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Published 18 Oct 2019

Using artificial intelligence to read chest radiographs for tuberculosis detection – A multi-site evaluation of the diagnostic accuracy of three deep learning systems

Author: Zhi Zhen Qin1, Melissa S. Sander2, Bishwa Rai3, Collins N. Titahong2, Santat Sudrungrot3, Sylvain N. Laah2, 4, Lal Mani Adhikari3, E. Jane Carter5, Lekha Puri1, Andrew J. Codlin1, Jacob Creswell11

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Deep learning (DL) neural networks have only recently been employed to interpret chest radiography (CXR) to screen and triage people for pulmonary tuberculosis (TB). No published studies have compared multiple DL systems and populations. We conducted a retrospective evaluation of three DL systems (CAD4TB, Lunit INSIGHT, and qXR) for detecting TB-associated abnormalities in chest radiographs from outpatients in Nepal and Cameroon. All 1196 individuals received a Xpert MTB/RIF assay and a CXR read by two groups of radiologists and the DL systems. Xpert was used as the reference standard. The area under the curve of the three systems was similar: Lunit (0.94, 95% CI: 0.93–0.96), qXR (0.94, 95% CI: 0.92–0.97) and CAD4TB (0.92, 95% CI: 0.90–0.95). When matching the sensitivity of the radiologists, the specificities of the DL systems were significantly higher except for one. Using DL systems to read CXRs could reduce the number of Xpert MTB/RIF tests needed by 66% while maintaining sensitivity at 95% or better. Using a universal cutoff score resulted different performance in each site, highlighting the need to select scores based on the population screened. These DL systems should be considered by TB programs where human resources are constrained, and automated technology is available.

Authors

Zhi Zhen Qin1, Melissa S. Sander2, Bishwa Rai3, Collins N. Titahong2, Santat Sudrungrot3, Sylvain N. Laah2, 4, Lal Mani Adhikari3, E. Jane Carter5, Lekha Puri1, Andrew J. Codlin1, Jacob Creswell11

Citation

1. Stop TB Partnership 2. Chemin du Pommier 40 3. 1218 Le Grand-Saconnex 4. Geneva 5. Switzerland 6. Tuberculosis Reference Laboratory Bamenda 7. PO Box 586 8. Bamenda 9. Cameroon 10. International Organization for Migration 11. Migration Health Department 12. Kathmandu 13. Nepal 14. Bamenda Regional Hospital 15. PO Box 818 16. Bamenda 17. Cameroon 18. Department of Medicine 19. Division of Pulmonary 20. Critical Care and Sleep 21. Warren Alpert Medical School 22. Brown University 23. Rhode Island 24. US

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