基于迁移学习优化调谐的CNN识别COVID-19 x射线图像

Grega Vrbancic, Špela Pečnik, V. Podgorelec
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引用次数: 7

摘要

在COVID-19流行的早期阶段,研究人员正在寻找有关新型冠状病毒SARS-CoV-2的所有可能的见解。其中一种可能性是对COVID-19患者的x射线图像进行深入分析。我们首先开发了一种新的适应分类方法,能够根据胸部x射线识别COVID-19患者,然后采用了一种局部可解释的模型不可知论解释方法来提供见解。该分类方法使用灰狼优化器算法来优化CNN迁移学习调优过程中的超参数值。然后使用训练好的模型对一组x射线图像进行分类,并在此基础上进行定性解释。该方法在842张x射线图像数据集上进行了测试,总体准确率为94.76%,优于传统CNN方法和对比基线迁移学习方法。获得的高分类准确率使我们能够进行定性深入分析,这表明在识别COVID-19病例时,有一些区域更重要,如主动脉弓或隆突和右主支气管。事实证明,提出的分类方法非常有竞争力,可以进行深入分析,这是获得COVID-19疾病特征的定性见解所必需的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of COVID-19 X-ray Images using CNN with Optimized Tuning of Transfer Learning
At this early stage in the COVID-19 epidemic, researchers are looking for all possible insights into the new corona virus SARS-CoV-2. One of the possibilities is an in-depth analysis of X-ray images from COVID-19 patients. We first developed a new adapted classification method that is able to identify COVID-19 patients based on a chest X-ray, and then adopted a local interpretable model-agnostic explanations approach to provide the insights. The classification method uses a grey wolf optimizer algorithm for the purpose of optimizing hyper-parameter values within the transfer learning tuning of a CNN. The trained model is then used to classify a set of X-ray images, upon which the qualitative explanations are performed. The presented approach was tested on a dataset of 842 X-ray images, with the overall accuracy of 94.76%, outperforming both conventional CNN method as well as the compared baseline transfer learning method. The achieved high classification accuracy enabled us to perform a qualitative in-depth analysis, which revealed that there are some regions of greater importance when identifying COVID-19 cases, like aortic arch or carina and right main bronchus. The proposed classification method proved to be very competitive, enabling one to perform an in-depth analysis, necessary to gain qualitative insights into the characteristics of COVID-19 disease.
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