| Literature DB >> 23508995 |
Xiaoying Tang1, Li Xia, Yezi Liao, Weifeng Liu, Yuhua Peng, Tianxin Gao, Yanjun Zeng.
Abstract
A new nonlinear approach is presented for high-frequency electrocorticography (ECoG)-based diagnosis of epilepsy. The ECoG data from 3 patients with epilepsy are analyzed in this study. A recently developed algorithm in graph theory, visibility graph (VG), is applied in this research. The approach is based on the key discovery that high-frequency oscillation takes place during epileptic seizure, making it a marker of epilepsy. Therefore, the nonlinear property of the high-frequency signal may be more noticeable. Hence, a complexity measure, called graph index complexity (GIC), is computed using the VG of the patients' high-frequency ECoG subband. After comparison and statistical analysis, the nonlinear feature is proved to be effective in detection and location of the epilepsy. Two different traditional complexities, sample entropy and Lempel-Ziv, were also calculated to make a comparison and prove that GIC provides better identification.Entities:
Keywords: ECoG; complexity; epilepsy; visual graph
Mesh:
Year: 2013 PMID: 23508995 DOI: 10.1177/1550059412464449
Source DB: PubMed Journal: Clin EEG Neurosci ISSN: 1550-0594 Impact factor: 1.843