Rocha Priscila L, Barros Allan K, Silva Washington S, Sousa Gean C, Sousa Patrícia, da Silva Antônio M
Department of Electrical Engineering, Federal University of Maranhão (UFMA), São Luís, MA, 65080-805, Brazil.
Department of ElectroElectronics, Federal Institute of Maranhão (IFMA), São Luís, MA, 65030-005, Brazil.
Comput Biol Med. 2020 Nov;126:104014. doi: 10.1016/j.compbiomed.2020.104014. Epub 2020 Sep 24.
This paper intends to classify the interictal state with hypsarrhythmia in patients with Zika Virus Congenital Syndrome (ZVCS) and of the ictal state in patients with epilepsy in childhood without the presence of hypsarrhythmia. Hypsarrhythmia is a specific interictal chaotic morphology, and the correct distinction between these two EEG states is crucial to improving the cognitive development of these epileptic patients. The proposed approach was assessed using the proprietary database of Casa Ninar, which contains data regarding children from northeastern Brazil born with microcephaly caused by the Zika virus. We also used data from the CHB-MIT database. Fundamental rhythms of the EEG signal δ, θ, α, and β were analyzed, and then decomposed by Discrete Wavelet Transform, in which 45 mother wavelet functions were tested to determine the most appropriate function to represent the EEG signals in the hypsarrhythmia interictal and ictal states. We extracted Shannon, Log Energy, Norm, and Sure entropy measures of the subbands as relevant features, and the combinations among them were applied in the state-of-the-art machine learning methods. The combination of Sure entropy with Shannon entropy, or with Log Energy and Norm, extracted from the δ rhythm, allowed for the best linear separability between the classes in most of the classifiers, obtaining 100% accuracy, sensitivity, and specificity.
本文旨在对寨卡病毒先天性综合征(ZVCS)患者的伴有高度失律的发作间期状态以及无高度失律的儿童癫痫患者的发作期状态进行分类。高度失律是一种特定的发作间期混沌形态,正确区分这两种脑电图状态对于改善这些癫痫患者的认知发展至关重要。所提出的方法使用了卡萨尼纳尔的专有数据库进行评估,该数据库包含了巴西东北部因寨卡病毒导致小头畸形的儿童的数据。我们还使用了CHB - MIT数据库的数据。对脑电图信号的基本节律δ、θ、α和β进行了分析,然后通过离散小波变换进行分解,其中测试了45个母小波函数以确定最适合表示高度失律发作间期和发作期状态下脑电图信号的函数。我们提取了子带的香农熵、对数能量、范数和Sure熵度量作为相关特征,并将它们之间的组合应用于最先进的机器学习方法中。从δ节律中提取的Sure熵与香农熵的组合,或与对数能量和范数的组合,在大多数分类器中实现了类间最佳的线性可分性,准确率、灵敏度和特异性均达到100%。