Zhejiang University, 38 Zheda Road, Hangzhou, People's Republic of China.
J Neural Eng. 2023 Oct 18;20(5). doi: 10.1088/1741-2552/acfff5.
Epilepsy is a fairly common condition that affects the brain and causes frequent seizures. The sudden and recurring epilepsy brings a series of safety hazards to patients, which seriously affects the quality of their life. Therefore, real-time diagnosis of electroencephalogram (EEG) in epilepsy patients is of great significance. However, the conventional methods take in a tremendous amount of features to train the models, resulting in high computation cost and low portability. Our objective is to propose an efficient, light and robust seizure detecting and predicting algorithm.The algorithm is based on an interpretative feature selection method and spatial-temporal causal neural network (STCNN). The feature selection method eliminates the interference factors between different features and reduces the model size and training difficulties. The STCNN model takes both temporal and spatial information to accurately and dynamically track and diagnose the changing of the features. Considering the differences between medical application scenarios and patients, leave-one-out cross validation (LOOCV) and cross-patient validation (CPV) methods are used to conduct experiments on the dataset collected at the Children's Hospital Boston (CHB-MIT), Siena and Kaggle competition datasets.In LOOCV-based method, the detection accuracy and prediction sensitivity have been improved. A significant improvement is also achieved in the CPV-based method.The experimental results show that our proposed algorithm exhibits superior performance and robustness in seizure detection and prediction, which indicates it has higher capability to deal with different and complicated clinical situations.
癫痫是一种较为常见的影响大脑的疾病,会导致频繁发作。突发性和复发性癫痫会给患者带来一系列安全隐患,严重影响他们的生活质量。因此,对癫痫患者的脑电图(EEG)进行实时诊断具有重要意义。然而,传统方法需要大量的特征来训练模型,导致计算成本高且便携性低。我们的目标是提出一种高效、轻量级且稳健的癫痫检测和预测算法。该算法基于解释性特征选择方法和时空因果神经网络(STCNN)。特征选择方法消除了不同特征之间的干扰因素,减小了模型的规模和训练难度。STCNN 模型同时考虑了时间和空间信息,以准确和动态地跟踪和诊断特征的变化。考虑到医疗应用场景和患者之间的差异,我们使用波士顿儿童医院(CHB-MIT)、锡耶纳和 Kaggle 竞赛数据集采集的数据集,采用留一交叉验证(LOOCV)和跨患者验证(CPV)方法进行实验。在基于 LOOCV 的方法中,检测准确性和预测敏感性得到了提高。基于 CPV 的方法也取得了显著的改进。实验结果表明,我们提出的算法在癫痫检测和预测方面具有优越的性能和稳健性,表明其具有更高的能力来处理不同和复杂的临床情况。