基于 BERT 的医疗聊天机器人:通过自然语言理解加强医疗保健交流

IF 1.8 Q3 PHARMACOLOGY & PHARMACY
Arun Babu, Sekhar Babu Boddu
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引用次数: 0

摘要

人工智能(AI)、物联网(IoT)和深度学习(DL)等现代技术的出现开创了医疗保健领域的变革时代,通过提高各种医疗服务的质量为个性化医疗保健提供了创新解决方案。我们提出的方法涉及开发基于 BERT 的医疗聊天机器人,利用最先进的深度学习技术大大提高医疗保健的沟通和可及性。医疗聊天机器人面临的传统挑战,如对医疗对话的理解不准确、对专业术语的回应不准确以及无法提供个性化反馈等,都可以通过使用变压器双向编码器表示(BERT)来解决。聊天机器人的性能指标证明了它的有效性。聊天机器人的准确率高达 98%,确保了处理医疗询问的高精确度。97% 的精确度证明了其回复的准确性和可靠性。97% 的 AUC-ROC 得分表明聊天机器人具有根据用户查询和症状预测特定疾病的卓越能力,展示了其强大的预测能力。此外,96% 的召回率表明聊天机器人有能力避免医疗诊断中的遗漏病例,确保全面覆盖潜在病症。98%的F1得分显示了聊天机器人在提供准确和个性化医疗信息方面的能力,在精确度和召回率之间取得了和谐的平衡。我们基于 BERT 的医疗聊天机器人不仅解决了传统方法的局限性,而且在高准确度、高精确度、高预测能力和全面覆盖方面取得了卓越的表现,使其成为提高医疗服务质量的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BERT-Based Medical Chatbot: Enhancing Healthcare Communication through Natural Language Understanding

The advent of modern technologies like Artificial Intelligence(AI), Internet of Things(IoT) and Deep Learning(DL) has ushered in a transformative era in healthcare, offering innovative solutions towards personalized healthcare by enhancing the quality of various medical services. Our proposed methodology involves the development of a BERT-based medical chatbot, leveraging cutting-edge deep learning technology to significantly enhance healthcare communication and accessibility. The traditional challenges faced by medical chatbots, such as imprecise understanding of medical conversations, inaccurate responses to jargon, and the inability to offer personalized feedback, are addressed through the utilization of Bidirectional Encoder Representations from Transformers (BERT). The performance metrics of our chatbot underscore its effectiveness. With an accuracy of 98%, the chatbot ensures a high level of precision in handling medical queries. The precision score of 97% attests to the accuracy and reliability of its responses. The AUC-ROC score of 97% indicates the chatbot's exceptional ability to predict specific diseases based on user queries and symptoms, showcasing its robust predictive power. Furthermore, a recall of 96% demonstrates the chatbot's capability to avoid missing cases in medical diagnoses, ensuring comprehensive coverage of potential conditions. The F1 score of 98% showcases the chatbot's proficiency in delivering accurate and personalized healthcare information, striking a harmonious balance between precision and recall. Our BERT-based medical chatbot not only addresses the limitations of traditional approaches but also achieves a remarkable performance with high accuracy, precision, predictive power, and comprehensive coverage, making it a valuable tool for advancing the quality of healthcare services.

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来源期刊
CiteScore
1.60
自引率
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