A systematic review and repeatability study on the use of deep learning for classifying and detecting tuberculosis bacilli in microscopic images

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Thales Francisco Mota Carvalho , Vívian Ludimila Aguiar Santos , Jose Cleydson Ferreira Silva , Lida Jouca de Assis Figueredo , Silvana Spíndola de Miranda , Ricardo de Oliveira Duarte , Frederico Gadelha Guimarães
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Abstract

Tuberculosis (TB) is among the leading causes of death worldwide from a single infectious agent. This disease usually affects the lungs (pulmonary TB) and can be cured in most cases with a quick diagnosis and proper treatment. Microscopic sputum smear is widely used to diagnose and manage pulmonary TB. Despite being relatively fast and low cost, it can be exhausting because it depends on manually counting TB bacilli (Mycobacterium tuberculosis) in microscope images. In this context, different Deep Learning (DL) techniques are proposed in the literature to assist in performing smear microscopy. This article presents a systematic review based on the PRISMA procedure, which investigates which DL techniques can contribute to classifying TB bacilli in microscopic images of sputum smears using the Ziehl-Nielsen method. After an extensive search and a careful inclusion/exclusion procedure, 28 papers were selected from a total of 400 papers retrieved from nine databases. Based on these articles, the DL techniques are presented as possible solutions to improve smear microscopy. The main concepts necessary to understand how such techniques are proposed and used are also presented. In addition, replication work is also carried out, verifying reproducibility and comparing different works in the literature. In this review, we look at how DL techniques can be a partner to make sputum smear microscopy faster and more efficient. We also identify some gaps in the literature that can guide which issues can be addressed in other works to contribute to the practical use of these methods in laboratories.

深度学习用于显微镜图像中结核杆菌分类和检测的系统回顾和可重复性研究
结核病是全球单一传染源导致死亡的主要原因之一。这种疾病通常影响肺部(肺结核),在大多数情况下,只要快速诊断和适当治疗,就可以治愈。显微镜痰涂片广泛用于诊断和治疗肺结核。尽管它相对快速且成本较低,但它可能会让人筋疲力尽,因为它依赖于在显微镜图像中手动计数结核杆菌(结核分枝杆菌)。在这种情况下,文献中提出了不同的深度学习(DL)技术来帮助进行涂片显微镜检查。本文基于PRISMA程序进行了系统综述,研究了哪些DL技术有助于使用Ziehl-Nielsen方法在痰涂片显微镜图像中对结核杆菌进行分类。经过广泛的搜索和仔细的纳入/排除程序,从9个数据库中检索的400篇论文中选出了28篇。在这些文章的基础上,提出了DL技术作为改进涂片显微镜的可能解决方案。还介绍了理解如何提出和使用此类技术所需的主要概念。此外,还进行了复制工作,验证了再现性,并比较了文献中的不同作品。在这篇综述中,我们将探讨DL技术如何成为合作伙伴,使痰涂片显微镜检查更快、更有效。我们还发现了文献中的一些空白,这些空白可以指导哪些问题可以在其他工作中解决,以促进这些方法在实验室中的实际应用。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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