2020
DOI: 10.1038/s41598-020-62148-y
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Computer aided detection of tuberculosis on chest radiographs: An evaluation of the CAD4TB v6 system

Abstract: There is a growing interest in the automated analysis of chest X-Ray (CXR) as a sensitive and inexpensive means of screening susceptible populations for pulmonary tuberculosis. In this work we evaluate the latest version of CAD4TB, a software platform designed for this purpose. Version 6 of CAD4TB was released in 2018 and is here tested on an independent dataset of 5565 CXR images with GeneXpert (Xpert) sputum test results available (854 Xpert positive subjects). A subset of 500 subjects (50% Xpert positive) w… Show more

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Cited by 111 publications
(96 citation statements)
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“…Some authors are employees (RP, AM, JM) or consultant (BvG) of Thirona, the other authors had control of inclusion of any data and information in this study. CAD4COVID-Xray is based on the CAD4TB v6 software [10], which is a commercial deep-learning system for the detection of tuberculosis on chest radiographs. As pre-processing steps, the system uses image normalization [14] and lung segmentation using a U-net [15].…”
Section: Artificial Intelligence System For X-ray Interpretationmentioning
confidence: 99%
“…Some authors are employees (RP, AM, JM) or consultant (BvG) of Thirona, the other authors had control of inclusion of any data and information in this study. CAD4COVID-Xray is based on the CAD4TB v6 software [10], which is a commercial deep-learning system for the detection of tuberculosis on chest radiographs. As pre-processing steps, the system uses image normalization [14] and lung segmentation using a U-net [15].…”
Section: Artificial Intelligence System For X-ray Interpretationmentioning
confidence: 99%
“…Intriguingly, CAD4TB has now been redeveloped as a deep learning model rather than a CAD program. The latest version of the model, released in 2019, was trained on cohort of 500 labelled images from Pakistan and achieved a sensitivity of 90% and specificity of 98% upon testing for the task of detecting TB, surpassing all previous version of the algorithm (17).…”
Section: Computer-aided Diagnosismentioning
confidence: 99%
“…To put these theoretical notions to test, we added bacterial tuberculosis patients to the study. We chose tuberculosis given its importance worldwide (it can actually be considered another pandemic in many countries), availability of images online and also since it can serve as a good baseline for the potential of covid-19 detection, considering that tuberculosis detection from X-Ray images is more established [52][53][54][55] .…”
Section: Xray Datamentioning
confidence: 99%