CoronaNeXt Evaluating the Performance of the Laplacian Operator in Diagnosing COVID-19 from Chest X-Rays

R. Bhansali, Rahul Kumar
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引用次数: 1

Abstract

In recent years, usage of deep learning models for medical image classification tasks has grown exponentially due to their state of the art accuracy and efficiency; however, the performance of these models are often limited by insufficient publicly available data. In this study, we continue our previous work in exploring the applications of the Laplace Operator, a detail enhancing image filter, in deep learning models in order to overcome these performance plateaus. Specifically, we evaluate the performance of ResNet-18 in diagnosing COVID-19 from a relatively small dataset of X-ray images. When comparing the performance of our model, dubbed CoronaNeXt, on images without the Laplacian applied to images with the Laplacian applied, we find significant increases in all maximum validation metrics: accuracy improved from 87.6% to 94.8%; F1 score improved from 0.860 to 0.968; specificity improved from 0.865 to 0.944; and sensitivity improved from 0.885 to 0.992. Based on these results, we describe the potential of the Laplacian Operator in drastically improving the performance of deep learning architectures in medical image classification tasks, particularly when utilizing small to medium sized datasets. Notably, sensitivity underwent the most significant improvement, correlating with the results achieved in our previous work using the CT modality. We hope our research will spark further exploration of the Laplace Operator and other derivative-based image preprocessing methodologies in conjunction with powerful deep learning models for medical image tasks. Keywords— COVID-19, Chest X-rays, Laplace Operator, Deep Learning
CoronaNeXt评估拉普拉斯算子在胸部x线诊断COVID-19中的表现
近年来,深度学习模型在医学图像分类任务中的使用以指数级增长,因为它们具有最先进的准确性和效率;然而,这些模型的性能常常受到公开可用数据不足的限制。在本研究中,我们继续之前的工作,探索拉普拉斯算子(一种细节增强图像滤波器)在深度学习模型中的应用,以克服这些性能瓶颈。具体来说,我们从相对较小的x射线图像数据集评估了ResNet-18诊断COVID-19的性能。当比较我们的模型(称为CoronaNeXt)在未应用拉普拉斯算子的图像上与应用拉普拉斯算子的图像上的性能时,我们发现所有最大验证指标都有显著提高:准确率从87.6%提高到94.8%;F1评分由0.860提高到0.968;特异性由0.865提高到0.944;灵敏度由0.885提高到0.992。基于这些结果,我们描述了拉普拉斯算子在大幅提高深度学习架构在医学图像分类任务中的性能方面的潜力,特别是在利用中小型数据集时。值得注意的是,灵敏度得到了最显著的提高,这与我们之前使用CT方式所取得的结果相关。我们希望我们的研究将激发拉普拉斯算子和其他基于导数的图像预处理方法的进一步探索,并结合强大的深度学习模型用于医学图像任务。关键词:COVID-19,胸部x光,拉普拉斯算子,深度学习
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