Abstract

Mycobacterial infections continue to greatly affect global health and result in challenging histopathological examinations using digital whole-slide images (WSIs), histopathological methods could be made more convenient. However, screening for stained bacilli is a highly laborious task for pathologists due to the microscopic and inconsistent appearance of bacilli. This study proposed a computer-aided detection (CAD) system based on deep learning to automatically detect acid-fast stained mycobacteria. A total of 613 bacillus-positive image blocks and 1202 negative image blocks were cropped from WSIs (at approximately 20 × 20 pixels) and divided into training and testing samples of bacillus images. After randomly selecting 80% of the samples as the training set and the remaining 20% of samples as the testing set, a transfer learning mechanism based on a deep convolutional neural network (DCNN) was applied with a pretrained AlexNet to the target bacillus image blocks. The transferred DCNN model generated the probability that each image block contained a bacillus. A probability higher than 0.5 was regarded as positive for a bacillus. Consequently, the DCNN model achieved an accuracy of 95.3%, a sensitivity of 93.5%, and a specificity of 96.3%. For samples without color information, the performances were an accuracy of 73.8%, a sensitivity of 70.7%, and a specificity of 75.4%. The proposed DCNN model successfully distinguished bacilli from other tissues with promising accuracy. Meanwhile, the contribution of color information was revealed. This information will be helpful for pathologists to establish a more efficient diagnostic procedure.

Highlights

  • According to a report from the World Health Organization, 1.6 million people died fromMycobacterium tuberculosis infection in 2017 [1]

  • According to the gold standard, the deep convolutional neural network (DCNN) model generated the likelihood of each image block being a bacillus as a probability

  • The DCNN model yielded an accuracy of 96.6%, a sensitivity of 94.3%, and a specificity of 98.0% for the splendid group and an accuracy of 95.3%, a sensitivity of

Read more

Summary

Introduction

According to a report from the World Health Organization, 1.6 million people died from. Mycobacterium tuberculosis infection in 2017 [1]. Most mycobacterial infections occur in developing countries, they can spread via global transportation. The clinical patterns of mycobacterial infection in immunocompromised patients are usually nonspecific and atypical from those in healthy individuals, leading to a delayed diagnosis or misdiagnosis due to inadequate biopsy [2]. Inadequate biopsy and poor culture or smear techniques may cause a delayed diagnosis. Sci. 2020, 10, 4059 and subsequently death in patients [3]. A correct and timely diagnostic tool is important for mycobacterial disease control

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call