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基于新型随机森林模型结合网格搜索优化的癫痫脑电检测分析

Detection Analysis of Epileptic EEG Using a Novel Random Forest Model Combined With Grid Search Optimization.

作者信息

Wang Xiashuang, Gong Guanghong, Li Ni, Qiu Shi

机构信息

State Key Laboratory of Virtual Reality Technology and Systems, Beihang University, Beijing, China.

Automation Science and Electrical Engineering, Beihang University, Beijing, China.

出版信息

Front Hum Neurosci. 2019 Feb 21;13:52. doi: 10.3389/fnhum.2019.00052. eCollection 2019.

Abstract

In the automatic detection of epileptic seizures, the monitoring of critically ill patients with time varying EEG signals is an essential procedure in intensive care units. There is an increasing interest in using EEG analysis to detect seizure, and in this study we aim to get a better understanding of how to visualize the information in the EEG time-frequency feature, and design and train a novel random forest algorithm for EEG decoding, especially for multiple-levels of illness. Here, we propose an automatic detection framework for epileptic seizure based on multiple time-frequency analysis approaches; it involves a novel random forest model combined with grid search optimization. The short-time Fourier transformation visualizes seizure features after normalization. The dimensionality of features is reduced through principal component analysis before feeding them into the classification model. The training parameters are optimized using grid search optimization to improve detection performance and diagnostic accuracy by in the recognition of three different levels epileptic of conditions (healthy subjects, seizure-free intervals, seizure activity). Our proposed model was used to classify 500 samples of raw EEG data, and multiple cross-validations were adopted to boost the modeling accuracy. Experimental results were evaluated by an accuracy, a confusion matrix, a receiver operating characteristic curve, and an area under the curve. The evaluations indicated that our model achieved the more effective classification than some previous typical methods. Such a scheme for computer-assisted clinical diagnosis of seizures has a potential guiding significance, which not only relieves the suffering of patient with epilepsy to improve quality of life, but also helps neurologists reduce their workload.

摘要

在癫痫发作的自动检测中,利用时变脑电信号对重症患者进行监测是重症监护病房的一项重要程序。利用脑电分析来检测癫痫发作的研究兴趣日益浓厚,在本研究中,我们旨在更好地理解如何可视化脑电时频特征中的信息,并设计和训练一种用于脑电解码的新型随机森林算法,特别是针对多级疾病。在此,我们提出一种基于多种时频分析方法的癫痫发作自动检测框架;它涉及一种结合网格搜索优化的新型随机森林模型。短时傅里叶变换在归一化后可视化癫痫发作特征。在将特征输入分类模型之前,通过主成分分析降低特征维度。使用网格搜索优化来优化训练参数,以提高在识别三种不同癫痫病情(健康受试者、无癫痫发作间期、癫痫发作活动)时的检测性能和诊断准确性。我们提出的模型用于对500个原始脑电数据样本进行分类,并采用多次交叉验证来提高建模精度。通过准确率、混淆矩阵、接收器操作特征曲线和曲线下面积对实验结果进行评估。评估表明,我们的模型比一些先前的典型方法实现了更有效的分类。这种癫痫发作的计算机辅助临床诊断方案具有潜在的指导意义,不仅可以减轻癫痫患者的痛苦,提高生活质量,还可以帮助神经科医生减轻工作量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fb6a/6393755/1f06b6c7e71d/fnhum-13-00052-g0001.jpg

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