Graduate School of Communication Design, Hanyang University, ERICA Campus, Ansan, 15588, Republic of Korea.
Sci Rep. 2024 Jul 25;14(1):17118. doi: 10.1038/s41598-024-67429-4.
In recent years, artificial intelligence has made remarkable strides, improving various aspects of our daily lives. One notable application is in intelligent chatbots that use deep learning models. These systems have shown tremendous promise in the medical sector, enhancing healthcare quality, treatment efficiency, and cost-effectiveness. However, their role in aiding disease diagnosis, particularly chronic conditions, remains underexplored. Addressing this issue, this study employs large language models from the GPT series, in conjunction with deep learning techniques, to design and develop a diagnostic system targeted at chronic diseases. Specifically, performed transfer learning and fine-tuning on the GPT-2 model, enabling it to assist in accurately diagnosing 24 common chronic diseases. To provide a user-friendly interface and seamless interactive experience, we further developed a dialog-based interface, naming it Chat Ella. This system can make precise predictions for chronic diseases based on the symptoms described by users. Experimental results indicate that our model achieved an accuracy rate of 97.50% on the validation set, and an area under the curve (AUC) value reaching 99.91%. Moreover, conducted user satisfaction tests, which revealed that 68.7% of participants approved of Chat Ella, while 45.3% of participants found the system made daily medical consultations more convenient. It can rapidly and accurately assess a patient's condition based on the symptoms described and provide timely feedback, making it of significant value in the design of medical auxiliary products for household use.
近年来,人工智能取得了显著的进步,改善了我们日常生活的各个方面。一个值得注意的应用是在使用深度学习模型的智能聊天机器人中。这些系统在医疗领域显示出了巨大的潜力,可以提高医疗质量、治疗效率和成本效益。然而,它们在辅助疾病诊断,特别是慢性疾病方面的作用仍未得到充分探索。针对这一问题,本研究采用 GPT 系列的大型语言模型,并结合深度学习技术,设计和开发了一种针对慢性疾病的诊断系统。具体来说,我们对 GPT-2 模型进行了迁移学习和微调,使其能够辅助准确诊断 24 种常见的慢性疾病。为了提供用户友好的界面和无缝的交互体验,我们进一步开发了基于对话的界面,命名为 Chat Ella。该系统可以根据用户描述的症状对慢性疾病进行精确预测。实验结果表明,我们的模型在验证集上的准确率达到 97.50%,曲线下面积(AUC)值达到 99.91%。此外,我们进行了用户满意度测试,结果显示 68.7%的参与者认可 Chat Ella,而 45.3%的参与者认为该系统使日常医疗咨询更加方便。它可以根据描述的症状快速准确地评估患者的病情,并提供及时的反馈,因此在设计家用医疗辅助产品方面具有重要价值。