EkŞİ Ziya, ÇakiroĞlu Murat, Öz Cemil, AralaŞmak Ayse, Karadelİ Hasan Hüseyin, Özcan Muhammed Emin
Sakarya University, Department of Computer Engineering, Sakarya, Turkey.
Sakarya University, Department of Mechatronic Engineering, Sakarya, Turkey.
Arq Neuropsiquiatr. 2020 Dec;78(12):789-796. doi: 10.1590/0004-282X20200094.
Magnetic resonance imaging (MRI) is the most important tool for diagnosis and follow-up in multiple sclerosis (MS). The discrimination of relapsing-remitting MS (RRMS) from secondary progressive MS (SPMS) is clinically difficult, and developing the proposal presented in this study would contribute to the process.
This study aimed to ensure the automatic classification of healthy controls, RRMS, and SPMS by using MR spectroscopy and machine learning methods.
MR spectroscopy (MRS) was performed on a total of 91 participants, distributed into healthy controls (n=30), RRMS (n=36), and SPMS (n=25). Firstly, MRS metabolites were identified using signal processing techniques. Secondly, feature extraction was performed based on MRS Spectra. N-acetylaspartate (NAA) was the most significant metabolite in differentiating MS types. Lastly, binary classifications (healthy controls-RRMS and RRMS-SPMS) were carried out according to features obtained by the Support Vector Machine algorithm.
RRMS cases were differentiated from healthy controls with 85% accuracy, 90.91% sensitivity, and 77.78% specificity. RRMS and SPMS were classified with 83.33% accuracy, 81.81% sensitivity, and 85.71% specificity.
A combined analysis of MRS and computer-aided diagnosis may be useful as a complementary imaging technique to determine MS types.
磁共振成像(MRI)是多发性硬化症(MS)诊断和随访的最重要工具。区分复发缓解型多发性硬化症(RRMS)和继发进展型多发性硬化症(SPMS)在临床上具有挑战性,而本研究提出的方法将有助于这一过程。
本研究旨在利用磁共振波谱和机器学习方法实现对健康对照、RRMS和SPMS的自动分类。
对总共91名参与者进行了磁共振波谱(MRS)检查,这些参与者被分为健康对照组(n = 30)、RRMS组(n = 36)和SPMS组(n = 25)。首先,使用信号处理技术识别MRS代谢物。其次,基于MRS光谱进行特征提取。N-乙酰天门冬氨酸(NAA)是区分MS类型的最重要代谢物。最后,根据支持向量机算法获得的特征进行二元分类(健康对照-RRMS和RRMS-SPMS)。
RRMS病例与健康对照的区分准确率为85%,灵敏度为90.91%,特异性为77.78%。RRMS和SPMS的分类准确率为83.33%,灵敏度为81.81%,特异性为85.71%。
MRS与计算机辅助诊断的联合分析作为一种辅助成像技术,可能有助于确定MS类型。