Abstract

BackgroundA lot of medical mentions can be extracted from a huge amount of medical texts. In order to make use of these medical mentions, a prerequisite step is to link those medical mentions to a medical domain knowledge base (KB). This linkage of mention to a well-defined, unambiguous KB is a necessary part of the downstream application such as disease diagnosis and prescription of drugs. Such demand becomes more urgent in colloquial and informal situations like online medical consultation, where the medical language is more casual and vaguer. In this article, we propose an unsupervised method to link the Chinese medical symptom mentions to the ICD10 classification in a colloquial background.MethodsWe propose an unsupervised entity linking model using multi-instance learning (MIL). Our approach builds on a basic unsupervised entity linking method (named BEL), which is an embedding similarity-based EL model in this paper, and uses MIL training paradigm to boost the performance of BEL. First, we construct a dataset from an unlabeled large-scale Chinese medical consultation corpus with the help of BEL. Subsequently, we use a variety of encoders to obtain the representations of mention-context and the ICD10 entities. Then the representations are fed into a ranking network to score candidate entities.ResultsWe evaluate the proposed model on the test dataset annotated by professional doctors. The evaluation results show that our method achieves 60.34% accuracy, exceeding the fundamental BEL by 1.72%.ConclusionsWe propose an unsupervised entity linking method to the entity linking in the medical domain, using MIL training manner. We annotate a test set for evaluation. The experimental results show that our model behaves better than the fundamental model BEL, and provides an insight for future research.

Highlights

  • A lot of medical mentions can be extracted from a huge amount of medical texts

  • We choose ICD10 as our linking target because it is widely adopted around the world and it has been used much more often in the Chinese medical context than other knowledge base (KB)

  • We propose a method for constructing a multi-instance learning (MIL)-based entity linking dataset from online colloquial Chinese medical consultation

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Summary

Introduction

In order to make use of these medical mentions, a prerequisite step is to link those medical mentions to a medical domain knowledge base (KB) This linkage of mention to a well-defined, unambiguous KB is a necessary part of the downstream application such as disease diagnosis and prescription of drugs. Such demand becomes more urgent in colloquial and informal situations like online medical consultation, where the medical language is more casual and vaguer. We propose an unsupervised method to link the Chinese medical symptom mentions to the ICD10 classification in a colloquial background. MEL task is proposed to link those unnormalized symptom mentions to the standard and unambiguous entities in a medical KB. Diarrhea should be linked to ICD code K52.916, nausea to R11.x02

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