Abstract

Background Patients can access medical services such as disease diagnosis online, medical treatment guidance, and medication guidance that are provided by doctors from all over the country at home. Due to the complexity of scenarios applying medical services online and the necessity of professionalism of knowledge, the traditional recommendation methods in the medical field are confronting with problems such as low computational efficiency and poor effectiveness. At the same time, patients consulting online come from all sides, and most of them suffer from nonacute or malignant diseases, and hence, there may be offline medical treatment. Therefore, this paper proposes an online prediagnosis doctor recommendation model by integrating ontology characteristics and disease text. Particularly, this recommendation model takes full consideration of geographical location of patients. Objective The recommendation model takes the real consultation data from online as the research object, fully testifying its effectiveness. Specifically, this model would make recommendation to patients on department and doctors based on patients' information of symptoms, diagnosis, and geographical location, as well as doctor's specialty and their department. Methods Utilizing crawler technique, five hospital departments were selected from the online medical service platform. The names of the departments were in accordance with the standardized department names used in real hospitals (e.g., endocrinology, dermatology, gynemetrics, pediatrics, and neurology). As a result, a dataset consisting of 20000 consultation questions by patients was built. Through the application of Python and MySQL algorithms, replacing semantic dictionary retrieval or word frequency statistics, word vectors were utilized to measure similarity between patients' prediagnosis and doctors' specialty, forming a recommendation framework on medical departments or doctors based on the above-obtained sentence similarity measurement and providing recommendation advices on intentional departments and doctors. Results In the online medical field, compared with the traditional recommendation method, the model proposed in the paper is of higher recommendation accuracy and feasibility in terms of department and doctor recommendation effectiveness. Conclusions The proposed online prediagnosis doctor recommendation model integrates ontology characteristics and disease text mining. The model gives a relatively more accurate recommendation advice based on ontology characteristics such as patients' description texts and doctors' specialties. Furthermore, the model also gives full consideration on patients' location factors. As a result, the proposed online prediagnosis doctor recommendation model would improve patients' online consultation experience and offline treatment convenience, enriching the value of online prediagnosis data.

Highlights

  • As the emphasis of medical care gradually shifts from disease to patient, the role of patients’ participation in online health improvement is becoming more prominent

  • With a large number of doctors and patients interacting online, a large amount of real consultation data has been accumulated in the online health community

  • The authors divided the question set into sample dataset and test dataset, both containing information of patients’ condition description text, online prediagnosis department recommendation, etc

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Summary

Background

Patients can access medical services such as disease diagnosis online, medical treatment guidance, and medication guidance that are provided by doctors from all over the country at home. This paper proposes an online prediagnosis doctor recommendation model by integrating ontology characteristics and disease text. This recommendation model takes full consideration of geographical location of patients. The recommendation model takes the real consultation data from online as the research object, fully testifying its effectiveness. This model would make recommendation to patients on department and doctors based on patients’ information of symptoms, diagnosis, and geographical location, as well as doctor’s specialty and their department. The proposed online prediagnosis doctor recommendation model would improve patients’ online consultation experience and offline treatment convenience, enriching the value of online prediagnosis data

Introduction
Research on the Doctor Recommendation Model
Data Cleaning Process
Data on Ontology Characteristics of Doctors and Patients
53 Hospital Ningbo First Hospital
Data on Patients’ Condition Description
Data on Doctors’ Specialties
Doctor Recommendation
Sentence Similarity
10. Experiment
11. Results and Analysis
12. Conclusion
13. Limitations
Ethical Approval
Conflicts of Interest
Full Text
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