COVINet:一种用于CT和x线图像中COVID和非COVID肺炎分类的混合模型

Vasu Mittal, Akhil Kumar
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引用次数: 3

摘要

新冠肺炎大流行导致肺炎病例大幅增加,包括冠状病毒引起的肺炎病例。为了检测COVID肺炎,RT-PCR被用作新冠肺炎肺炎的主要检测工具,但胸部成像,包括CT扫描和X射线图像,也可以用作诊断肺炎(包括COVID-19肺炎)的次要重要工具。然而,对新冠肺炎肺炎胸部影像学的解释可能具有挑战性,因为影像学上的疾病迹象可能很微妙,可能与正常肺炎重叠。在本文中,我们提出了一个名为COVINet的混合模型,该模型使用ResNet-101作为特征提取器,使用经典的K-最近邻作为分类器,使我们能够在X射线和CT图像中给出检测COVID肺炎的自动结果。所提出的混合模型实现了98.6%的分类准确率。该模型的准确度、召回率和F1评分值也令人印象深刻,从98-99%不等。为了支持和支持所提出的模型,已经开发了几种基于CNN的特征提取器和经典的机器学习分类器。利用组合的结果表明,我们的模型可以显著提高胸部成像检测新冠肺炎肺炎的准确性和准确性,这有可能成为放射科医生和医生早期识别和诊断疾病的宝贵资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COVINet: A hybrid model for classification of COVID and Non-COVID pneumonia in CT and X-Ray imagery

The COVID-19 pandemic has resulted in a significant increase in the number of pneumonia cases, including those caused by the Coronavirus. To detect COVID pneumonia, RT-PCR is used as the primary detection tool for COVID-19 pneumonia but chest imaging, including CT scans and X-Ray imagery, can also be used as a secondary important tool for the diagnosis of pneumonia, including COVID pneumonia. However, the interpretation of chest imaging in COVID-19 pneumonia can be challenging, as the signs of the disease on imaging may be subtle and may overlap with normal pneumonia. In this paper, we propose a hybrid model with the name COVINet which uses ResNet-101 as the feature extractor and classical K-Nearest Neighbors as the classifier that led us to give automated results for detecting COVID pneumonia in X-Rays and CT imagery. The proposed hybrid model achieved a classification accuracy of 98.6%. The model's precision, recall, and F1-Score values were also impressive, ranging from 98-99%. To back and support the proposed model, several CNN-based feature extractors and classical machine learning classifiers have been exploited. The outcome with exploited combinations suggests that our model can significantly enhance the accuracy and precision of detecting COVID-19 pneumonia on chest imaging, and this holds the potential of being a valuable resource for early identification and diagnosis of the illness by radiologists and medical practitioners.

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