使用肺部cct图像检测Covid-19变种和Omicron的距离分类性能

Abdullah Fauzan, Salnan Sabdo Wibowo, Munziah Ahmad
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引用次数: 0

摘要

在Covid-19大流行期间,有两种流行的Covid-19变体,即Delta和Omicron。需要一种非实验室方法来检测Covid-19的丁型和欧米克隆变体,以防止暴露于这两种变体的高风险。本研究提出使用基于距离分类的肺部计算机断层扫描(ct)图像检测COVID-19 Delta和Omicron变体。有5种基于距离的分类方法用于确定Delta和Omicron变体Covid-19分类的最佳性能。通过比较各距离方法的正确率、精密度和召回率来衡量性能。本研究使用的距离法为欧几里得、曼哈顿、闵可夫斯基、切比雪夫和堪培拉。使用的数据集是从Kaggle数据库下载的。总共有440张肺部ct扫描图像,其中分为220张Delta和Omicron变体的Covid-19图像和220张非Covid-19图像作为训练数据。同时,有140张Delta和Omicron变体的Covid-19图像和140张非Covid-19图像的测试数据。通过对基于距离的分类方法性能的比较,得出曼哈顿距离方法在其他4种距离方法中性能最好的结论。曼哈顿距离的准确率为58.57%,精密度为56.52%,召回率为74.28%。同时,欧氏距离的精度最低,为48.21%。闵可夫斯基距离的查准率和查全率最低,分别为48.41%和54.28%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performa Klasifikasi Berbasis Jarak untuk Deteksi Covid-19 Varian Delta dan Omicron Menggunakan Citra CT-Scan Paru-Paru
During the Covid-19 pandemic, there were two popular Covid-19 variants, namely Delta and Omicron. A non-laboratory approach is needed to detect the Delta and Omicron variants of Covid-19 to prevent a high risk of exposure to these two variants. This study proposes the detection of COVID-19 variants of Delta and Omicron using computerized tomography scan (CT-scan) images of the lungs using distance-based classification. There are 5 distance-based classification methods used to determine the best performance for the Delta and Omicron variant Covid-19 classification. Performance is measured based on the comparison of accuracy, precision and recall of each distance method. The distance method used in this study is Euclidean, Manhattan, Minkowski, Chebyshev, and Canberra. The dataset used was downloaded from the Kaggle database. There are 440 total CT-scan images of the lungs which are divided into 220 Covid-19 images of the Delta and Omicron variants and 220 non-Covid-19 images as training data. Meanwhile, there are test data of 140 Covid-19 images for the Delta and Omicron variants and 140 non-Covid-19 images. Based on the comparison of the performance of distance-based classification, it is concluded that the Manhattan Distance has the best performance compared to the other 4 distance methods. Manhattan distance has an accuracy of 58.57%, precision of 56.52%, and recall with a value of 74.28%. Meanwhile, the lowest accuracy value is owned by the Eucliean Distance of 48.21%. Then, the Minkowski distance has the lowest precision and recall with values ​​of 48.41% and 54.28%.
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