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Resizing artificial neural networks for automatic detection of epileptiform discharges: a comparison between Principal Component and Linear Discriminant Analysis

机译:调整人工神经网络的自动检测癫痫发出的自动检测:主成分和线性判别分析的比较

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Among the all of the different Artificial Intelligence tools, Artificial Neural Networks (ANN) are widely used for automated pattern recognition and classification process. One of its many applications in Biomedical Engineering is its use in the development of accurate and reliable methods for automatic identification of epileptiform discharges in long term electroencephalogram (EEG) recordings. Several methods have been proposed using neural networks as a classifier in which either segments of EEG signal or features extracted from them are presented as ANN input stimuli. Depending on the sampling frequency and signal size, the networks can become quite large, which would affect the performance of a system where this process is inserted. A solution to reduce the dimensionality of the networks is the use of methods such as Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) to reduce the input stimuli and consequently the size of the network. This study aims to analyze and compare the application of PCA and LDA as a tool for dimensionality reduction neural networks that use morphological descriptors to perform the automatic detection of epileptiform discharges. The average efficiency performance of the neural networks with components and LDA selected descriptors as input stimuli was, respectively, 85.58% and 82.28% which is close to the average efficiency (85.46%) achieved with the whole group of descriptors. Throughout the simulations performed in this study we could not detect any apparent relation, direct or otherwise, between the input size reduction and the neural network performance results. However, after simulations we could observe that Principal Component Analysis was better for resizing the neural networks since it had a slightly better efficiency performance at the same time that it reduced the input size in approximately 56%.
机译:在所有不同的人工智能工具中,人工神经网络(ANN)广泛用于自动模式识别和分类过程。其中许多在生物医学工程中的应用中的应用是在长期脑电图(EEG)记录中自动鉴定癫痫型排放的准确和可靠的方法。已经使用神经网络提出了几种方法作为分类器,其中从它们中提取的EEG信号或特征的段作为ANN输入刺激呈现。根据采样频率和信号大小,网络可能变得非常大,这会影响插入此过程的系统的性能。减少网络维度的解决方案是使用诸如主成分分析(PCA)和线性判别分析(LDA)的方法来减少输入刺激,从而降低网络的大小。本研究旨在分析和比较PCA和LDA作为维度减少神经网络的工具,该工具使用形态学描述符进行癫痫型排放的自动检测。与组件和LDA所选描述符的神经网络的平均效率性能分别为输入刺激,85.58%和82.28%,其与整组描述符实现的平均效率(85.46%)。在本研究中进行的整个模拟中,我们无法检测到任何明显的关系,直接或以其他方式,在输入大小减小和神经网络性能结果之间。然而,在仿真之后,我们可以观察到主要成分分析更好地调整神经网络的大小,因为它在其相同的时间内具有稍好的效率性能,即它在约56%的情况下降低了输入尺寸。

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