Title
Automatic diagnostics of tuberculosis using convolutional neural networks analysis of MODS digital images
Date Issued
01 February 2019
Access level
open access
Resource Type
journal article
Publisher(s)
Public Library of Science
Abstract
Tuberculosis is an infectious disease that causes ill health and death in millions of people each year worldwide. Timely diagnosis and treatment is key to full patient recovery. The Microscopic Observed Drug Susceptibility (MODS) is a test to diagnose TB infection and drug susceptibility directly from a sputum sample in 7–10 days with a low cost and high sensitivity and specificity, based on the visual recognition of specific growth cording patterns of M. Tuberculosis in a broth culture. Despite its advantages, MODS is still limited in remote, low resource settings, because it requires permanent and trained technical staff for the image-based diagnostics. Hence, it is important to develop alternative solutions, based on reliable automated analysis and interpretation of MODS cultures. In this study, we trained and evaluated a convolutional neural network (CNN) for automatic interpretation of MODS cultures digital images. The CNN was trained on a dataset of 12,510 MODS positive and negative images obtained from three different laboratories, where it achieved 96.63 +/- 0.35% accuracy, and a sensitivity and specificity ranging from 91% to 99%, when validated across held-out laboratory datasets. The model’s learned features resemble visual cues used by expert diagnosticians to interpret MODS cultures, suggesting that our model may have the ability to generalize and scale. It performed robustly when validated across held-out laboratory datasets and can be improved upon with data from new laboratories. This CNN can assist laboratory personnel, in low resource settings, and is a step towards facilitating automated diagnostics access to critical areas in developing countries.
Volume
14
Issue
2
Language
English
OCDE Knowledge area
Biotecnología relacionada con la salud
Enfermedades infecciosas
Scopus EID
2-s2.0-85062190691
PubMed ID
Source
PLoS ONE
ISSN of the container
1932-6203
Sponsor(s)
This study was funded by The Wellcome Trust 099805/Z/12/Z, https://wellcome.ac.uk (PS) and by the Google Latin American Research Award 2016 https://research.google.com (MZ). PS was funded by a Wellcome Trust Intermediate Fellowship. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. We would like to thank S. Biswas and C. Beltrán for their helpful discussions and valuable advice. We would like to acknowledge Josué Ortega for his initial support in guiding us through the use of CNN in MODS interpretation.
Sources of information:
Directorio de Producción Científica
Scopus