可信赖的母婴医疗情感检测

Ggaliwango Marvin, Nakayiza Hellen, J. Nakatumba-Nabende, Md. Golam Rabiul Alam
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引用次数: 0

摘要

越来越多的在线医疗平台使人们更容易获得医疗信息和治疗。然而,这也导致利用寻求医疗咨询的个人的欺诈计划增加。这为不专业和不合格的医务人员在远程医疗在线平台上操作创造了一个可利用的机会。本研究说明并讨论了人工智能,特别是自然语言处理(NLP)的使用,以检测在线孕产妇和新生儿医疗保健建议中值得信赖的医学观点。在社交媒体平台上,对医学专家和普通人的众包建议进行了可解释的医学情绪检测。在这种方法中,“像我5岁一样解释”(ELi5)技术被用来使检测过程更容易理解和可信。我们的研究结果表明,迫切需要一个孕产妇和新生儿医学语料库,并使用可解释的人工智能,以确保所有人都能通过对话人工智能获得可持续和值得信赖的医疗保健。
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Trustworthy Medical Sentiment Detection for Maternal and Neonatal Healthcare
The increasing availability of online medical platforms has made it easier for people to access medical information and treatment. However, it has also led to an increase in fraudulent schemes that exploit individuals seeking medical advice. This has created an exploitable opportunity for unprofessional and unqualified medical personnel operating on online platforms for telemedicine. This study illustrates and discusses the use of Artificial Intelligence, specifically Natural Language Processing (NLP), to detect trustworthy medical sentiments in online maternal and neonatal healthcare advice. Interpretable detection of medical sentiments in crowdsourced advice from both medical experts and regular individuals on social media platforms was done. In this approach, the “Explain Like I'm 5” (ELi5) technique is used to make the detection process more understandable and trustworthy. Our findings demonstrate an urgent need for a maternal and neonatal medical corpus and the use of explainable AI to ensure a sustainable and trustworthy healthcare for all with Conversational AI.
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