A Systematic Literature Review of Deep Learning Algorithms for Segmentation of the COVID-19 Infection

Shroog Alshomrani, M. Arif, Mohammed A. Al Ghamdi
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Abstract

Coronavirus has infected more than 753 million people, ranging in severity from one person to another, where more than six million infected people died worldwide. Computer-aided diagnostic (CAD) with artificial intelligence (AI) showed outstanding performance in effectively diagnosing this virus in real-time. Computed tomography is a complementary diagnostic tool to clarify the damage of COVID-19 in the lungs even before symptoms appear in patients. This paper conducts a systematic literature review of deep learning methods for classifying the segmentation of COVID-19 infection in the lungs. We used the methodology of systematic reviews and meta-analyses (PRISMA) flow method. This research aims to systematically analyze the supervised deep learning methods, open resource datasets, data augmentation methods, and loss functions used for various segment shapes of COVID-19 infection from computerized tomography (CT) chest images. We have selected 56 primary studies relevant to the topic of the paper. We have compared different aspects of the algorithms used to segment infected areas in the CT images. Limitations to deep learning in the segmentation of infected areas still need to be developed to predict smaller regions of infection at the beginning of their appearance.
深度学习算法在COVID-19感染分割中的系统文献综述
冠状病毒感染了超过7.53亿人,严重程度因人而异,全球有600多万感染者死亡。具有人工智能(AI)的计算机辅助诊断(CAD)在实时有效诊断该病毒方面表现出色。计算机断层扫描是一种辅助诊断工具,可以在患者出现症状之前就明确COVID-19对肺部的损害。本文对深度学习方法在COVID-19肺部感染分割分类中的应用进行了系统的文献综述。我们采用了系统综述和荟萃分析(PRISMA)流程方法。本研究旨在系统分析计算机断层扫描(CT)胸部图像中各种形状的COVID-19感染的监督深度学习方法、开放资源数据集、数据增强方法和损失函数。我们选择了56项与本文主题相关的初级研究。我们比较了CT图像中用于分割感染区域的算法的不同方面。深度学习在感染区域分割方面的局限性仍有待开发,以便在感染区域出现时预测较小的感染区域。
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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