| Literature DB >> 35300321 |
Shorabuddin Syed1, Adam Jackson Angel2, Hafsa Bareen Syeda3, Carole Franc Jennings4, Joseph VanScoy5, Mahanazuddin Syed1, Melody Greer1, Sudeepa Bhattacharyya6, Shaymaa Al-Shukri1, Meredith Zozus7, Fred Prior1, Benjamin Tharian8.
Abstract
Colonoscopy plays a critical role in screening of colorectal carcinomas (CC). Unfortunately, the data related to this procedure are stored in disparate documents, colonoscopy, pathology, and radiology reports respectively. The lack of integrated standardized documentation is impeding accurate reporting of quality metrics and clinical and translational research. Natural language processing (NLP) has been used as an alternative to manual data abstraction. Performance of Machine Learning (ML) based NLP solutions is heavily dependent on the accuracy of annotated corpora. Availability of large volume annotated corpora is limited due to data privacy laws and the cost and effort required. In addition, the manual annotation process is error-prone, making the lack of quality annotated corpora the largest bottleneck in deploying ML solutions. The objective of this study is to identify clinical entities critical to colonoscopy quality, and build a high-quality annotated corpus using domain specific taxonomies following standardized annotation guidelines. The annotated corpus can be used to train ML models for a variety of downstream tasks.Entities:
Keywords: Annotation; Clinical Corpus; Colonoscopy; Machine Learning; Natural Language Processing; Taxonomy
Year: 2022 PMID: 35300321 PMCID: PMC8926426 DOI: 10.5220/0010876100003123
Source DB: PubMed Journal: Biomed Eng Syst Technol Int Jt Conf BIOSTEC Revis Sel Pap