R. A. Hamaamin, Shakhawan H Wady, Ali W. Kareem Sangawi
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引用次数: 0
摘要
X 射线成像是诊断 COVID-19 的一项重要技术,也是医学领域分析各种疾病的重要工具。有许多方法可用于促进这种分析。在这些技术中,一种是使用特征提取器,它能有效捕捉 X 光图像中的相关特征。在最近的一项研究中,我们使用 25 种不同的特征提取器对 COVID-19 病例的 X 光图像进行了全面检查。这些图像被分为两类:COVID-19 阳性和非 COVID-19 阳性。为了进行全面评估,对这些分类图像采用了一系列机器学习分类器。实验结果衡量了每个特征对 COVID-19 相关图像的影响程度。这项评估旨在确定各种特征提取器在检测能力方面的功效水平。因此,在效果较好的特征提取器和效果较差的特征提取器之间出现了区别,从而揭示了它们对检测过程的不同贡献程度。此外,不同分类器的比较性能也很明显,揭示了与同类分类器相比表现出卓越性能的分类器。
THE EFFECT OF FEATURE EXTRACTION ON COVID-19 CLASSIFICATION
X-ray imaging stands as a prominent technique for diagnosing COVID-19, and it also serves as a crucial tool in the medical field for the analysis of various diseases. Numerous approaches are available to facilitate this analysis. Among these techniques, one involves the utilization of a Feature Extractor, which effectively captures pertinent characteristics from X-ray images. In a recent study, a comprehensive examination was conducted using 25 distinct feature extractors on X-ray images specific to COVID-19 cases. These images were categorized into two classes: COVID-19-positive and non-COVID-19. To enable a thorough evaluation, a sequence of machine learning classifiers was employed on these categorized images. The outcomes derived from this experimentation gauged the magnitude of impact that each individual feature exerted on COVID-19-related imagery. This assessment aimed to determine the efficacy levels of various feature extractors in terms of detection capability. Consequently, a distinction emerged between the more effective and less effective feature extractors, shedding light on their varying degrees of contribution to the detection process. Moreover, the comparative performance of different classifiers became evident, revealing the classifiers that exhibited superior performance when measured against their counterparts.