Real World Clinical
Real-world clinical applications of artificial intelligence, particularly large language models (LLMs) and vision-language models (VLMs), are a rapidly evolving field focused on improving healthcare efficiency and accuracy. Current research emphasizes robust evaluation benchmarks that assess model performance across diverse clinical tasks, including diagnosis, treatment planning, and report generation, often using federated learning to address data privacy and heterogeneity. These efforts aim to bridge the gap between promising AI capabilities and safe, reliable deployment in actual clinical settings, ultimately impacting patient care and clinical workflow.
Papers
Federated Impression for Learning with Distributed Heterogeneous Data
Atrin Arya, Sana Ayromlou, Armin Saadat, Purang Abolmaesumi, Xiaoxiao Li
Safety challenges of AI in medicine
Xiaoye Wang, Nicole Xi Zhang, Hongyu He, Trang Nguyen, Kun-Hsing Yu, Hao Deng, Cynthia Brandt, Danielle S. Bitterman, Ling Pan, Ching-Yu Cheng, James Zou, Dianbo Liu