| Literature DB >> 28669244 |
Guo-Ping Ren1,2, Jia-Qing Yan3, Zhi-Xin Yu1,2, Dan Wang1,2, Xiao-Nan Li1,2, Shan-Shan Mei4, Jin-Dong Dai4, Xiao-Li Li5,6, Yun-Lin Li7, Xiao-Fei Wang4,7, Xiao-Feng Yang1,2.
Abstract
High frequency oscillations (HFOs) are considered as biomarker for epileptogenicity. Reliable automation of HFOs detection is necessary for rapid and objective analysis, and is determined by accurate computation of the baseline. Although most existing automated detectors measure baseline accurately in channels with rare HFOs, they lose accuracy in channels with frequent HFOs. Here, we proposed a novel algorithm using the maximum distributed peak points method to improve baseline determination accuracy in channels with wide HFOs activity ranges and calculate a dynamic baseline. Interictal ripples (80-200[Formula: see text]Hz), fast ripples (FRs, 200-500[Formula: see text]Hz) and baselines in intracerebral EEGs from seven patients with intractable epilepsy were identified by experienced reviewers and by our computer-automated program, and the results were compared. We also compared the performance of our detector to four well-known detectors integrated in RIPPLELAB. The sensitivity and specificity of our detector were, respectively, 71% and 75% for ripples and 66% and 84% for FRs. Spearman's rank correlation coefficient comparing automated and manual detection was [Formula: see text] for ripples and [Formula: see text] for FRs ([Formula: see text]). In comparison to other detectors, our detector had a relatively higher sensitivity and specificity. In conclusion, our automated detector is able to accurately calculate a dynamic iEEG baseline in different HFO activity channels using the maximum distributed peak points method, resulting in higher sensitivity and specificity than other available HFO detectors.Entities:
Keywords: High frequency oscillations; automated detector; dynamic baseline; epilepsy; maximum distributed peak points
Mesh:
Year: 2017 PMID: 28669244 DOI: 10.1142/S0129065717500290
Source DB: PubMed Journal: Int J Neural Syst ISSN: 0129-0657 Impact factor: 5.866