Back to Search Start Over

TCM-SD: A Benchmark for Probing Syndrome Differentiation via Natural Language Processing

Authors :
Ren, Mucheng
Huang, Heyan
Zhou, Yuxiang
Cao, Qianwen
Bu, Yuan
Gao, Yang
Publication Year :
2022

Abstract

Traditional Chinese Medicine (TCM) is a natural, safe, and effective therapy that has spread and been applied worldwide. The unique TCM diagnosis and treatment system requires a comprehensive analysis of a patient's symptoms hidden in the clinical record written in free text. Prior studies have shown that this system can be informationized and intelligentized with the aid of artificial intelligence (AI) technology, such as natural language processing (NLP). However, existing datasets are not of sufficient quality nor quantity to support the further development of data-driven AI technology in TCM. Therefore, in this paper, we focus on the core task of the TCM diagnosis and treatment system -- syndrome differentiation (SD) -- and we introduce the first public large-scale dataset for SD, called TCM-SD. Our dataset contains 54,152 real-world clinical records covering 148 syndromes. Furthermore, we collect a large-scale unlabelled textual corpus in the field of TCM and propose a domain-specific pre-trained language model, called ZY-BERT. We conducted experiments using deep neural networks to establish a strong performance baseline, reveal various challenges in SD, and prove the potential of domain-specific pre-trained language model. Our study and analysis reveal opportunities for incorporating computer science and linguistics knowledge to explore the empirical validity of TCM theories.<br />Comment: 10 main pages + 2 reference pages, to appear at CCL2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.10839
Document Type :
Working Paper