Gray Level Co-Occurrence Matrix and RVFL for Covid-19 Diagnosis

Wenhao Tang
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Abstract

As the widespread transmission of COVID-19 has continued to influence human health since late 2019, more intersections between artificial intelligence and the medical field have arisen. For CT images, manual differentiation between COVID-19-infected and healthy control images is not as effective and fast as AI. This study performed experiments on a dataset containing 640 samples, 320 of which were COVID-19-infected, and the rest were healthy controls. This experiment combines the gray-level co-occurrence matrix (GLCM) and random vector function link (RVFL). The role of GLCM and RVFL is to extract image features and classify images, respectively. The experimental results of my proposed GLCM-RVFL model are validated using K-fold cross-validation, and the indicators are 78.81±1.75%, 77.08±0.68%, 77.46±0.73%, 54.22±1.35%, and 77.48±0.74% for sensitivity, accuracy, F1-score, MCC, and FMI, respectively, which also confirms that the proposed model performs well on the COVID-19 detection task. After comparing with six state-of-the-art COVID-19 detection, I ensured that my model achieved higher performance.
灰度共生矩阵与RVFL诊断Covid-19
自2019年底以来,随着COVID-19的广泛传播继续影响人类健康,人工智能和医疗领域之间出现了更多的交叉点。对于CT图像,人工区分covid -19感染图像和健康对照图像不如人工智能有效和快速。本研究在包含640个样本的数据集上进行了实验,其中320个样本为新冠病毒感染者,其余为健康对照组。本实验将灰度共生矩阵(GLCM)和随机向量函数链接(RVFL)相结合。GLCM和RVFL的作用分别是提取图像特征和对图像进行分类。采用K-fold交叉验证对本文提出的GLCM-RVFL模型的实验结果进行了验证,灵敏度、准确性、f1评分、MCC和FMI指标分别为78.81±1.75%、77.08±0.68%、77.46±0.73%、54.22±1.35%和77.48±0.74%,也证实了本文提出的模型在COVID-19检测任务上表现良好。在与六种最先进的COVID-19检测进行比较后,我确保了我的模型获得了更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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