Department of Engineering and Mathematics, Sheffield Hallam University, Sheffield S1 1WB, UK.
School of Electronics and Computer Engineering, Ngee Ann Polytechnic, Singapore 599489, Singapore.
Int J Environ Res Public Health. 2021 Jul 29;18(15):8059. doi: 10.3390/ijerph18158059.
This paper presents a scientific foundation for automated stroke severity classification. We have constructed and assessed a system which extracts diagnostically relevant information from Magnetic Resonance Imaging (MRI) images. The design was based on 267 images that show the brain from individual subjects after stroke. They were labeled as either Lacunar Syndrome (LACS), Partial Anterior Circulation Syndrome (PACS), or Total Anterior Circulation Stroke (TACS). The labels indicate different physiological processes which manifest themselves in distinct image texture. The processing system was tasked with extracting texture information that could be used to classify a brain MRI image from a stroke survivor into either LACS, PACS, or TACS. We analyzed 6475 features that were obtained with Gray-Level Run Length Matrix (GLRLM), Higher Order Spectra (HOS), as well as a combination of Discrete Wavelet Transform (DWT) and Gray-Level Co-occurrence Matrix (GLCM) methods. The resulting features were ranked based on the -value extracted with the Analysis Of Variance (ANOVA) algorithm. The ranked features were used to train and test four types of Support Vector Machine (SVM) classification algorithms according to the rules of 10-fold cross-validation. We found that SVM with Radial Basis Function (RBF) kernel achieves: Accuracy (ACC) = 93.62%, Specificity (SPE) = 95.91%, Sensitivity (SEN) = 92.44%, and Dice-score = 0.95. These results indicate that computer aided stroke severity diagnosis support is possible. Such systems might lead to progress in stroke diagnosis by enabling healthcare professionals to improve diagnosis and management of stroke patients with the same resources.
本文为自动脑卒中严重程度分类提供了科学依据。我们构建并评估了一个从磁共振成像(MRI)图像中提取诊断相关信息的系统。该设计基于 267 张图像,这些图像显示了脑卒中后个体患者的大脑。这些图像被标记为腔隙综合征(LACS)、部分前循环综合征(PACS)或全前循环脑卒中(TACS)。这些标签表示不同的生理过程,它们表现为不同的图像纹理。处理系统的任务是提取可用于将脑卒中幸存者的脑 MRI 图像分类为 LACS、PACS 或 TACS 的纹理信息。我们分析了 6475 个特征,这些特征是通过灰度游程长度矩阵(GLRLM)、高阶谱(HOS)以及离散小波变换(DWT)和灰度共生矩阵(GLCM)方法的组合获得的。使用方差分析(ANOVA)算法提取的 -值对得到的特征进行了排序。根据 10 折交叉验证的规则,使用排序后的特征训练和测试了四种类型的支持向量机(SVM)分类算法。我们发现,具有径向基函数(RBF)核的 SVM 实现了:准确率(ACC)=93.62%、特异性(SPE)=95.91%、敏感性(SEN)=92.44%和 Dice 评分=0.95。这些结果表明,计算机辅助脑卒中严重程度诊断支持是可能的。此类系统可能通过使医疗保健专业人员能够在相同的资源下改善对脑卒中患者的诊断和管理,从而推动脑卒中诊断的进展。