4.7 Article

BINER: A low-cost biomedical named entity recognition

Journal

INFORMATION SCIENCES
Volume 602, Issue -, Pages 184-200

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2022.04.037

Keywords

Natural Language Processing; Named entity recognition; Deep learning; Biomedical text; Transfer Learning; Computational efficiency; Natural Language Processing; Named entity recognition; Deep learning; Biomedical text; Transfer Learning; Computational efficiency

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The healthcare industry aims to improve patient experience and service quality, but there is a lack of standard datasets and computational resources for biomedical natural language understanding. This paper introduces a model trained on low-tier GPU computers to address this challenge.
A primary focus of the healthcare industry is to improve patient experience and quality of service. Practitioners and health workers are generating large volumes of text that are captured in Electronic Medical Records, clinical reports, and publications. Additionally, patients post millions of comments on social media related to healthcare, on diverse topics such as hospital services, disease symptoms, and drugs effects. Unifying various data sources can guide physicians and healthcare workers to avoid unnecessary, irrelevant information and expedite access to helpful information. The main challenge to creating Biomedical Natural Language Understanding is the lack of standard datasets and the extensive computational resources needed to develop different models. This paper proposes a model trained on low-tier GPU computers, producing comparable results to larger models like BioBERT. We propose BINER, a Biomedical Named Entity Recognition architecture using limited data and computational resources. (c) 2022 The Authors. Published by Elsevier Inc.

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