Deep Learning-Based Prediction of COVID-19 and Viral Pneumonia from Chest X-Ray Images

S. Peruvazhuthi
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Abstract

Abstract: In recent times, the novel Coronavirus disease (COVID-19) has emerged as one of the most infectious diseases, causing significant public health crises across over 200 nations worldwide. Given the challenges associated with the timeconsuming and error-prone nature of detecting COVID-19 through Reverse Transcription-Polymerase Chain Reaction (RTPCR), there is a growing reliance on alternative methods, such as examining chest X-ray (CXR) images. Viral pneumonia symptoms include a persistent cough with mucus, fever, chills, shortness of breath, and chest pain, especially during deep breaths or coughing. These symptoms often overlap significantly with those of other respiratory infections, including COVID-19. Accurately predicting COVID-19 severity and distinguishing it from viral pneumonia is crucial for effective patient management. Deep learning models offer promise in automating this process. The chest X-ray (CXR) images undergo preprocessing through Contrast Limited Adaptive Histogram Equalization (CLAHE) to improve their quality. These enhanced images are fed into ResNet50 and EfficientNet-B0, both renowned deep learning models. Comparative evaluation demonstrates ResNet50 achieving an accuracy of 92.58%, whereas EfficientNet-B0 achieves a higher accuracy of 93.08%. This study underscores the efficacy of deep learning in COVID-19 prediction. The findings suggest EfficientNet-B0’s potential for improved diagnostic accuracy. This methodology presents a promising approach for automated, accurate COVID-19 severity prediction and differentiation from viral pneumonia, aiding timely medical interventions.
基于深度学习的胸部 X 光图像 COVID-19 和病毒性肺炎预测
摘要:近来,新型冠状病毒病(COVID-19)已成为传染性最强的疾病之一,在全球 200 多个国家造成了严重的公共卫生危机。通过反转录聚合酶链式反应(RTPCR)检测 COVID-19 既耗时又容易出错,因此人们越来越依赖于其他方法,如检查胸部 X 光(CXR)图像。病毒性肺炎的症状包括持续咳嗽并伴有粘液、发热、寒战、气短和胸痛,尤其是在深呼吸或咳嗽时。这些症状往往与其他呼吸道感染(包括 COVID-19)的症状明显重叠。准确预测 COVID-19 的严重程度并将其与病毒性肺炎区分开来,对于有效管理患者至关重要。深度学习模型有望实现这一过程的自动化。通过对比度限制自适应直方图均衡化(CLAHE)对胸部 X 光(CXR)图像进行预处理,以提高图像质量。这些增强后的图像被输入 ResNet50 和 EfficientNet-B0,这两个模型都是著名的深度学习模型。对比评估表明,ResNet50 的准确率为 92.58%,而 EfficientNet-B0 的准确率更高,达到 93.08%。这项研究强调了深度学习在 COVID-19 预测中的功效。研究结果表明,EfficientNet-B0 具有提高诊断准确性的潜力。该方法为自动、准确预测 COVID-19 严重程度和区分病毒性肺炎提供了一种可行的方法,有助于及时采取医疗干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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