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Resumo(s)
This paper presents the creation of a medical symptom checker with state-of-the-art machine
and deep learning technologies. It examines the use and development of a speech to text model
which is trained on medical datasets. The model is discussed, highlighting its advantages and
disadvantages for the study. Moreover, the paper introduces a web application which provides a
user-friendly interface, allowing users to interact with the models and showcase the results.
Finally, the paper offers an outlook on the future use cases of the application and how it may
improve healthcare outcomes.
Descrição
Palavras-chave
Deep learning Machine learning Classification Speech to text Natural language processing Medical symptom checker Streamlit
