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医学图像处理与 COVID-19:文献回顾与文献计量分析。

Medical image processing and COVID-19: A literature review and bibliometric analysis.

机构信息

Computer Department, Applied College, Imam Abdulrahman Bin Faisal University, P.O. Box. 1982, Dammam, Saudi Arabia.

Centre for Global Sustainability Studies (CGSS), Universiti Sains Malaysia, 11800, USM Penang, Malaysia.

出版信息

J Infect Public Health. 2022 Jan;15(1):75-93. doi: 10.1016/j.jiph.2021.11.013. Epub 2021 Nov 17.

DOI:10.1016/j.jiph.2021.11.013
PMID:34836799
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8596659/
Abstract

COVID-19 crisis has placed medical systems over the world under unprecedented and growing pressure. Medical imaging processing can help in the diagnosis, treatment, and early detection of diseases. It has been considered as one of the modern technologies applied to fight against the COVID-19 crisis. Although several artificial intelligence, machine learning, and deep learning techniques have been deployed in medical image processing in the context of COVID-19 disease, there is a lack of research considering systematic literature review and categorization of published studies in this field. A systematic review locates, assesses, and interprets research outcomes to address a predetermined research goal to present evidence-based practical and theoretical insights. The main goal of this study is to present a literature review of the deployed methods of medical image processing in the context of the COVID-19 crisis. With this in mind, the studies available in reliable databases were retrieved, studied, evaluated, and synthesized. Based on the in-depth review of literature, this study structured a conceptual map that outlined three multi-layered folds: data gathering and description, main steps of image processing, and evaluation metrics. The main research themes were elaborated in each fold, allowing the authors to recommend upcoming research paths for scholars. The outcomes of this review highlighted that several methods have been adopted to classify the images related to the diagnosis and detection of COVID-19. The adopted methods have presented promising outcomes in terms of accuracy, cost, and detection speed.

摘要

新冠疫情给全球医疗系统带来了前所未有的巨大压力。医学影像处理有助于疾病的诊断、治疗和早期发现。它被认为是应用于抗击新冠疫情的现代技术之一。尽管在新冠疫情背景下已经部署了几种人工智能、机器学习和深度学习技术来进行医学图像处理,但缺乏对该领域发表研究的系统文献综述和分类研究。系统评价旨在查找、评估和解释研究结果,以实现预定的研究目标,提供基于证据的实践和理论见解。本研究的主要目的是对新冠疫情背景下医学图像处理所采用的方法进行文献综述。为此,检索、研究、评估和综合了可靠数据库中的现有研究。基于对文献的深入回顾,本研究构建了一个概念图,概述了三个多层次的折叠:数据收集和描述、图像处理的主要步骤和评估指标。在每个折叠中阐述了主要的研究主题,使作者能够为学者推荐未来的研究路径。本综述的结果表明,已经采用了几种方法来对与新冠病毒诊断和检测相关的图像进行分类。所采用的方法在准确性、成本和检测速度方面都取得了有前景的结果。

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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1c06/8596659/41b93db05e51/gr2_lrg.jpg
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