Sundrani Sameer, Johnson Graham W, Doss Derek J, Makhoul Ghassan S, Hidalgo Monroy Lerma Bruno, Reda Anas, Cavender Addison C, Liao Emily, Rogers Baxter P, Williams Roberson Shawniqua, Bick Sarah K, Morgan Victoria L, Englot Dario J
Vanderbilt University School of Medicine, Nashville, Tennessee, USA.
Department of Neurological Surgery, Vanderbilt University Medical Center, Nashville, Tennessee, USA.
Epilepsia. 2025 May 27. doi: 10.1111/epi.18478.
Epilepsy is a debilitating disorder affecting more than 50 million people worldwide, and one third of patients continue to have seizures despite maximal medical management. If patients' seizures localize to a discrete brain region, termed a seizure onset zone, resection may be curative. Localization is often confirmed with stereotactic electroencephalography; however, this may require patients to stay in the hospital for weeks to capture spontaneous seizures. Automated localization of seizure onset zones could therefore improve presurgical evaluation and decrease morbidity.
Using more than 1 000 000 interictal stereotactic electroencephalography segments collected from 78 patients, we performed five-fold cross-validation and testing on a multichannel, multiscale, one-dimensional convolutional neural network to classify seizure onset zones.
Across held-out test sets, our models achieved a seizure onset zone classification sensitivity of .702 (95% confidence interval [CI] = .549-.805), specificity of .741 (95% CI = .652-.835), and accuracy of .738 (95% CI = .687-.795), which was significantly better than models trained on random labels. The models performed well across the entire brain, with top five region performance demonstrating accuracies between 70.0% and 88.4%. When split by outcomes, the models performed significantly better on patients with favorable Engel outcomes after resection or who were responsive neurostimulation responders. Finally, SHAP (Shapley Additive Explanation) value analysis on median-normalized input data assigned consistently high feature importance to interictal spikes and large deflections, whereas similar analyses on histogram-equalized data revealed differences in feature importance assignments to low-amplitude segments.
This work serves as evidence that deep learning on brief interictal intracranial data can classify seizure onset zones across the brain. Furthermore, our findings corroborate current understandings of interictal epileptiform discharges and may help uncover novel interictal morphologies. Clinical application of our models may reduce dependence on recorded seizures for localization and shorten presurgical evaluation time for drug-resistant epilepsy patients, reducing patient morbidity and hospital costs.
癫痫是一种使人衰弱的疾病,全球有超过5000万人受其影响,尽管进行了最大程度的药物治疗,仍有三分之一的患者继续发作。如果患者的癫痫发作定位于一个离散的脑区,即癫痫发作起始区,切除可能治愈。癫痫发作起始区的定位通常通过立体定向脑电图来确认;然而,这可能需要患者在医院住院数周以捕捉自发发作。因此,癫痫发作起始区的自动定位可以改善术前评估并降低发病率。
我们使用从78例患者收集的超过100万个发作间期立体定向脑电图片段,在一个多通道、多尺度、一维卷积神经网络上进行五折交叉验证和测试,以对癫痫发作起始区进行分类。
在留出的测试集中,我们的模型实现了癫痫发作起始区分类的敏感性为0.702(95%置信区间[CI]=0.549 - 0.805),特异性为0.741(95%CI = 0.652 - 0.835),准确率为0.738(95%CI = 0.687 - 0.795),这明显优于基于随机标签训练的模型。这些模型在整个大脑中表现良好,前五个区域的性能显示准确率在70.0%至88.4%之间。按结果划分时,模型在切除后恩格尔结果良好的患者或对神经刺激有反应的患者中表现明显更好。最后,对中位数归一化输入数据的SHAP(Shapley加性解释)值分析一致地将发作间期棘波和大偏转赋予了始终较高的特征重要性,而对直方图均衡化数据的类似分析揭示了对低振幅段的特征重要性分配存在差异。
这项工作证明了对简短的发作间期颅内数据进行深度学习可以对全脑的癫痫发作起始区进行分类。此外,我们的发现证实了目前对发作间期癫痫样放电的理解,并可能有助于发现新的发作间期形态。我们模型的临床应用可能会减少对记录发作进行定位的依赖,并缩短耐药性癫痫患者的术前评估时间,降低患者发病率和医院成本。