Dunn Patrick, Ali Asif, Patel Akash P, Banerjee Srikanta
American Heart Association, Center for Health Technology & Innovation, Dallas, TX (P.D.).
University of Texas Health Science Center, Houston (A.A.).
Hypertension. 2025 Jan;82(1):26-35. doi: 10.1161/HYPERTENSIONAHA.123.22347. Epub 2024 Jul 16.
Recent breakthroughs in artificial intelligence (AI) have caught the attention of many fields, including health care. The vision for AI is that a computer model can process information and provide output that is indistinguishable from that of a human and, in specific repetitive tasks, outperform a human's capability. The 2 critical underlying technologies in AI are used for supervised and unsupervised machine learning. Machine learning uses neural networks and deep learning modeled after the human brain from structured or unstructured data sets to learn, make decisions, and continuously improve the model. Natural language processing, used for supervised learning, is understanding, interpreting, and generating information using human language in chatbots and generative and conversational AI. These breakthroughs result from increased computing power and access to large data sets, setting the stage for releasing large language models, such as ChatGPT and others, and new imaging models using computer vision. Hypertension management involves using blood pressure and other biometric data from connected devices and generative AI to communicate with patients and health care professionals. AI can potentially improve hypertension diagnosis and treatment through remote patient monitoring and digital therapeutics.
人工智能(AI)领域最近的突破引起了包括医疗保健在内的许多领域的关注。人工智能的愿景是,计算机模型能够处理信息并提供与人类难以区分的输出,并且在特定的重复性任务中,其表现优于人类。人工智能中两个关键的基础技术用于监督式和无监督式机器学习。机器学习利用神经网络和模仿人类大脑的深度学习,从结构化或非结构化数据集中进行学习、做出决策并不断改进模型。用于监督学习的自然语言处理,是在聊天机器人以及生成式和对话式人工智能中使用人类语言来理解、解释和生成信息。这些突破得益于计算能力的提升以及对大数据集的获取,为诸如ChatGPT等大型语言模型以及使用计算机视觉的新成像模型的推出奠定了基础。高血压管理涉及使用来自联网设备的血压和其他生物特征数据以及生成式人工智能与患者和医疗保健专业人员进行沟通。人工智能有可能通过远程患者监测和数字疗法改善高血压的诊断和治疗。