Hrtonova Valentina, Jaber Kassem, Nejedly Petr, Blackwood Elizabeth R, Klimes Petr, Frauscher Birgit
First Department of Neurology, Faculty of Medicine, Masaryk University, Brno, Czech Republic.
Institute of Scientific Instruments of the CAS, Brno, Czech Republic.
J Neural Eng. 2025 Jun 26;22(3). doi: 10.1088/1741-2552/ade28c.
Accurate localization of the epileptogenic zone (EZ) is crucial for epilepsy surgery, but the class imbalance of epileptogenic vs. non-epileptogenic electrode contacts in intracranial electroencephalography (iEEG) data poses significant challenges for automatic localization methods. This review evaluates methodologies for handling the class imbalance in EZ localization studies that use machine learning (ML).We systematically reviewed studies employing ML to localize the EZ from iEEG data, focusing on strategies for addressing class imbalance in data handling, algorithm design, and evaluation.Out of 2,128 screened studies, 35 fulfilled the inclusion criteria. Across the studies, the iEEG contacts annotated as epileptogenic prior to automatic localization constituted a median of 18.34% of all contacts. However, many of these studies did not adequately address the class imbalance problem. Techniques such as data resampling and cost-sensitive learning were used to mitigate the class imbalance problem, but the chosen evaluation metrics often failed to account for it.Class imbalance significantly impacts the reliability of EZ localization models. More comprehensive management and innovative approaches are needed to enhance the robustness and clinical utility of these models. Addressing class imbalance in ML models for EZ localization will improve both the predictive performance and reliability of these models.
癫痫发作起始区(EZ)的准确定位对癫痫手术至关重要,但颅内脑电图(iEEG)数据中癫痫发作起始电极触点与非癫痫发作起始电极触点的类别不平衡给自动定位方法带来了重大挑战。本综述评估了在使用机器学习(ML)的EZ定位研究中处理类别不平衡的方法。我们系统地回顾了采用ML从iEEG数据中定位EZ的研究,重点关注数据处理、算法设计和评估中解决类别不平衡的策略。在2128项筛选研究中,35项符合纳入标准。在这些研究中,自动定位前标注为癫痫发作起始的iEEG触点占所有触点的中位数为18.34%。然而,这些研究中有许多并未充分解决类别不平衡问题。数据重采样和代价敏感学习等技术被用于缓解类别不平衡问题,但所选的评估指标往往未能考虑到这一点。类别不平衡显著影响EZ定位模型的可靠性。需要更全面的管理和创新方法来提高这些模型的稳健性和临床实用性。解决EZ定位ML模型中的类别不平衡问题将提高这些模型的预测性能和可靠性。