Process Extraction
Process extraction focuses on automatically transforming unstructured textual data into structured formats, primarily aiming to reduce the time and cost associated with manual data processing. Current research emphasizes leveraging machine learning, particularly deep learning models like U-Nets and transformers, along with large language models (LLMs), to achieve this extraction from diverse sources including scientific publications, clinical trials, and social media. This field is crucial for advancing various domains, from accelerating scientific discovery through automated literature analysis to improving business process management and enhancing the efficiency of clinical research.
Papers
Extraction of Vascular Wall in Carotid Ultrasound via a Novel Boundary-Delineation Network
Qinghua Huang, Lizhi Jia, Guanqing Ren, Xiaoyi Wang, Chunying Liu
Extraction of Coronary Vessels in Fluoroscopic X-Ray Sequences Using Vessel Correspondence Optimization
Seung Yeon Shin, Soochahn Lee, Kyoung Jin Noh, Il Dong Yun, Kyoung Mu Lee