López-Dorado A, Pérez J, Rodrigo M J, Miguel-Jiménez J M, Ortiz M, de Santiago L, López-Guillén E, Blanco R, Cavalliere C, Morla E Mª Sánchez, Boquete L, Garcia-Martin E
Biomedical Engineering Group, Department of Electronics, University of Alcalá, Alcalá de Henares, Spain.
Department of Ophthalmology, Miguel Servet University Hospital, Zaragoza, Spain.
Inf Fusion. 2021 Dec;76:157-167. doi: 10.1016/j.inffus.2021.05.006.
The purpose of this paper is to implement a computer-aided diagnosis (CAD) system for multiple sclerosis (MS) based on analysing the outer retina as assessed by multifocal electroretinograms (mfERGs). MfERG recordings taken with the RETI-port/scan 21 (Roland Consult) device from 15 eyes of patients diagnosed with incipient relapsing-remitting MS and without prior optic neuritis, and from 6 eyes of control subjects, are selected. The mfERG recordings are grouped (whole macular visual field, five rings, and four quadrants). For each group, the correlation with a normative database of adaptively filtered signals, based on empirical model decomposition (EMD) and three features from the continuous wavelet transform (CWT) domain, are obtained. Of the initial 40 features, the 4 most relevant are selected in two stages: a) using a filter method and b) using a wrapper-feature selection method. The Support Vector Machine (SVM) is used as a classifier. With the optimal CAD configuration, a Matthews correlation coefficient value of 0.89 (accuracy = 0.95, specificity = 1.0 and sensitivity = 0.93) is obtained. This study identified an outer retina dysfunction in patients with recent MS by analysing the outer retina responses in the mfERG and employing an SVM as a classifier. In conclusion, a promising new electrophysiological-biomarker method based on feature fusion for MS diagnosis was identified.
本文的目的是基于对多焦视网膜电图(mfERG)评估的外层视网膜进行分析,实现一种用于多发性硬化症(MS)的计算机辅助诊断(CAD)系统。选取了使用RETI-port/scan 21(罗兰咨询公司)设备对15只初发复发缓解型MS且无既往视神经炎的患者眼睛以及6只对照受试者眼睛进行的mfERG记录。mfERG记录按组分类(整个黄斑视野、五个环和四个象限)。对于每组,基于经验模型分解(EMD)和连续小波变换(CWT)域的三个特征,获得与自适应滤波信号规范数据库的相关性。在最初的40个特征中,分两个阶段选择4个最相关的特征:a)使用滤波方法;b)使用包装器特征选择方法。支持向量机(SVM)用作分类器。在最佳CAD配置下,马修斯相关系数值为0.89(准确率 = 0.95,特异性 = 1.0,敏感性 = 0.93)。本研究通过分析mfERG中的外层视网膜反应并采用SVM作为分类器,确定了近期MS患者存在外层视网膜功能障碍。总之,确定了一种基于特征融合的用于MS诊断的有前景的新电生理生物标志物方法。