD method. The classification accuracy was 85.8% on the test set. We can conclude from the results that the most important extracted feature was DeltaT.
使用贝叶斯推理多层感知器对缺血事件进行分类,并使用自动相关性确定输入变量评估
在本文中,我们提出了一个贝叶斯推理多层感知器(MLP),用于将长期ST数据库(LTSTDB)的事件分类为缺血或非缺血发作,准确度为89.1%,灵敏度为82.3%,特异性为91.2%,而获奖论文的准确性为90.7%。使用自动关联确定(ARD)方法来识别提取的特征中哪些作为贝叶斯推理MLP的输入对模型性能最重要。ARD指出,从Langley等人那里得到启发,DeltaT是ST差和发作持续时间的结合,是确定缺血发作的最重要特征。为了验证ARD方法的结果,我们训练了一个输入变量仅为delta的简单MLP。在测试集上的分类准确率为85.8%。从结果可以看出,提取的最重要的特征是delta。
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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