Google, Mountain View, California.
JAMA. 2024 Jan 16;331(3):242-244. doi: 10.1001/jama.2023.25057.
Interest in artificial intelligence (AI) has reached an all-time high, and health care leaders across the ecosystem are faced with questions about where, when, and how to deploy AI and how to understand its risks, problems, and possibilities.
While AI as a concept has existed since the 1950s, all AI is not the same. Capabilities and risks of various kinds of AI differ markedly, and on examination 3 epochs of AI emerge. AI 1.0 includes symbolic AI, which attempts to encode human knowledge into computational rules, as well as probabilistic models. The era of AI 2.0 began with deep learning, in which models learn from examples labeled with ground truth. This era brought about many advances both in people's daily lives and in health care. Deep learning models are task-specific, meaning they do one thing at a time, and they primarily focus on classification and prediction. AI 3.0 is the era of foundation models and generative AI. Models in AI 3.0 have fundamentally new (and potentially transformative) capabilities, as well as new kinds of risks, such as hallucinations. These models can do many different kinds of tasks without being retrained on a new dataset. For example, a simple text instruction will change the model's behavior. Prompts such as "Write this note for a specialist consultant" and "Write this note for the patient's mother" will produce markedly different content.
Foundation models and generative AI represent a major revolution in AI's capabilities, ffering tremendous potential to improve care. Health care leaders are making decisions about AI today. While any heuristic omits details and loses nuance, the framework of AI 1.0, 2.0, and 3.0 may be helpful to decision-makers because each epoch has fundamentally different capabilities and risks.
人工智能(AI)的兴趣达到了历史新高,整个生态系统的医疗保健领导者都面临着关于在何处、何时以及如何部署 AI,以及如何理解其风险、问题和可能性的问题。
虽然自 20 世纪 50 年代以来 AI 作为一个概念已经存在,但并非所有 AI 都是相同的。各种 AI 的能力和风险有明显的不同,经过检查,出现了 3 个 AI 时代。AI 1.0 包括试图将人类知识编码到计算规则中的符号 AI,以及概率模型。AI 2.0 时代始于深度学习,在深度学习中,模型从带有真实标签的示例中学习。这个时代在人们的日常生活和医疗保健方面都带来了许多进步。深度学习模型是特定于任务的,这意味着它们一次只做一件事,并且主要专注于分类和预测。AI 3.0 是基础模型和生成式 AI 的时代。AI 3.0 中的模型具有全新的(潜在变革性的)能力,以及新的风险,例如幻觉。这些模型可以在无需对新数据集进行重新训练的情况下执行多种不同类型的任务。例如,一个简单的文本指令将改变模型的行为。例如“为专家顾问写这张便条”和“为患者的母亲写这张便条”的提示将产生明显不同的内容。
基础模型和生成式 AI 代表了 AI 能力的重大革命,为改善护理提供了巨大的潜力。医疗保健领导者今天正在对 AI 做出决策。虽然任何启发式方法都忽略了细节并失去了细微差别,但 AI 1.0、2.0 和 3.0 的框架可能对决策者有帮助,因为每个时代都具有根本不同的能力和风险。