Artificial intelligence in the diagnosis and prognosis of pediatric bacterial pneumonia: current advances and challenges.
Authors
Affiliations (1)
Affiliations (1)
- Department of Infectious Diseases, Children's Hospital of Soochow University, Suzhou, China.
Abstract
The clinical presentation of pediatric bacterial pneumonia often overlaps with that of other respiratory conditions, posing considerable diagnostic challenges. This review evaluates the potential of artificial intelligence to improve diagnostic accuracy and prognostic evaluation for this disease. Artificial intelligence driven diagnostic tools for pediatric bacterial pneumonia have now been validated in several studies. Clinically, these systems can rapidly process chest imaging, synthesize heterogeneous patient data, and alert physicians to early signs of severe pneumonia. Beyond immediate diagnostics, they also show emerging utility in uncovering biomarkers relevant to disease prognosis and management. In clinical practice, artificial intelligence driven decision support is emerging as a valuable tool for the early diagnosis of pediatric bacterial pneumonia. As high-quality, multicenter datasets continue to grow and model interpretability improves, artificial intelligence is expected to become increasingly important in managing pediatric bacterial pneumonia.