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Multi-view deep learning framework for the detection of chest X-rays compatible with pediatric pulmonary tuberculosis

Author

Listed:
  • Daniel Capellán-Martín

    (Universidad Politécnica de Madrid
    Instituto de Salud Carlos III
    Children’s National Hospital)

  • Juan J. Gómez-Valverde

    (Universidad Politécnica de Madrid
    Instituto de Salud Carlos III)

  • Ramón Sánchez-Jacob

    (Children’s National Hospital
    George Washington University)

  • Alicia Hernanz-Lobo

    (Gregorio Marañón University Hospital
    Gregorio Marañón Research Health Institute (IiSGM)
    Instituto de Salud Carlos III
    RITIP Translational Research Network in Pediatric Infectious Diseases)

  • H. Simon Schaaf

    (Stellenbosch University)

  • Lara García-Delgado

    (Universidad Politécnica de Madrid
    Instituto de Salud Carlos III)

  • Orvalho Augusto

    (University of Washington
    Centro de Investigação em Saúde de Manhiça)

  • Pooneh Roshanitabrizi

    (Children’s National Hospital)

  • Alberto L. García-Basteiro

    (Instituto de Salud Carlos III
    Centro de Investigação em Saúde de Manhiça
    Universitat de Barcelona)

  • Jose Luis Ribó

    (Hospital Universitari General de Catalunya)

  • Ángel Lancharro

    (Gregorio Marañón Research Health Institute (IiSGM)
    Hospital Materno Infantil Gregorio Marañón
    HM Hospitales)

  • Antoni Noguera-Julian

    (RITIP Translational Research Network in Pediatric Infectious Diseases
    Hospital Sant Joan de Déu Research Foundation
    Universitat de Barcelona
    Instituto de Salud Carlos III)

  • Daniel Blázquez-Gamero

    (Instituto de Salud Carlos III
    RITIP Translational Research Network in Pediatric Infectious Diseases
    Instituto de Investigación Hospital 12 de Octubre (imas12)
    Hospital Universitario 12 de Octubre)

  • Marius George Linguraru

    (Children’s National Hospital
    George Washington University)

  • Begoña Santiago-García

    (Gregorio Marañón University Hospital
    Gregorio Marañón Research Health Institute (IiSGM)
    Instituto de Salud Carlos III)

  • Elisa López-Varela

    (Centro de Investigação em Saúde de Manhiça
    Universitat de Barcelona)

  • María J. Ledesma-Carbayo

    (Universidad Politécnica de Madrid
    Instituto de Salud Carlos III)

Abstract

Tuberculosis (TB) remains a major global health burden, particularly in low-resource, high-prevalence regions. Pediatric TB diagnosis poses challenges with non-specific symptoms and less distinct radiological manifestations than adult TB. Many affected children remain undiagnosed or untreated. The World Health Organization (WHO) recommends chest X-ray (CXR) for TB screening and triage, given its accessibility and rapid assessment of pulmonary TB-related abnormalities. We present pTBLightNet, a multi-view deep learning framework to detect pediatric pulmonary TB by identifying TB-compatible CXRs with consistent radiological findings. Leveraging both frontal and lateral CXR views, our framework is pre-trained on adult CXR datasets (N = 114,173), then fine-tuned or trained from scratch, and subsequently evaluated on CXR datasets (N = 918) from three pediatric TB cohorts. It achieves an area under the curve (AUC) of 0.903 and 0.682 on internal and external testing, respectively. External evaluation supports its effectiveness and generalizability using CXR TB compatibility, expert reading, microbiological confirmation and case definition as reference standards. Age-specific models (

Suggested Citation

  • Daniel Capellán-Martín & Juan J. Gómez-Valverde & Ramón Sánchez-Jacob & Alicia Hernanz-Lobo & H. Simon Schaaf & Lara García-Delgado & Orvalho Augusto & Pooneh Roshanitabrizi & Alberto L. García-Bastei, 2025. "Multi-view deep learning framework for the detection of chest X-rays compatible with pediatric pulmonary tuberculosis," Nature Communications, Nature, vol. 16(1), pages 1-16, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-64391-1
    DOI: 10.1038/s41467-025-64391-1
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