Abstract

With the rapid development of hospital informatization and Internet medical service in recent years, most hospitals have launched online hospital appointment registration systems to remove patient queues and improve the efficiency of medical services. However, most of the patients lack professional medical knowledge and have no idea of how to choose department when registering. To instruct the patients to seek medical care and register effectively, we proposed CIDRS, an intelligent self-diagnosis and department recommendation framework based on Chinese medical Bidirectional Encoder Representations from Transformers (BERT) in the cloud computing environment. We also established a Chinese BERT model (CHMBERT) trained on a large-scale Chinese medical text corpus. This model was used to optimize self-diagnosis and department recommendation tasks. To solve the limited computing power of terminals, we deployed the proposed framework in a cloud computing environment based on container and micro-service technologies. Real-world medical datasets from hospitals were used in the experiments, and results showed that the proposed model was superior to the traditional deep learning models and other pre-trained language models in terms of performance.

Highlights

  • China is a country of large medical services and about 8 billion medical visits annually

  • For the above mentioned challenges, we proposed an intelligent self-diagnosis and department recommendation model based on Chinese medical Bidirectional Encoder Representations from Transformers (BERT) in the cloud computing environment

  • 2) An intelligent self-diagnosis and department recommendation model based on Chinese medical BERT (CHMBERT) was proposed

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Summary

Introduction

Background China is a country of large medical services and about 8 billion medical visits annually. For the above mentioned challenges, we proposed an intelligent self-diagnosis and department recommendation model based on Chinese medical BERT in the cloud computing environment. 2) An intelligent self-diagnosis and department recommendation model based on Chinese medical BERT (CHMBERT) was proposed. This model predicted diseases and recommended registration departments according to chief complaint. NLP models designed for universal natural language understanding always perform poorly in medical text mining tasks [7] To solve this problem, we constructed a medical text corpus based on more than 100 hospitals from the Jiangsu Regional Health Information Platform, including past history data and clinical diagnosis and treatment data. The cross-entropy loss function and Adam optimization algorithm were used for fine-tuning the model parameters

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