Cargando…

Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection

Objective: We proposed an improved automated high frequency oscillations (HFOs) detector that could not only be applied to various intracranial electrodes, but also automatically remove false HFOs caused by high-pass filtering. We proposed a continuous resection ratio of high order HFO channels and...

Descripción completa

Detalles Bibliográficos
Autores principales: Jiang, Chenxi, Li, Xiaonan, Yan, Jiaqing, Yu, Tao, Wang, Xueyuan, Ren, Zhiwei, Li, Donghong, Liu, Chang, Du, Wei, Zhou, Xiaoxia, Xing, Yue, Ren, Guoping, Zhang, Guojun, Yang, Xiaofeng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6243027/
https://www.ncbi.nlm.nih.gov/pubmed/30483204
http://dx.doi.org/10.3389/fneur.2018.00889
_version_ 1783371893854699520
author Jiang, Chenxi
Li, Xiaonan
Yan, Jiaqing
Yu, Tao
Wang, Xueyuan
Ren, Zhiwei
Li, Donghong
Liu, Chang
Du, Wei
Zhou, Xiaoxia
Xing, Yue
Ren, Guoping
Zhang, Guojun
Yang, Xiaofeng
author_facet Jiang, Chenxi
Li, Xiaonan
Yan, Jiaqing
Yu, Tao
Wang, Xueyuan
Ren, Zhiwei
Li, Donghong
Liu, Chang
Du, Wei
Zhou, Xiaoxia
Xing, Yue
Ren, Guoping
Zhang, Guojun
Yang, Xiaofeng
author_sort Jiang, Chenxi
collection PubMed
description Objective: We proposed an improved automated high frequency oscillations (HFOs) detector that could not only be applied to various intracranial electrodes, but also automatically remove false HFOs caused by high-pass filtering. We proposed a continuous resection ratio of high order HFO channels and compared this ratio with each patient's post-surgical outcome, to determine the quantitative threshold of HFO distribution to delineate the epileptogenic zone (EZ). Methods: We enrolled a total of 43 patients diagnosed with refractory epilepsy. The patients were used to optimize the parameters for SEEG electrodes, to test the algorithm for identifying false HFOs, and to calculate the continuous resection ratio of high order HFO channels. The ratio can be used to determine a quantitative threshold to locate the epileptogenic zone. Results: Following optimization, the sensitivity, and specificity of our detector were 66.84 and 73.20% (ripples) and 69.76 and 66.13% (fast ripples, FRs), respectively. The sensitivity and specificity of our algorithm for removing false HFOs were 76.82 and 94.54% (ripples) and 72.55 and 94.87% (FRs), respectively. The median of the continuous resection ratio of high order HFO channels in patients with good surgical outcomes, was significantly higher than in patients with poor outcome, for both ripples and FRs (P < 0.05 ripples and P < 0.001 FRs). Conclusions: Our automated detector has the advantage of not only applying to various intracranial electrodes but also removing false HFOs. Based on the continuous resection ratio of high order HFO channels, we can set the quantitative threshold for locating epileptogenic zones.
format Online
Article
Text
id pubmed-6243027
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-62430272018-11-27 Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection Jiang, Chenxi Li, Xiaonan Yan, Jiaqing Yu, Tao Wang, Xueyuan Ren, Zhiwei Li, Donghong Liu, Chang Du, Wei Zhou, Xiaoxia Xing, Yue Ren, Guoping Zhang, Guojun Yang, Xiaofeng Front Neurol Neurology Objective: We proposed an improved automated high frequency oscillations (HFOs) detector that could not only be applied to various intracranial electrodes, but also automatically remove false HFOs caused by high-pass filtering. We proposed a continuous resection ratio of high order HFO channels and compared this ratio with each patient's post-surgical outcome, to determine the quantitative threshold of HFO distribution to delineate the epileptogenic zone (EZ). Methods: We enrolled a total of 43 patients diagnosed with refractory epilepsy. The patients were used to optimize the parameters for SEEG electrodes, to test the algorithm for identifying false HFOs, and to calculate the continuous resection ratio of high order HFO channels. The ratio can be used to determine a quantitative threshold to locate the epileptogenic zone. Results: Following optimization, the sensitivity, and specificity of our detector were 66.84 and 73.20% (ripples) and 69.76 and 66.13% (fast ripples, FRs), respectively. The sensitivity and specificity of our algorithm for removing false HFOs were 76.82 and 94.54% (ripples) and 72.55 and 94.87% (FRs), respectively. The median of the continuous resection ratio of high order HFO channels in patients with good surgical outcomes, was significantly higher than in patients with poor outcome, for both ripples and FRs (P < 0.05 ripples and P < 0.001 FRs). Conclusions: Our automated detector has the advantage of not only applying to various intracranial electrodes but also removing false HFOs. Based on the continuous resection ratio of high order HFO channels, we can set the quantitative threshold for locating epileptogenic zones. Frontiers Media S.A. 2018-11-13 /pmc/articles/PMC6243027/ /pubmed/30483204 http://dx.doi.org/10.3389/fneur.2018.00889 Text en Copyright © 2018 Jiang, Li, Yan, Yu, Wang, Ren, Li, Liu, Du, Zhou, Xing, Ren, Zhang and Yang. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Jiang, Chenxi
Li, Xiaonan
Yan, Jiaqing
Yu, Tao
Wang, Xueyuan
Ren, Zhiwei
Li, Donghong
Liu, Chang
Du, Wei
Zhou, Xiaoxia
Xing, Yue
Ren, Guoping
Zhang, Guojun
Yang, Xiaofeng
Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection
title Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection
title_full Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection
title_fullStr Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection
title_full_unstemmed Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection
title_short Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection
title_sort determining the quantitative threshold of high-frequency oscillation distribution to delineate the epileptogenic zone by automated detection
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6243027/
https://www.ncbi.nlm.nih.gov/pubmed/30483204
http://dx.doi.org/10.3389/fneur.2018.00889
work_keys_str_mv AT jiangchenxi determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT lixiaonan determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT yanjiaqing determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT yutao determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT wangxueyuan determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT renzhiwei determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT lidonghong determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT liuchang determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT duwei determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT zhouxiaoxia determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT xingyue determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT renguoping determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT zhangguojun determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection
AT yangxiaofeng determiningthequantitativethresholdofhighfrequencyoscillationdistributiontodelineatetheepileptogeniczonebyautomateddetection