首页> 外文期刊>Clinical EEG and neuroscience: official journal of the EEG and Clinical Neuroscience Society (ENCS) >Computing sources of epileptic discharges using the novel BMA approach: comparison with other distributed inverse solution methods.
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Computing sources of epileptic discharges using the novel BMA approach: comparison with other distributed inverse solution methods.

机译:使用新颖的BMA方法计算癫痫放电的来源:与其他分布式逆解方法的比较。

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Electroencephalography (EEG) source localization in epileptology continues to be a challenge for neuroscientists. A number of inverse solution (IS) methodologies have been proposed to solve this problem, and their advantages and limitations have been described. In the present work, a previously developed IS approach called Bayesian model averaging (BMA) is introduced in clinical practice in order to improve the localization accuracy of epileptic discharge sources. For this study, 31 patients with the diagnosis of partial epilepsies were studied: 14 had benign childhood epilepsy with centrotemporal spikes and 17 had temporal lobe epilepsy (TLE). The underlying epileptic sources were localized using the BMA approach, and the results were compared with those expected from the clinical diagnosis. Additional comparisons with results obtained from 3 of the most commonly used distributed IS methods for these purposes (minimum norm [MN], weighted minimum norm [WMN], and low-resolution electromagnetic tomography [LORETA]) were carried out in terms of source localization accuracy and spatial resolutions. The BMA approach estimated discharge sources that were consistent with the clinical diagnosis, and this method outperformed LORETA, MN, and WMN in terms of both localization accuracy and spatial resolution. The BMA was able to localize deeper generators with high accuracy. In conclusion, the BMA methodology has a great potential for the noninvasive accurate localization of epileptic sources, even those located in deeper structures. Therefore, it could be a promising tool for clinical practice in epileptology, although additional studies in other types of epileptic syndromes are necessary.
机译:癫痫学中的脑电图(EEG)源定位仍然是神经科学家所面临的挑战。已经提出了许多逆解(IS)方法来解决该问题,并且已经描述了它们的优点和局限性。在当前的工作中,为了提高癫痫放电源的定位准确性,在临床实践中引入了一种先前开发的IS方法,称为贝叶斯模型平均(BMA)。在本研究中,对31例诊断为部分性癫痫的患者进行了研究:14例儿童良性癫痫伴有颞叶尖峰,17例颞叶癫痫(TLE)。使用BMA方法对潜在的癫痫病源进行定位,并将结果与​​临床诊断预期的结果进行比较。就源定位而言,与从这三种最常用的分布式IS方法(最小标准[MN],加权最小标准[WMN]和低分辨率电磁层析成像[LORETA])获得的结果进行了其他比较。精度和空间分辨率。 BMA方法估算的排放源与临床诊断相符,在定位精度和空间分辨率方面,该方法均优于LORETA,MN和WMN。 BMA能够高精度定位更深的发电机。总之,BMA方法对于无创准确定位癫痫源具有巨大潜力,即使是位于较深结构中的癫痫源也是如此。因此,尽管有必要对其他类型的癫痫综合征进行额外的研究,但它可能是用于癫痫学临床实践的有前途的工具。

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