新型冠状病毒检测机器学习算法性能分析

A. Thakare, Pranjali G. Gulhane, S. Chaudhari, H. Baradkar
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引用次数: 0

摘要

2019年12月,新型冠状病毒病(COVID-19)在中国湖北武汉被发现,并已在全球传播。当病人的冠状病毒病恶化时,他的生命处于危险之中。冠状病毒攻击肺部。今天的诊断工具只能搜索病毒性疾病,这欺骗了医生。所有接受相同治疗的患者对感染较少的患者造成伤害。本出版物描述了对感染者的非侵入性治疗。解剖胸部x光片以检查冠状病毒有助于调查和预测COVID-19患者。我们提供了一种混合检测新冠病毒的方法。CNN和SVM识别Covid。由于x射线图片不一致,所以使用CNN进行特征提取。为了在CNN之前构建训练数据集,我们使用了数据增强。数据增强提高了训练数据集的数量和质量。支持向量机用于分类,因为它可以容忍特征差异。其主要目标是帮助临床医生确定胸部感染的严重程度,以便他们能够实施挽救生命的治疗。深度学习和基于机器学习的技术将确定胸部感染的程度,并提供最佳药物,避免对所有患者进行昂贵的治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Machine Learning Algorithms for COVID-19 Detection
The Novel Coronavirus Illness 2019 (COVID-19) was found in Wuhan, Hubei, China, in December 2019 and has since spread globally. When the patient's corona sickness worsened, his life was in danger. Coronavirus assaults the lungs. Diagnostic kits today only search for viral illnesses, which deceives doctors. All patients receiving the same treatment harm patients with less infection. This publication describes non-invasive treatment for infected people. Dissecting chest X-ray pictures to examine the coronavirus helps investigate and predict COVID-19 patients. We offer a hybrid method for detecting Covid. CNN and SVM identify Covid. Because X-ray pictures are inconsistent, CNN is used for feature extraction. To construct a training dataset before CNN, we used data augmentation. Data augmentation increases the training dataset's amount and quality. SVM is used for classification since it tolerates feature differences. The main goal is to help clinical doctors determine the severity of a chest infection so they can administer life-saving treatment. Deep learning and machine learning-based techniques will determine the degree of chest infection and lead to optimal medication, avoiding expensive treatment for all patients.
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