Chest X-ray Analysis With Deep Learning-Based Software as a Triage Test for Pulmonary Tuberculosis: An Individual Patient Data Meta-Analysis of Diagnostic Accuracy

Author:

Tavaziva Gamuchirai1,Harris Miriam12,Abidi Syed K1,Geric Coralie13,Breuninger Marianne4,Dheda Keertan56,Esmail Aliasgar5,Muyoyeta Monde78,Reither Klaus910,Majidulla Arman11,Khan Aamir J12,Campbell Jonathon R13,David Pierre-Marie13,Denkinger Claudia14,Miller Cecily15,Nathavitharana Ruvandhi16,Pai Madhukar13,Benedetti Andrea13,Ahmad Khan Faiz13

Affiliation:

1. McGill International TB Centre, Research Institute of the McGill University Health Centre, Montreal, Canada

2. Clinical Addiction Research and Education Unit, Section of General Internal Medicine, Department of Medicine, Boston University School of Medicine and Boston Medical Center, Boston, Massachusetts, USA

3. Departments of Medicine & Epidemiology, Biostatistics & Occupational Health, McGill University, Montreal, Canada

4. Division of Infectious Diseases, Department I of Internal Medicine, University of Cologne, Cologne, Germany

5. Centre for Lung Infection and Immunity Unit, Division of Pulmonology and UCT Lung Institute, University of Cape Town, Cape Town, South Africa

6. Faculty of Infectious and Tropical Diseases, Department of Infection Biology, London School of Hygiene and Tropical Medicine, London, United Kingdom

7. Zambart, Lusaka, Zambia

8. Centre for Infectious Disease Research in Zambia, Lusaka, Zambia

9. Swiss Tropical and Public Health Institute, Basel, Switzerland

10. University of Basel, Basel, Switzerland

11. Interactive Research & Development (IRD) Pakistan, Karachi, Pakistan

12. IRD Global, Singapore

13. Département des Médicaments et Santé des Populations, Faculty of Pharmacy, Université de Montréal, Montreal, Canada

14. Division of Tropical Medicine, Center of Infectious Diseases, University Hospital Heidelberg, Heidelberg, Germany

15. World Health Organization, Geneva, Switzerland

16. Division of Infectious Diseases, Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, Massachusetts, USA

Abstract

Abstract Background Automated radiologic analysis using computer-aided detection software (CAD) could facilitate chest X-ray (CXR) use in tuberculosis diagnosis. There is little to no evidence on the accuracy of commercially available deep learning-based CAD in different populations, including patients with smear-negative tuberculosis and people living with human immunodeficiency virus (HIV, PLWH). Methods We collected CXRs and individual patient data (IPD) from studies evaluating CAD in patients self-referring for tuberculosis symptoms with culture or nucleic acid amplification testing as the reference. We reanalyzed CXRs with three CAD programs (CAD4TB version (v) 6, Lunit v3.1.0.0, and qXR v2). We estimated sensitivity and specificity within each study and pooled using IPD meta-analysis. We used multivariable meta-regression to identify characteristics modifying accuracy. Results We included CXRs and IPD of 3727/3967 participants from 4/7 eligible studies. 17% (621/3727) were PLWH. 17% (645/3727) had microbiologically confirmed tuberculosis. Despite using the same threshold score for classifying CXR in every study, sensitivity and specificity varied from study to study. The software had similar unadjusted accuracy (at 90% pooled sensitivity, pooled specificities were: CAD4TBv6, 56.9% [95% confidence interval {CI}: 51.7–61.9]; Lunit, 54.1% [95% CI: 44.6–63.3]; qXRv2, 60.5% [95% CI: 51.7–68.6]). Adjusted absolute differences in pooled sensitivity between PLWH and HIV-uninfected participants were: CAD4TBv6, −13.4% [−21.1, −6.9]; Lunit, +2.2% [−3.6, +6.3]; qXRv2: −13.4% [−21.5, −6.6]; between smear-negative and smear-positive tuberculosis was: were CAD4TBv6, −12.3% [−19.5, −6.1]; Lunit, −17.2% [−24.6, −10.5]; qXRv2, −16.6% [−24.4, −9.9]. Accuracy was similar to human readers. Conclusions For CAD CXR analysis to be implemented as a high-sensitivity tuberculosis rule-out test, users will need threshold scores identified from their own patient populations and stratified by HIV and smear status.

Publisher

Oxford University Press (OUP)

Subject

Infectious Diseases,Microbiology (medical)

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