The document discusses the challenges and limitations of implementing machine learning and artificial intelligence (AI) in healthcare, emphasizing the gap between research advancements and real-world application. Key issues include dataset shifts, regulatory hurdles, and human barriers to adoption, all of which affect the transition of AI technologies to clinical practice. It concludes that while AI presents significant opportunities to enhance healthcare delivery, robust evaluation and understanding of human-computer interactions are essential for safe and effective integration.
Related topics: