Diagnostic Performance of Artificial Intelligence–Based Methods for Tuberculosis Detection: Systematic Review

Mar 7, 2025Journal of medical Internet research

How Well Artificial Intelligence Detects Tuberculosis: A Systematic Review

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Abstract

AI-based methods for tuberculosis detection achieved a mean accuracy of 91.93% across evaluated studies.

  • Radiographic biomarkers and deep learning approaches were predominantly utilized, with convolutional neural networks being the most common method.
  • The majority of studies focused on developing models using a single data modality.
  • AI methods demonstrated high performance with a mean sensitivity of 92.77% and mean specificity of 92.39%.
  • Performance varied by biomarker type, with mean accuracies ranging from 84.21% to 92.45%.
  • Transfer learning approaches gained popularity, utilized in 58.6% of the studies, while domain-shift analysis was rarely conducted.

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