Banerjee Ayan, Kamboj Payal, Wyckoff Sarah N, Sussman Bethany L, Gupta Sandeep K S, Boerwinkle Varina L
School of Computing and Augmented Intelligence, Arizona State University, Tempe, AZ, United States.
Division of Neuroscience, Barrow Neurological Institute at Phoenix Children's Hospital, Phoenix, AZ, United States.
Front Neuroimaging. 2023 Jan 4;1:1007668. doi: 10.3389/fnimg.2022.1007668. eCollection 2022.
Accurate localization of a seizure onset zone (SOZ) from independent components (IC) of resting-state functional magnetic resonance imaging (rs-fMRI) improves surgical outcomes in children with drug-resistant epilepsy (DRE). Automated IC sorting has limited success in identifying SOZ localizing ICs in adult normal rs-fMRI or uncategorized epilepsy. Children face unique challenges due to the developing brain and its associated surgical risks. This study proposes a novel SOZ localization algorithm (EPIK) for children with DRE.
EPIK is developed in a phased approach, where fMRI noise-related biomarkers are used through high-fidelity image processing techniques to eliminate noise ICs. Then, the SOZ markers are used through a maximum likelihood-based classifier to determine SOZ localizing ICs. The performance of EPIK was evaluated on a unique pediatric DRE dataset ( = 52). A total of 24 children underwent surgical resection or ablation of an rs-fMRI identified SOZ, concurrently evaluated with an EEG and anatomical MRI. Two state-of-art techniques were used for comparison: (a) least squares support-vector machine and (b) convolutional neural networks. The performance was benchmarked against expert IC sorting and Engel outcomes for surgical SOZ resection or ablation. The analysis was stratified across age and sex.
EPIK outperformed state-of-art techniques for SOZ localizing IC identification with a mean accuracy of 84.7% (4% higher), a precision of 74.1% (22% higher), a specificity of 81.9% (3.2% higher), and a sensitivity of 88.6% (16.5% higher). EPIK showed consistent performance across age and sex with the best performance in those < 5 years of age. It helped achieve a ~5-fold reduction in the number of ICs to be potentially analyzed during pre-surgical screening.
Automated SOZ localization from rs-fMRI, validated against surgical outcomes, indicates the potential for clinical feasibility. It eliminates the need for expert sorting, outperforms prior automated methods, and is consistent across age and sex.
从静息态功能磁共振成像(rs-fMRI)的独立成分(IC)中准确定位癫痫发作起始区(SOZ)可改善药物难治性癫痫(DRE)患儿的手术效果。在成人正常rs-fMRI或未分类癫痫中,自动IC分类在识别SOZ定位IC方面成效有限。由于儿童大脑尚在发育及其相关手术风险,他们面临着独特的挑战。本研究提出一种针对DRE患儿的新型SOZ定位算法(EPIK)。
EPIK采用分阶段开发方法,通过高保真图像处理技术利用fMRI噪声相关生物标志物来消除噪声IC。然后,通过基于最大似然的分类器使用SOZ标志物来确定SOZ定位IC。在一个独特的儿科DRE数据集(n = 52)上评估了EPIK的性能。共有24名儿童接受了rs-fMRI识别的SOZ的手术切除或消融,并同时进行了脑电图和解剖磁共振成像评估。使用两种先进技术进行比较:(a)最小二乘支持向量机和(b)卷积神经网络。性能以专家IC分类和手术SOZ切除或消融的恩格尔结果为基准。分析按年龄和性别分层。
EPIK在SOZ定位IC识别方面优于先进技术,平均准确率为84.7%(高4%),精确率为74.1%(高22%),特异性为81.9%(高3.2%),灵敏度为88.6%(高16.5%)。EPIK在各年龄和性别中表现一致,在5岁以下儿童中表现最佳。它有助于在术前筛查期间将潜在需要分析的IC数量减少约5倍。
通过rs-fMRI进行自动SOZ定位,并根据手术结果进行验证,表明了临床可行性的潜力。它无需专家分类,优于先前的自动方法,且在年龄和性别上保持一致。