Artificial Intelligence in Paediatric Tuberculosis
- PMID: 36707428
- PMCID: PMC9883137
- DOI: 10.1007/s00247-023-05606-9
Artificial Intelligence in Paediatric Tuberculosis
Abstract
Tuberculosis (TB) continues to be a leading cause of death in children despite global efforts focused on early diagnosis and interventions to limit the spread of the disease. This challenge has been made more complex in the context of the coronavirus pandemic, which has disrupted the "End TB Strategy" and framework set out by the World Health Organization (WHO). Since the inception of artificial intelligence (AI) more than 60 years ago, the interest in AI has risen and more recently we have seen the emergence of multiple real-world applications, many of which relate to medical imaging. Nonetheless, real-world AI applications and clinical studies are limited in the niche area of paediatric imaging. This review article will focus on how AI, or more specifically deep learning, can be applied to TB diagnosis and management in children. We describe how deep learning can be utilised in chest imaging to provide computer-assisted diagnosis to augment workflow and screening efforts. We also review examples of recent AI applications for TB screening in resource constrained environments and we explore some of the challenges and the future directions of AI in paediatric TB.
Keywords: Artificial intelligence; Chest radiography; Children; Computer aided detection; Deep learning; Tuberculosis.
© 2023. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
Conflict of interest statement
Jaishree Naidoo is an industry employee of Envisionit Deep (UK) a company that uses AI as a clinical decision support tool in medical imaging diagnosis. Dr Naidoo did not receive financial or research support from the company for the article and the views expressed are those of the author and not of Envisionit Deep AI, Paeds Diagnostic Imaging or J Naidoo Inc. Susan Cheng Shelmerdine is funded by a NIHR Advanced Fellowship Award (NIHR-301322). The views expressed are those of the authors and not necessarily those of the NHS, the NIHR or the Department of Health.
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