Population Health and Genomics, School of Medicine, University of Dundee, Dundee, UK.
Institute for Applied Health Research, University of Birmingham, Birmingham, UK.
Diabetologia. 2024 Feb;67(2):223-235. doi: 10.1007/s00125-023-06038-8. Epub 2023 Nov 18.
The discourse amongst diabetes specialists and academics regarding technology and artificial intelligence (AI) typically centres around the 10% of people with diabetes who have type 1 diabetes, focusing on glucose sensors, insulin pumps and, increasingly, closed-loop systems. This focus is reflected in conference topics, strategy documents, technology appraisals and funding streams. What is often overlooked is the wider application of data and AI, as demonstrated through published literature and emerging marketplace products, that offers promising avenues for enhanced clinical care, health-service efficiency and cost-effectiveness. This review provides an overview of AI techniques and explores the use and potential of AI and data-driven systems in a broad context, covering all diabetes types, encompassing: (1) patient education and self-management; (2) clinical decision support systems and predictive analytics, including diagnostic support, treatment and screening advice, complications prediction; and (3) the use of multimodal data, such as imaging or genetic data. The review provides a perspective on how data- and AI-driven systems could transform diabetes care in the coming years and how they could be integrated into daily clinical practice. We discuss evidence for benefits and potential harms, and consider existing barriers to scalable adoption, including challenges related to data availability and exchange, health inequality, clinician hesitancy and regulation. Stakeholders, including clinicians, academics, commissioners, policymakers and those with lived experience, must proactively collaborate to realise the potential benefits that AI-supported diabetes care could bring, whilst mitigating risk and navigating the challenges along the way.
糖尿病专家和学者之间关于技术和人工智能(AI)的讨论通常集中在 10%患有 1 型糖尿病的糖尿病患者身上,重点关注葡萄糖传感器、胰岛素泵,以及越来越多的闭环系统。这一焦点反映在会议主题、战略文件、技术评估和资金流中。然而,人们常常忽略了数据和 AI 的更广泛应用,这在已发表的文献和新兴市场产品中得到了体现,为改善临床护理、提高卫生服务效率和成本效益提供了有前景的途径。
本综述概述了 AI 技术,并在更广泛的背景下探讨了 AI 和数据驱动系统的使用和潜力,涵盖了所有类型的糖尿病,包括:(1)患者教育和自我管理;(2)临床决策支持系统和预测分析,包括诊断支持、治疗和筛查建议、并发症预测;(3)多模态数据的使用,如成像或遗传数据。
本综述提供了一个视角,探讨了数据和 AI 驱动系统如何在未来几年改变糖尿病护理方式,以及它们如何融入日常临床实践。我们讨论了证据支持的益处和潜在危害,并考虑了可扩展性采用的现有障碍,包括与数据可用性和交换、健康不平等、临床医生的犹豫和监管相关的挑战。利益相关者,包括临床医生、学者、决策者和有实际经验的人,必须积极合作,以实现 AI 支持的糖尿病护理带来的潜在益处,同时减轻风险并应对沿途的挑战。