Disease-a-month : DM

How Artificial Intelligence is Being Used in Medical Care: Current Patterns, Challenges, and Possible Future Paths

Updated

Abstract

This review includes findings from 8 studies highlighting the transformational role of AI in clinical medicine.

  • AI tools, such as convolutional neural networks (CNNs), demonstrated diagnostic accuracy exceeding traditional methods, particularly in radiology and pathology.
  • Predictive models contributed to efficient risk stratification, early disease detection, and personalized medicine.
  • Significant challenges remain, including data privacy concerns, algorithmic bias, and clinician resistance to the interpretability of AI models.
  • Explainable AI (XAI) may enhance trust and understanding of AI systems in clinical settings.
  • Overall, AI has the potential to improve diagnostics, treatment personalization, and clinical workflows by addressing systemic inefficiencies.

Simplified

Full Text

Full text is available at the source.

what lands in your inbox each week:

  • 📚7 fresh studies
  • 📝plain-language summaries
  • direct links to original studies
  • 🏅top journal indicators
  • 📅weekly delivery
  • 🧘‍♂️always free