Visual language models (VLMs) are an emerging technology that integrates computer vision with natural language processing, offering transformative potential for healthcare. VLMs significantly enhance disease detection, diagnosis, and report generation by enabling automated analysis and interpretation of medical images. These models are designed to support healthcare professionals by streamlining workflows, improving diagnostic accuracy, and assisting in clinical decision-making. Applications include early disease detection through image analysis, automated report generation, and integration with electronic health records (EHR) for personalized medicine. Despite their promise, challenges such as data privacy, interpretability, and the scarcity of labeled datasets remain. However, ongoing advancements in AI-driven medical systems and the integration of multimodal data can potentially revolutionize patient care and operational efficiency in healthcare settings. Addressing these challenges is crucial for realizing the full potential of VLMs in clinical practice.

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Artificial Intelligence in Medical Imaging

  • Prem Gaikwad,
  • Parth Masal,
  • Mandar Kulkarni,
  • Mousami P. Turuk

摘要

Visual language models (VLMs) are an emerging technology that integrates computer vision with natural language processing, offering transformative potential for healthcare. VLMs significantly enhance disease detection, diagnosis, and report generation by enabling automated analysis and interpretation of medical images. These models are designed to support healthcare professionals by streamlining workflows, improving diagnostic accuracy, and assisting in clinical decision-making. Applications include early disease detection through image analysis, automated report generation, and integration with electronic health records (EHR) for personalized medicine. Despite their promise, challenges such as data privacy, interpretability, and the scarcity of labeled datasets remain. However, ongoing advancements in AI-driven medical systems and the integration of multimodal data can potentially revolutionize patient care and operational efficiency in healthcare settings. Addressing these challenges is crucial for realizing the full potential of VLMs in clinical practice.