Literature DB >> 32758706

A CNN-based active learning framework to identify mycobacteria in digitized Ziehl-Neelsen stained human tissues.

Mu Yang1, Karolina Nurzynska2, Ann E Walts3, Arkadiusz Gertych4.   

Abstract

Tuberculosis is the most common mycobacterial disease that affects humans worldwide. Rapid and reliable diagnosis of mycobacteria is crucial to identify infected individuals, to initiate and monitor treatment and to minimize or prevent transmission. Microscopic identification of acid-fast mycobacteria (AFB) in tissue sections is usually accomplished by examining Ziehl-Neelsen (ZN) stained slides in which AFB appear bright red against the blue background. Because the ZN-stained slides require time consuming and meticulous screening by an experienced pathologist, our team developed a machine learning pipeline to classify digitized ZN-stained slides as AFB-positive or AFB-negative. The pipeline includes two convolutional neural network (CNN) models to recognize tiles containing AFB, and a logistic regression (LR) model to classify slides based on features from AFB-probability maps assembled from the CNN tile-based classification results. The first CNN was trained using tiles from 6 AFB-positive and 8 AFB-negative slides, and the second CNN was trained using the initial tile set expanded by additional tiles from 19 AFB-negative slides selected within an active learning framework. When evaluated on a separate set of tiles, the two CNNs yielded F1 scores of 99.03% and 98.75%, respectively, and were used to classify tiles in a separate set of 134 slides (46 AFB-positive and 88 AFB-negative). The classification yielded two AFB-probability maps, one for each CNN. The LR model was then 10-fold cross-validated using the average of feature vectors extracted from the AFB-probability maps generated by each CNN. The feature vector consisted of seven features of the AFB-probability map histogram and the positive tile rate (PTR). The sensitivity (87.13%), specificity (87.62%) and F1 (80.18%) achieved by this model were superior to the baseline performance of PTR-based separation of slides that yielded F1 scores of 73.13% and 66.67% in the AFB-probability maps outputted by the CNN trained within the active learning framework and the CNN trained only on the initial set of slides, respectively. Our CNNs outperformed several recently published models for AFB detection. Active learning induced robust learning of features by the CNN and led to improved LR classification performance of slides. In the 52 AFB-positive slides used in the pipeline development, the AFB were infrequent, predominantly single and only rarely found in small clusters. Our pipeline can classify slides and visualize suspected AFB-positive areas in each slide, and thus potentially facilitate evaluation of ZN-stained tissue sections for AFB.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Active learning; Bacilli detection; Computational pathology; Computer-assisted diagnosis; Deep learning; Tuberculosis

Mesh:

Year:  2020        PMID: 32758706     DOI: 10.1016/j.compmedimag.2020.101752

Source DB:  PubMed          Journal:  Comput Med Imaging Graph        ISSN: 0895-6111            Impact factor:   4.790


  5 in total

Review 1.  The state of the art for artificial intelligence in lung digital pathology.

Authors:  Vidya Sankar Viswanathan; Paula Toro; Germán Corredor; Sanjay Mukhopadhyay; Anant Madabhushi
Journal:  J Pathol       Date:  2022-06-20       Impact factor: 9.883

2.  A New Artificial Intelligence-Based Method for Identifying Mycobacterium Tuberculosis in Ziehl-Neelsen Stain on Tissue.

Authors:  Sabina Zurac; Cristian Mogodici; Teodor Poncu; Mihai Trăscău; Cristiana Popp; Luciana Nichita; Mirela Cioplea; Bogdan Ceachi; Liana Sticlaru; Alexandra Cioroianu; Mihai Busca; Oana Stefan; Irina Tudor; Andrei Voicu; Daliana Stanescu; Petronel Mustatea; Carmen Dumitru; Alexandra Bastian
Journal:  Diagnostics (Basel)       Date:  2022-06-17

3.  Deep Neural Network-Aided Histopathological Analysis of Myocardial Injury.

Authors:  Yiping Jiao; Jie Yuan; Oluwatofunmi Modupeoluwa Sodimu; Yong Qiang; Yichen Ding
Journal:  Front Cardiovasc Med       Date:  2022-01-10

4.  Interactive Deep Learning for Shelf Life Prediction of Muskmelons Based on an Active Learning Approach.

Authors:  Dominique Albert-Weiss; Ahmad Osman
Journal:  Sensors (Basel)       Date:  2022-01-06       Impact factor: 3.576

5.  Deep-Learning-Aided Detection of Mycobacteria in Pathology Specimens Increases the Sensitivity in Early Diagnosis of Pulmonary Tuberculosis Compared with Bacteriology Tests.

Authors:  Yoshiaki Zaizen; Yuki Kanahori; Sousuke Ishijima; Yuka Kitamura; Han-Seung Yoon; Mutsumi Ozasa; Hiroshi Mukae; Andrey Bychkov; Tomoaki Hoshino; Junya Fukuoka
Journal:  Diagnostics (Basel)       Date:  2022-03-14
  5 in total

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