The disease called the new coronavirus (COVID19) is a new viral respiratory disease that first appeared on January 13, 2020 in Wuhan, China. Some of the symptoms of this disease are fever, cough, shortness of breath and difficulty in breathing. In more serious cases, death may occur as a result of infection. COVID19 emerged as a pandemic that affected the whole world in a little while. The most important issue in the fight against the epidemic is the early diagnosis and follow-up of COVID19 (+) patients. Therefore, in addition to the RT-PCR test, medical imaging methods are also used when identifying COVID 19 (+) patients. In this study, an alternative approach was proposed using cough data, one of the most prominent symptoms of COVID19 (+) patients. The performances of z-normalization and min-max normalization methods were investigated on these data. All features were obtained using discrete wavelet transform method. Support vector machines (SVM) was used as classifier algorithm. The highest performances of accuracy and F1-score were obtained as 100% and 100% using the min-max normalization, respectively. On the other hand, the highest accuracy and highest F1-score performances were obtained as 99.2 % and 99.0 % using the z-normalization, respectively. In light of the results, it is clear that cough acoustic data will contribute significantly to controlling COVID19 cases.
翻译:被称为新冠状病毒(COVID19)的疾病是中国武汉首次于2020年1月13日出现的一种新的病毒性呼吸系统疾病(COVID19),该疾病是中国武汉首次出现的一种新型病毒性呼吸系统疾病,该疾病的一些症状是发烧、咳嗽、呼吸不足和呼吸困难。在更严重的病例中,死亡可能是由于感染而发生。COVID19作为一个流行病在一小会儿就影响到整个世界。防治该流行病的最重要问题是对COVID19(+)病人的早期诊断和跟踪。因此,除了RT-PCR测试外,在确定COVID19(+)病人时,还使用了医疗成像方法。在本研究中,建议采用另一种替代方法,即使用咳嗽数据,即COVI19(+)病人的最突出的症状之一。在使用离散波变变法方法取得所有特征。支持病媒机器(SVM)作为分类算法。精确度和F1核心成像法的最高性能表现,分别以100%和100%为最高直径的精确度,使用其他数据为最精确度,使用硬质的硬质数据为最精确度。