Sonkaya Zeynep Z, Özturk Bilgin, Sonkaya Rıza, Taskiran Esra, Karadas Ömer
Department of Experimental Linguistics, Ankara University, 06590 Ankara, Turkey.
Department of Neurology, Gülhane Medicine Faculty, Health Science University, 06010 Ankara, Turkey.
Brain Sci. 2024 Apr 16;14(4):384. doi: 10.3390/brainsci14040384.
Multiple sclerosis (MS) is one of the chronic and neurodegenerative diseases of the central nervous system (CNS). It generally affects motor, sensory, cerebellar, cognitive, and language functions. It is thought that identifying MS speech disorders using quantitative methods will make a significant contribution to physicians in the diagnosis and follow-up of MS patients. In this study, it was aimed to investigate the speech disorders of MS via objective speech analysis techniques. The study was conducted on 20 patients diagnosed with MS according to McDonald's 2017 criteria and 20 healthy volunteers without any speech or voice pathology. Speech data obtained from patients and healthy individuals were analyzed with the PRAAT speech analysis program, and classification algorithms were tested to determine the most effective classifier in separating specific speech features of MS disease. As a result of the study, the K-nearest neighbor algorithm (K-NN) was found to be the most successful classifier (95%) in distinguishing pathological sounds which were seen in MS patients from those in healthy individuals. The findings obtained in our study can be considered as preliminary data to determine the voice characteristics of MS patients.
多发性硬化症(MS)是中枢神经系统(CNS)的慢性神经退行性疾病之一。它通常会影响运动、感觉、小脑、认知和语言功能。人们认为,使用定量方法识别MS言语障碍将对医生诊断和随访MS患者做出重大贡献。在本研究中,旨在通过客观言语分析技术研究MS的言语障碍。该研究对20名根据2017年麦克唐纳标准诊断为MS的患者和20名没有任何言语或嗓音病理学问题的健康志愿者进行。使用PRAAT言语分析程序对从患者和健康个体获得的言语数据进行分析,并测试分类算法以确定在分离MS疾病特定言语特征方面最有效的分类器。研究结果表明,在区分MS患者中出现的病理性声音与健康个体中的病理性声音方面,K近邻算法(K-NN)是最成功的分类器(95%)。我们研究中获得的结果可被视为确定MS患者嗓音特征的初步数据。