Cleveland Clinic Epilepsy Center, Cleveland Clinic Foundation, Cleveland, OH, USA.
Department of Quantitative Health Sciences, Cleveland Clinic Foundation, Cleveland, OH, USA.
Epilepsia. 2021 May;62(5):1074-1084. doi: 10.1111/epi.16877. Epub 2021 Mar 23.
Patients undergoing frontal lobectomy demonstrate lower seizure-freedom rates than patients undergoing temporal lobectomy and several other resective interventions. We attempted to utilize automated preoperative quantitative analysis of focal and global cortical volume loss to develop predictive volumetric indicators of seizure outcome after frontal lobectomy.
Ninety patients who underwent frontal lobectomy were stratified based on seizure freedom at a mean follow-up time of 3.5 (standard deviation [SD] 2.5) years. Automated quantitative analysis of cortical volume loss organized by distinct brain region and laterality was performed on preoperative T1-weighted magnetic resonance imaging (MRI) studies. Univariate statistical analysis was used to select potential predictors of seizure freedom. Backward variable selection and multivariate logistical regression were used to develop models to predict seizure freedom.
Forty-eight of 90 (53.3%) patients were seizure-free at the last follow-up. Several frontal and extrafrontal brain regions demonstrated statistically significant differences in both volumetric cortical volume loss and volumetric asymmetry between the left and right sides in the seizure-free and non-seizure-free cohorts. A final multivariate logistic model utilizing only preoperative quantitative MRI data to predict seizure outcome was developed with a c-statistic of 0.846. Using both preoperative quantitative MRI data and previously validated clinical predictors of seizure outcomes, we developed a model with a c-statistic of 0.897.
This study demonstrates that preoperative cortical volume loss in both frontal and extrafrontal regions can be predictive of seizure outcome after frontal lobectomy, and models can be developed with excellent predictive capabilities using preoperative MRI data. Automated quantitative MRI analysis can be quickly and reliably performed in patients with frontal lobe epilepsy, and further studies may be developed for integration into preoperative risk stratification.
与接受颞叶切除术和其他几种切除术的患者相比,接受额叶切除术的患者癫痫无发作率较低。我们试图利用术前对局限性和全面皮质容积损失的自动定量分析,来开发额叶切除术术后癫痫结局的预测性容积指标。
90 例接受额叶切除术的患者根据平均 3.5 年(标准差为 2.5 年)的随访时间有无癫痫发作进行分层。对术前 T1 加权磁共振成像(MRI)研究进行皮质容积损失的自动定量分析,按不同的脑区和侧别进行组织。使用单变量统计分析选择癫痫无发作的潜在预测指标。使用向后变量选择和多元逻辑回归来开发预测癫痫无发作的模型。
90 例患者中,48 例(53.3%)在最后一次随访时无癫痫发作。在无癫痫发作和有癫痫发作的队列中,左、右侧额叶和额外额叶的几个脑区在容积性皮质容积损失和容积性不对称方面都有统计学上的显著差异。利用术前定量 MRI 数据开发的最终多元逻辑模型预测癫痫结局的 C 统计量为 0.846。使用术前定量 MRI 数据和先前验证过的癫痫结局的临床预测因素,我们开发了一个 C 统计量为 0.897 的模型。
本研究表明,术前额叶和额外额叶区域的皮质容积损失可预测额叶切除术的癫痫发作结局,且使用术前 MRI 数据可以建立具有出色预测能力的模型。在额叶癫痫患者中,可以快速、可靠地进行自动定量 MRI 分析,进一步的研究可能会被开发出来,纳入术前风险分层。