论文标题
使用机器学习的癫痫发作检测的评论
A review on Epileptic Seizure Detection using Machine Learning
论文作者
论文摘要
癫痫是一种神经系统脑疾病,威胁生命并引起无端的癫痫发作。由于我们大脑的化学变化异常而发生。多年来,已经进行了研究,以支持自动诊断癫痫发作,以便于临床医生。为此,一些研究需要使用机器学习方法来早期预测癫痫发作。主要是,特征提取方法已用于从EEG机器生成的EEG数据中提取正确的功能,然后将各种机器学习分类器用于分类过程。这项研究提供了针对特征选择过程以及分类性能的系统文献综述。这项研究仅限于发现最常用的特征提取方法,以及用于准确分类正常癫痫发作的分类器。从MPDI,IEEXPLORE,WILEY,ELSEVIER,ACM,SPRINGERLINK等著名存储库中检查了现有文献。此外,创建了一种分类学,该分类法概括了针对此问题的最先进的使用解决方案。我们还研究了不同基准和公正数据集的性质,并对分类器的工作进行了严格的分析。最后,我们通过提出差距,挑战和机遇来结束研究,这可以进一步帮助研究人员预测癫痫发作。
Epilepsy is a neurological brain disorder which life threatening and gives rise to recurrent seizures that are unprovoked. It occurs due to the abnormal chemical changes in our brain. Over the course of many years, studies have been conducted to support automatic diagnosis of epileptic seizures for the ease of clinicians. For that, several studies entail the use of machine learning methods for the early prediction of epileptic seizures. Mainly, feature extraction methods have been used to extract the right features from the EEG data generated by the EEG machine and then various machine learning classifiers are used for the classification process. This study provides a systematic literature review of feature selection process as well as the classification performance. This study was limited to the finding of most used feature extraction methods and the classifiers used for accurate classification of normal to epileptic seizures. The existing literature was examined from well-known repositories such as MPDI, IEEEXplore, Wiley, Elsevier, ACM, Springerlink and others. Furthermore, a taxonomy was created that recapitulates the state-of-the-art used solutions for this problem. We also studied the nature of different benchmark and unbiased datasets and gave a rigorous analysis of the working of classifiers. Finally, we concluded the research by presenting the gaps, challenges and opportunities which can further help researchers in prediction of epileptic seizure