Department of Biomedical Engineering (BME), New Jersey Institute of Technology, Newark, NJ, USA.
Department of Biomedical Engineering (BME), Khulna University of Engineering & Technology, Khulna, 9230, Bangladesh.
Sci Rep. 2024 May 11;14(1):10792. doi: 10.1038/s41598-024-61338-2.
Epilepsy is a chronic neurological disease, characterized by spontaneous, unprovoked, recurrent seizures that may lead to long-term disability and premature death. Despite significant efforts made to improve epilepsy detection clinically and pre-clinically, the pervasive presence of noise in EEG signals continues to pose substantial challenges to their effective application. In addition, discriminant features for epilepsy detection have not been investigated yet. The objective of this study is to develop a hybrid model for epilepsy detection from noisy and fragmented EEG signals. We hypothesized that a hybrid model could surpass existing single models in epilepsy detection. Our approach involves manual noise rejection and a novel statistical channel selection technique to detect epilepsy even from noisy EEG signals. Our proposed Base-2-Meta stacking classifier achieved notable accuracy (0.98 ± 0.05), precision (0.98 ± 0.07), recall (0.98 ± 0.05), and F1 score (0.98 ± 0.04) even with noisy 5-s segmented EEG signals. Application of our approach to the specific problem like detection of epilepsy from noisy and fragmented EEG data reveals a performance that is not only superior to others, but also is translationally relevant, highlighting its potential application in a clinic setting, where EEG signals are often noisy or scanty. Our proposed metric DF-A (Discriminant feature-accuracy), for the first time, identified the most discriminant feature with models that give A accuracy or above (A = 95 used in this study). This groundbreaking approach allows for detecting discriminant features and can be used as potential electrographic biomarkers in epilepsy detection research. Moreover, our study introduces innovative insights into the understanding of these features, epilepsy detection, and cross-validation, markedly improving epilepsy detection in ways previously unavailable.
癫痫是一种慢性神经系统疾病,其特征是自发、无诱因、反复发作,可能导致长期残疾和过早死亡。尽管在临床和临床前都做出了巨大努力来提高癫痫检测的准确性,但脑电图信号中的噪声普遍存在仍然对其有效应用构成了重大挑战。此外,用于癫痫检测的判别特征尚未得到研究。本研究的目的是开发一种用于从噪声和碎片化脑电图信号中检测癫痫的混合模型。我们假设混合模型在癫痫检测方面可以超越现有的单一模型。我们的方法包括手动噪声剔除和一种新颖的统计通道选择技术,即使在嘈杂的脑电图信号中也可以检测到癫痫。我们提出的基于 2-元堆叠分类器在 5 秒分段脑电图信号中实现了显著的准确性(0.98±0.05)、精度(0.98±0.07)、召回率(0.98±0.05)和 F1 得分(0.98±0.04)。即使在嘈杂的 5 秒分段脑电图信号中,我们的方法应用于特定问题,如从嘈杂和碎片化脑电图数据中检测癫痫,其性能不仅优于其他方法,而且具有转化相关性,突出了其在临床环境中的潜在应用,因为在临床环境中,脑电图信号通常是嘈杂的或稀少的。我们提出的 DF-A(判别特征-准确性)度量首次识别出了具有 A 准确性或更高准确性(本研究中使用的 A=95)的模型的最具判别力的特征。这种开创性的方法允许检测判别特征,并可作为癫痫检测研究中的潜在电生理生物标志物。此外,我们的研究为理解这些特征、癫痫检测和交叉验证提供了新的见解,显著提高了癫痫检测的水平。