Department of Nuclear Medicine, Faculty of Medicine, Gazi University, Ankara, Turkey
Department of Neurology, Faculty of Medicine, Gazi University, Ankara, Turkey
Turk J Med Sci. 2020 Jun 23;50(4):738-748. doi: 10.3906/sag-1911-71.
BACKGROUND/AIM: In temporal lobe epilepsy (TLE), brain positron emission tomography (PET) performed with F-18 fluorodeoxyglucose (FDG) is commonly used for lateralization of the epileptogenic temporal lobe. In this study, we aimed to evaluate the success of quantitative analysis of brain FDG PET images using data mining methods in the lateralization of the epileptogenic temporal lobe.
Presurgical interictal brain FDG PET images of 49 adult mesial TLE patients with a minimum of 2 years of postsurgical follow-up and Engel I outcomes were retrospectively analyzed. Asymmetry indices were calculated from PET images from the mesial temporal lobe and its contiguous structures. The J48 and the logistic model tree (LMT) data mining algorithms were used to find classification rules for the lateralization of the epileptogenic temporal lobe. The classification results obtained by these rules were compared with the physicians’ visual readings and the findings of single-patient statistical parametric mapping (SPM) analyses in a test set of 18 patients. An additional 5-fold cross-validation was applied to the data to overcome the limitation of a relatively small sample size.
In the lateralization of 18 patients in the test set, J48 and LMT methods were successful in 16 (89%) and 17 (94%) patients, respectively. The visual consensus readings were correct in all patients and SPM results were correct in 16 patients. The 5-fold cross- validation method resulted in a mean correct lateralization ratio of 96% (47/49) for the LMT algorithm. This ratio was 88% (43 / 49) for the J48 algorithm.
Lateralization of the epileptogenic temporal lobe with data mining methods using regional metabolic asymmetry values obtained from interictal brain FDG PET images in mesial TLE patients is highly accurate. The application of data mining can contribute to the reader in the process of visual evaluation of FDG PET images of the brain.
背景/目的:在颞叶癫痫(TLE)中,使用 F-18 氟脱氧葡萄糖(FDG)进行脑正电子发射断层扫描(PET)常用于定位致痫性颞叶。本研究旨在通过数据挖掘方法评估定量分析脑 FDG PET 图像在定位致痫性颞叶中的成功。
回顾性分析了 49 例经手术治疗的成年内侧 TLE 患者的术前脑 FDG PET 图像,这些患者均有至少 2 年的术后随访和 Engel I 结果。从内侧颞叶及其相邻结构的 PET 图像中计算不对称指数。使用 J48 和逻辑模型树(LMT)数据挖掘算法来寻找定位致痫性颞叶的分类规则。通过这些规则获得的分类结果与 18 例患者的医生视觉读数和单例统计参数映射(SPM)分析结果进行比较。为了克服样本量相对较小的限制,对数据进行了 5 倍交叉验证。
在 18 例测试集中的患者中,J48 和 LMT 方法分别成功定位了 16 例(89%)和 17 例(94%)患者。所有患者的视觉共识读数均正确,SPM 结果在 16 例患者中正确。5 倍交叉验证方法使 LMT 算法的平均正确定位率为 96%(47/49)。J48 算法的比率为 88%(43/49)。
使用从内侧 TLE 患者的脑 FDG PET 图像中获得的区域代谢不对称值的数据挖掘方法来定位致痫性颞叶非常准确。数据挖掘的应用可以为读者在脑 FDG PET 图像的视觉评估过程中提供帮助。