基于辛几何分解的特征和高斯深度玻尔兹曼机检测癫痫发作

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-05-05 DOI:10.1142/s021946782450044x
K. Visalini, Saravanan Alagarsamy, S. Raja
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引用次数: 0

摘要

研究认为,在全球范围内,大约1%的人口受到癫痫发作的影响。它的特征是大脑中过度的神经元放电,在很大程度上降低了患者的生活质量。没有意识到突然发作癫痫的儿童可能会受到严重伤害甚至死亡。基于机器学习的脑电图信号癫痫发作检测一直是研究的热点。然而,大多数研究工作依赖于从脑电图信号中提取的相关非线性特征,这造成了很高的计算开销,并挑战了它们在实时临床诊断中的应用。本研究提出了一种基于高斯深度玻尔兹曼机的分类器和基于辛几何分解(SGD)特征的鲁棒癫痫检测框架。通过辛相似变换(SST)得到的简化特征值作为分类器的特征向量,消除了刻意提取特征过程的需要。该研究考察了建议的框架在新生儿和儿科受试者中区分癫痫发作的可转移性能力,并对经典的注释数据集进行了实验。该模型在小儿癫痫发作检测中的平均准确率约为97.91%,F1评分为0.935,在新生儿癫痫发作检测任务中的平均灵敏度和特异性分别为99.05%和98.28%。因此,该模型可以被认为与现有的最先进的缉获检测框架相媲美。
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Detecting Epileptic Seizures Using Symplectic Geometry Decomposition-Based Features and Gaussian Deep Boltzmann Machines
Studies deem that about 1 percent of the human population is affected by epileptic seizures on a global scale. It is characterized as an undue neuronal discharge in the brain and degrades the quality of life of the patients to a large extent. Children being unaware of a sudden onset of seizures could be affected by severe injury or even mortality. Machine-learning-based epileptic seizure detection from EEG (Electro-Encephalogram) signals have always been a hot area of research. However, the majority of the research works rely on correlated non-linear features extracted from the EEG signals, causing a high-computational overhead, and challenging their application in real-time clinical diagnosis. This study proposes a robust seizure detection framework using Gaussian Deep Boltzmann Machine-based classifier and Symplectic Geometric Decomposition (SGD)-based features. The simplified eigenvalues derived through Symplectic Similarity Transform (SST) are employed as feature vectors for the classifier, eliminating the need for a deliberate feature extraction procedure. The study examines the transferability capability of the suggested framework in discriminating seizures in both neonates and pediatric subjects in unison, experimenting with classical annotated datasets. The model yielded a mean accuracy of about 97.91% and an F1 Score of 0.935 in pediatric seizure detection, and mean sensitivity and specificity of 99.05% and 98.28%, in neonatal seizure detection tasks, respectively. Thus, the model can be deemed comparable to the available state-of-the-art seizure detection frameworks.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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