Frontiers in Public Health (Feb 2023)

Development and testing of a multi-lingual Natural Language Processing-based deep learning system in 10 languages for COVID-19 pandemic crisis: A multi-center study

  • Lily Wei Yun Yang,
  • Wei Yan Ng,
  • Wei Yan Ng,
  • Xiaofeng Lei,
  • Shaun Chern Yuan Tan,
  • Zhaoran Wang,
  • Ming Yan,
  • Mohan Kashyap Pargi,
  • Xiaoman Zhang,
  • Jane Sujuan Lim,
  • Dinesh Visva Gunasekeran,
  • Dinesh Visva Gunasekeran,
  • Franklin Chee Ping Tan,
  • Chen Ee Lee,
  • Khung Keong Yeo,
  • Hiang Khoon Tan,
  • Henry Sun Sien Ho,
  • Henry Sun Sien Ho,
  • Benedict Wee Bor Tan,
  • Tien Yin Wong,
  • Tien Yin Wong,
  • Tien Yin Wong,
  • Kenneth Yung Chiang Kwek,
  • Rick Siow Mong Goh,
  • Yong Liu,
  • Daniel Shu Wei Ting,
  • Daniel Shu Wei Ting

DOI
https://doi.org/10.3389/fpubh.2023.1063466
Journal volume & issue
Vol. 11

Abstract

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PurposeThe COVID-19 pandemic has drastically disrupted global healthcare systems. With the higher demand for healthcare and misinformation related to COVID-19, there is a need to explore alternative models to improve communication. Artificial Intelligence (AI) and Natural Language Processing (NLP) have emerged as promising solutions to improve healthcare delivery. Chatbots could fill a pivotal role in the dissemination and easy accessibility of accurate information in a pandemic. In this study, we developed a multi-lingual NLP-based AI chatbot, DR-COVID, which responds accurately to open-ended, COVID-19 related questions. This was used to facilitate pandemic education and healthcare delivery.MethodsFirst, we developed DR-COVID with an ensemble NLP model on the Telegram platform (https://t.me/drcovid_nlp_chatbot). Second, we evaluated various performance metrics. Third, we evaluated multi-lingual text-to-text translation to Chinese, Malay, Tamil, Filipino, Thai, Japanese, French, Spanish, and Portuguese. We utilized 2,728 training questions and 821 test questions in English. Primary outcome measurements were (A) overall and top 3 accuracies; (B) Area Under the Curve (AUC), precision, recall, and F1 score. Overall accuracy referred to a correct response for the top answer, whereas top 3 accuracy referred to an appropriate response for any one answer amongst the top 3 answers. AUC and its relevant matrices were obtained from the Receiver Operation Characteristics (ROC) curve. Secondary outcomes were (A) multi-lingual accuracy; (B) comparison to enterprise-grade chatbot systems. The sharing of training and testing datasets on an open-source platform will also contribute to existing data.ResultsOur NLP model, utilizing the ensemble architecture, achieved overall and top 3 accuracies of 0.838 [95% confidence interval (CI): 0.826–0.851] and 0.922 [95% CI: 0.913–0.932] respectively. For overall and top 3 results, AUC scores of 0.917 [95% CI: 0.911–0.925] and 0.960 [95% CI: 0.955–0.964] were achieved respectively. We achieved multi-linguicism with nine non-English languages, with Portuguese performing the best overall at 0.900. Lastly, DR-COVID generated answers more accurately and quickly than other chatbots, within 1.12–2.15 s across three devices tested.ConclusionDR-COVID is a clinically effective NLP-based conversational AI chatbot, and a promising solution for healthcare delivery in the pandemic era.

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