Department of Nephrology, Hospital Universitari Bellvitge and Institut d'Investigació Biomèdica de Bellvitge-IDIBELL, Barcelona, Spain.
BigData and Artificial Intelligence Group (BigSEN Working Group), Spanish Society of Nephrology (SENEFRO), Santander, España.
Rev Invest Clin. 2023 Dec 18;75(6):309-317. doi: 10.24875/RIC.23000162.
Artificial intelligence (AI) generative models driven by the integration of AI and natural language processing technologies, such as OpenAI's chatbot generative pre-trained transformer large language model (LLM), are receiving much public attention and have the potential to transform personalized medicine. Dialysis patients are highly dependent on technology and their treatment generates a challenging large volume of data that has to be analyzed for knowledge extraction. We argue that, by integrating the data acquired from hemodialysis treatments with the powerful conversational capabilities of LLMs, nephrologists could personalize treatments adapted to patients' lifestyles and preferences. We also argue that this new conversational AI integrated with a personalized patient-computer interface will enhance patients' engagement and self-care by providing them with a more personalized experience. However, generative AI models require continuous and accurate updates of data, and expert supervision and must address potential biases and limitations. Dialysis patients can also benefit from other new emerging technologies such as Digital Twins with which patients' care can also be addressed from a personalized medicine perspective. In this paper, we will revise LLMs potential strengths in terms of their contribution to personalized medicine, and, in particular, their potential impact, and limitations in nephrology. Nephrologists' collaboration with AI academia and companies, to develop algorithms and models that are more transparent, understandable, and trustworthy, will be crucial for the next generation of dialysis patients. The combination of technology, patient-specific data, and AI should contribute to create a more personalized and interactive dialysis process, improving patients' quality of life.
人工智能 (AI) 生成模型是人工智能和自然语言处理技术融合的产物,例如 OpenAI 的聊天机器人生成预训练变压器大型语言模型 (LLM),受到了广泛的关注,并有可能改变个性化医疗。透析患者高度依赖技术,他们的治疗产生了具有挑战性的大量数据,需要进行分析以提取知识。我们认为,通过将血液透析治疗中获取的数据与 LLM 的强大对话功能相结合,肾病学家可以为患者的生活方式和偏好量身定制治疗方案。我们还认为,这种与个性化患者-计算机界面集成的新型对话式人工智能将通过为患者提供更个性化的体验来提高患者的参与度和自我护理能力。然而,生成式 AI 模型需要不断准确地更新数据,需要专家监督,并必须解决潜在的偏差和限制。透析患者还可以受益于其他新兴技术,例如数字孪生技术,从个性化医疗的角度出发,也可以解决患者的护理问题。在本文中,我们将修订 LLM 在个性化医疗方面的潜在优势,并特别探讨其在肾病学方面的潜在影响和局限性。肾病学家与 AI 学术界和公司合作,开发更透明、可理解和值得信赖的算法和模型,对于下一代透析患者至关重要。技术、患者特定数据和 AI 的结合应该有助于创建更个性化和互动的透析过程,提高患者的生活质量。