Fusion of FDG and FMZ PET Reduces False Positive in Predicting Epileptogenic Zone.

Bingyang Cai, Shize Jiang, Hui Huang, Jiwei Li, Siyu Yuan, Ya Cui, Weiqi Bao, Jie Hu, Jie Luo, Liang Chen
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Abstract

Background and purpose: Epilepsy, a globally prevalent neurological disorder, necessitates precise identification of the epileptogenic zone (EZ) for effective surgical management. While the individual utilities of FDG PET and FMZ PET have been demonstrated, their combined efficacy in localizing the epileptogenic zone remains underexplored. We aim to improve the non-invasive prediction of epileptogenic zone (EZ) in temporal lobe epilepsy (TLE) by combining FDG PET and FMZ PET with statistical feature extraction and machine learning.

Materials and methods: This study included 20 drug-resistant unilateral TLE patients (14 mesial TLE, 6 lateral TLE), and two control groups (N=29 for FDG, N=20 for FMZ). EZ of each patient was confirmed by post-surgical pathology, and one-year follow-up, while propagation zone (PZ) and non-involved zone (NIZ) were derived from the epileptogenicity index based on presurgical stereo-encephalography (SEEG) monitoring. Whole brain PET scans were obtained with dual tracers [18F]FDG and [18F]FMZ on separate days, from which standard uptake value ratio (SUVR) was calculated by global mean scaling. Low-order statistical parameters of SUVRs and t-maps derived against control groups were extracted. Additionally, fused FDG and FMZ features were created using arithmetic operations. Spearman correlation was used to investigate the associations between FDG and FMZ, while multiple linear regression analysis was used to explore the interaction effects of imaging features in predicting epileptogenicity. Crafted imaging features were used to train logistic regression models to predict EZ, whose performance was evaluated using 10-fold cross-validation at ROI-level, and leave-one-patient-out cross-validation at patient-level.

Results: FDG SUVR significantly decreased in EZ and PZ compared to NIZ, while FMZ SUVR in EZ significantly differed from PZ. Interaction effects were found between FDG and FMZ in their prediction of epileptogenicity. Fusion of FDG and FMZ provided the best prediction model with an area under the curve (AUC) of 0.86 [0.84-0.87] for EZ vs. NIZ and an AUC of 0.79 [0.77-0.81] for EZ vs. PZ, eliminating 100% false positives in 50% of patients, and ≥80% FPs in 90% patients at patient level.

Conclusions: Combined FDG and FMZ offer a promising avenue for non-invasive localization of the epileptogenic zone in TLE, potentially refining surgical planning.

Abbreviations: AUC = Area under the curve; EI = Epileptogenicity index; EZ = Epileptogenic zone; FMZ = Flumazenil; GABAA = Gamma-aminobutyric acid type A; NIZ = Non-involved zone; PZ = Propagation zone; SEEG = Stereo-electroencephalography; SUVR = Standard uptake value ratio; TLE = Temporal lobe epilepsy.

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FDG与FMZ PET融合可减少假阳性预测癫痫区。
背景和目的:癫痫是一种全球流行的神经系统疾病,需要精确识别癫痫发生区(EZ)以进行有效的手术治疗。虽然FDG PET和FMZ PET的单独效用已得到证实,但它们在定位癫痫区方面的综合功效仍未得到充分探索。本研究旨在将FDG PET和FMZ PET结合统计特征提取和机器学习技术,提高颞叶癫痫(TLE)发病区(EZ)的无创预测。材料与方法:本研究纳入20例单侧耐药TLE患者(14例内侧TLE, 6例外侧TLE)和2个对照组(FDG组29例,FMZ组20例)。患者的EZ均通过术后病理确诊,随访1年,繁殖区(PZ)和非受累区(NIZ)由术前立体脑电图(SEEG)监测的致痫性指数得出。采用双示踪剂[18F]FDG和[18F]FMZ分别在不同的日期进行全脑PET扫描,并采用全局平均标度法计算标准摄取值比(SUVR)。提取越野车的低阶统计参数和对照组的t图。此外,使用算术运算创建了融合的FDG和FMZ特征。采用Spearman相关分析FDG与FMZ之间的关系,采用多元线性回归分析探讨影像学特征在预测致痫性中的相互作用。使用精心制作的成像特征来训练逻辑回归模型来预测EZ,其性能在roi水平上使用10倍交叉验证进行评估,并在患者水平上使用留一患者交叉验证进行评估。结果:与NIZ相比,EZ和PZ的FDG SUVR明显降低,而EZ的FMZ SUVR与PZ有显著差异。FDG和FMZ在预测致痫性方面存在交互作用。FDG和FMZ融合提供了最佳的预测模型,EZ与NIZ的曲线下面积(AUC)为0.86 [0.84-0.87],EZ与PZ的AUC为0.79[0.77-0.81],在患者水平上消除了50%患者的100%假阳性,90%患者的FPs≥80%。结论:FDG和FMZ联合为TLE的非侵入性癫痫区定位提供了一条有希望的途径,有可能完善手术计划。缩写:AUC =曲线下面积;致痫性指数;EZ =致痫区;氟马西尼;A型γ氨基丁酸;非涉入区;PZ =繁殖区;立体脑电图;SUVR =标准摄取值比;TLE =颞叶癫痫。
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