Incidental radiological findings during clinical tuberculosis screening in Lesotho and South Africa: a case series
- PMID: 37620921
- PMCID: PMC10464059
- DOI: 10.1186/s13256-023-04097-4
Incidental radiological findings during clinical tuberculosis screening in Lesotho and South Africa: a case series
Abstract
Background: Chest X-ray offers high sensitivity and acceptable specificity as a tuberculosis screening tool, but in areas with a high burden of tuberculosis, there is often a lack of radiological expertise to interpret chest X-ray. Computer-aided detection systems based on artificial intelligence are therefore increasingly used to screen for tuberculosis-related abnormalities on digital chest radiographies. The CAD4TB software has previously been shown to demonstrate high sensitivity for chest X-ray tuberculosis-related abnormalities, but it is not yet calibrated for the detection of non-tuberculosis abnormalities. When screening for tuberculosis, users of computer-aided detection need to be aware that other chest pathologies are likely to be as prevalent as, or more prevalent than, active tuberculosis. However, non--tuberculosis chest X-ray abnormalities detected during chest X-ray screening for tuberculosis remain poorly characterized in the sub-Saharan African setting, with only minimal literature.
Case presentation: In this case series, we report on four cases with non-tuberculosis abnormalities detected on CXR in TB TRIAGE + ACCURACY (ClinicalTrials.gov Identifier: NCT04666311), a study in adult presumptive tuberculosis cases at health facilities in Lesotho and South Africa to determine the diagnostic accuracy of two potential tuberculosis triage tests: computer-aided detection (CAD4TB v7, Delft, the Netherlands) and C-reactive protein (Alere Afinion, USA). The four Black African participants presented with the following chest X-ray abnormalities: a 59-year-old woman with pulmonary arteriovenous malformation, a 28-year-old man with pneumothorax, a 20-year-old man with massive bronchiectasis, and a 47-year-old woman with aspergilloma.
Conclusions: Solely using chest X-ray computer-aided detection systems based on artificial intelligence as a tuberculosis screening strategy in sub-Saharan Africa comes with benefits, but also risks. Due to the limitation of CAD4TB for non-tuberculosis-abnormality identification, the computer-aided detection software may miss significant chest X-ray abnormalities that require treatment, as exemplified in our four cases. Increased data collection, characterization of non-tuberculosis anomalies and research on the implications of these diseases for individuals and health systems in sub-Saharan Africa is needed to help improve existing artificial intelligence software programs and their use in countries with high tuberculosis burden.
Keywords: CAD4TB; Case series; Chest X-ray; Non-TB abnormalities; Sub-Saharan Africa.
© 2023. BioMed Central Ltd., part of Springer Nature.
Conflict of interest statement
The authors declare that they have no competing interests.
Figures
References
-
- Global tuberculosis report 2021. World Health Organization 2021 Oct 14. Available from: URL: https://www.who.int/publications/i/item/9789240037021.
-
- Implementing the End TB Strategy; 2022 [cited 2022 May 11]. Available from: URL: https://www.who.int/westernpacific/activities/implementing-the-end-tb-st....
-
- WHO announces updates to its guidelines on tests for the diagnosis of TB infection; 10/28/2022 [cited 2022 Jul 11]. Available from: URL: https://www.who.int/news/item/30-09-2022-who-announces-updates-to-its-gu....
Publication types
MeSH terms
Associated data
Grants and funding
LinkOut - more resources
Full Text Sources
Medical
Research Materials
