Abstract

BackgroundThe COVID-19 pandemic has limited daily activities and even contact between patients and primary care providers. This makes it more difficult to provide adequate primary care services, which include connecting patients to an appropriate medical specialist. A smartphone-compatible artificial intelligence (AI) chatbot that classifies patients’ symptoms and recommends the appropriate medical specialty could provide a valuable solution.ObjectiveIn order to establish a contactless method of recommending the appropriate medical specialty, this study aimed to construct a deep learning–based natural language processing (NLP) pipeline and to develop an AI chatbot that can be used on a smartphone.MethodsWe collected 118,008 sentences containing information on symptoms with labels (medical specialty), conducted data cleansing, and finally constructed a pipeline of 51,134 sentences for this study. Several deep learning models, including 4 different long short-term memory (LSTM) models with or without attention and with or without a pretrained FastText embedding layer, as well as bidirectional encoder representations from transformers for NLP, were trained and validated using a randomly selected test data set. The performance of the models was evaluated on the basis of the precision, recall, F1-score, and area under the receiver operating characteristic curve (AUC). An AI chatbot was also designed to make it easy for patients to use this specialty recommendation system. We used an open-source framework called “Alpha” to develop our AI chatbot. This takes the form of a web-based app with a frontend chat interface capable of conversing in text and a backend cloud-based server application to handle data collection, process the data with a deep learning model, and offer the medical specialty recommendation in a responsive web that is compatible with both desktops and smartphones.ResultsThe bidirectional encoder representations from transformers model yielded the best performance, with an AUC of 0.964 and F1-score of 0.768, followed by LSTM model with embedding vectors, with an AUC of 0.965 and F1-score of 0.739. Considering the limitations of computing resources and the wide availability of smartphones, the LSTM model with embedding vectors trained on our data set was adopted for our AI chatbot service. We also deployed an Alpha version of the AI chatbot to be executed on both desktops and smartphones.ConclusionsWith the increasing need for telemedicine during the current COVID-19 pandemic, an AI chatbot with a deep learning–based NLP model that can recommend a medical specialty to patients through their smartphones would be exceedingly useful. This chatbot allows patients to identify the proper medical specialist in a rapid and contactless manner, based on their symptoms, thus potentially supporting both patients and primary care providers.

Highlights

  • The COVID-19 pandemic has encouraged the development of telemedicine and the use of digital platforms [1]

  • With the increasing need for telemedicine during the current COVID-19 pandemic, an artificial intelligence (AI) chatbot with a deep learning–based natural language processing (NLP) model that can recommend a medical specialty to patients through their smartphones would be exceedingly useful

  • The main findings of this study include the following: (1) we developed a deep learning classification model for medical sentences and a prototype AI chatbot to be executed on a smartphone; (2) to our knowledge, this study is the first to use real patients’ actual descriptions of their symptoms to develop a deep learning–based NLP model for medical specialty classification; and (3) we constructed Korean language data sets, which can be used in further studies

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Summary

Introduction

The COVID-19 pandemic has encouraged the development of telemedicine and the use of digital platforms [1]. In the field of remote medical support, various digital tools help minimize the number of face-to-face interactions between patients and health care providers (HCPs) [2]. Artificial intelligence (AI) chatbots, called conversational agents, have recently been designed to support HCPs [3]. The advantages of an AI chatbot over human HCPs include the absence of face-to-face interaction; minimization of bias based on certain patient demographic characteristics such as age, gender, and race; greater cost-effectiveness; and 24/7 availability since the chatbot does not get fatigued or sick [5]. The COVID-19 pandemic has limited daily activities and even contact between patients and primary care providers. This makes it more difficult to provide adequate primary care services, which include connecting patients to an appropriate medical specialist. A smartphone-compatible artificial intelligence (AI) chatbot that classifies patients’ symptoms and recommends the appropriate medical specialty could provide a valuable solution

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