Author/Authors :
Yao, Yufeng Department of Computer Science and Engineering - Changshu Institute of Technology - Changshu, China , Cui, Zhiming Suzhou University of Science and Technology - Suzhou, China
Abstract :
Epilepsy is a chronic disease caused by sudden abnormal discharge of brain neurons, causing transient brain dysfunction. The
seizures of epilepsy have the characteristics of being sudden and repetitive, which has seriously endangered patients’ health,
cognition, etc. In the current condition, EEG plays a vital role in the diagnosis, judgment, and qualitative location of epilepsy
among the clinical diagnosis of various epileptic seizures and is an indispensable means of detection. The study of the EEG
signals of patients with epilepsy can provide a strong basis and useful information for in-depth understanding of its
pathogenesis. Although, intelligent classification technologies based on machine learning have been widely used to the
classification of epilepsy EEG signals and show the effectiveness. In fact, it is difficult to ensure that there is always enough EEG
data available for training the model in real life, which will affect the performance of the algorithms. In view of this, to reduce
the impact of insufficient data on the detection performance of the algorithms, a novel discriminate least squares regression-
(DLSR-) based inductive transfer learning method was introduced which is on the basis of DLSR and the inductive transfer
learning. And, it is applied to promote the adaptability and accuracy of the epilepsy EEG signal recognition. The proposed
method inherits the advantages of DLSR; it can be more suitable for classification scenarios by expanding the interval between
different classes. Meanwhile, it can simultaneously use the data of the target domain and the knowledge of the source domain,
which is helpful for getting better performance. The results show that the improved method has more advantages in EEG signal
recognition comparing to several other representative methods.
Keywords :
Automatic , Epilepsy , EEG , Transfer