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
{"title":"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","authors":"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","doi":"10.1016/j.pbiomolbio.2023.03.002","DOIUrl":null,"url":null,"abstract":"<div><p><span>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 (</span><em>Mycobacterium tuberculosis</em>) 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.</p></div>","PeriodicalId":54554,"journal":{"name":"Progress in Biophysics & Molecular Biology","volume":"180 ","pages":"Pages 1-18"},"PeriodicalIF":3.2000,"publicationDate":"2023-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"A systematic review and repeatability study on the use of deep learning for classifying and detecting tuberculosis bacilli in microscopic images\",\"authors\":\"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\",\"doi\":\"10.1016/j.pbiomolbio.2023.03.002\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p><span>Tuberculosis (TB) is among the leading causes of death worldwide from a single infectious agent. 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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. 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A systematic review and repeatability study on the use of deep learning for classifying and detecting tuberculosis bacilli in microscopic images
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.
期刊介绍:
Progress in Biophysics & Molecular Biology is an international review journal and covers the ground between the physical and biological sciences since its launch in 1950. It indicates to the physicist the great variety of unsolved problems awaiting attention in biology and medicine. The biologist and biochemist will find that this journal presents new and stimulating ideas and novel approaches to studying and influencing structural and functional properties of the living organism. This journal will be of particular interest to biophysicists, biologists, biochemists, cell physiologists, systems biologists, and molecular biologists.