ADVANCED MACHINE LEARNING FRAMEWORKS FOR PNEUMONIA DIAGNOSIS: INTEGRATING MULTIMODAL SIGNALS AND PRIVACY-PRESERVING TECHNIQUES

Authors

  • Faizan Abbas Medical Student, Samarkand state medical university, Uzbekistan,
  • Arshad, Medical Student, Samarkand state medical university, Uzbekistan,
  • Wajiha Batool Medical Student, Samarkand state medical university, Uzbekistan,
  • Saurabh Kumar Kushwaha , Medical Student, Samarkand state medical university, Uzbekistan [email protected]

Abstract

Pneumonia remains a leading cause of morbidity and mortality worldwide, disproportionately affecting vulnerable populations such as young children and the elderly. Traditional diagnostic workflows, which heavily rely on manual triage and resource-intensive imaging assessments, are increasingly strained by rising patient volumes in emergency departments. 

References

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Published

2026-05-10

How to Cite

ADVANCED MACHINE LEARNING FRAMEWORKS FOR PNEUMONIA DIAGNOSIS: INTEGRATING MULTIMODAL SIGNALS AND PRIVACY-PRESERVING TECHNIQUES. (2026). SYNAPSES: INSIGHTS ACROSS THE DISCIPLINES, 3(5), 126-132. https://universalpublishings.com/index.php/siad/article/view/18318