Chatbots in identification of breastfeeding issues: performance evaluation
DOI:
https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1370Keywords:
Breastfeeding, Artificial Intelligence, Expert SystemsAbstract
Objective: This study aimed to evaluate the performance of artificial intelligence-based chatbots in identifying breastfeeding-related problems. Method: The study assessed OpenAI ChatGPT-3.5, Microsoft Copilot, Google Gemini, and Lhia in identifying breastfeeding issues. Lhia chatbot is being developed by our team of researchers. Through consensus among healthcare professionals specializing in breastfeeding, a dataset of annotated main clinical complaint reports from medical records at the University Hospital of the Federal University of Maranhão was created for testing with three zero-shot prompt approaches. Results: The best performance was achieved by ChatGPT-3.5, which demonstrated accuracy ranging from 79% to 93%, fallback from 0% to 7%, and F1-score from 75% to 100%. Conclusion: Artificial intelligence-based chatbots can be a promising tool to assist mothers and healthcare professionals in the early detection of breastfeeding issues.
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