Children's Hospital of Orange County, Orange, CA, United States.
Fred Hutch Patient Care, Seattle, WA, United States.
J Med Internet Res. 2024 Nov 14;26:e64226. doi: 10.2196/64226.
Large language models (LLMs) continue to exhibit noteworthy capabilities across a spectrum of areas, including emerging proficiencies across the health care continuum. Successful LLM implementation and adoption depend on digital readiness, modern infrastructure, a trained workforce, privacy, and an ethical regulatory landscape. These factors can vary significantly across health care ecosystems, dictating the choice of a particular LLM implementation pathway. This perspective discusses 3 LLM implementation pathways-training from scratch pathway (TSP), fine-tuned pathway (FTP), and out-of-the-box pathway (OBP)-as potential onboarding points for health systems while facilitating equitable adoption. The choice of a particular pathway is governed by needs as well as affordability. Therefore, the risks, benefits, and economics of these pathways across 4 major cloud service providers (Amazon, Microsoft, Google, and Oracle) are presented. While cost comparisons, such as on-demand and spot pricing across the cloud service providers for the 3 pathways, are presented for completeness, the usefulness of managed services and cloud enterprise tools is elucidated. Managed services can complement the traditional workforce and expertise, while enterprise tools, such as federated learning, can overcome sample size challenges when implementing LLMs using health care data. Of the 3 pathways, TSP is expected to be the most resource-intensive regarding infrastructure and workforce while providing maximum customization, enhanced transparency, and performance. Because TSP trains the LLM using enterprise health care data, it is expected to harness the digital signatures of the population served by the health care system with the potential to impact outcomes. The use of pretrained models in FTP is a limitation. It may impact its performance because the training data used in the pretrained model may have hidden bias and may not necessarily be health care-related. However, FTP provides a balance between customization, cost, and performance. While OBP can be rapidly deployed, it provides minimal customization and transparency without guaranteeing long-term availability. OBP may also present challenges in interfacing seamlessly with downstream applications in health care settings with variations in pricing and use over time. Lack of customization in OBP can significantly limit its ability to impact outcomes. Finally, potential applications of LLMs in health care, including conversational artificial intelligence, chatbots, summarization, and machine translation, are highlighted. While the 3 implementation pathways discussed in this perspective have the potential to facilitate equitable adoption and democratization of LLMs, transitions between them may be necessary as the needs of health systems evolve. Understanding the economics and trade-offs of these onboarding pathways can guide their strategic adoption and demonstrate value while impacting health care outcomes favorably.
大型语言模型(LLMs)在一系列领域继续展现出显著的能力,包括在医疗保健连续体中不断涌现的专业能力。成功实施和采用 LLM 取决于数字准备情况、现代基础设施、训练有素的劳动力、隐私和道德监管环境。这些因素在医疗保健生态系统中差异很大,决定了特定 LLM 实施途径的选择。本观点讨论了 3 种 LLM 实施途径——从头开始训练途径(TSP)、微调途径(FTP)和开箱即用途径(OBP)——作为医疗系统的潜在切入点,同时促进公平采用。特定途径的选择取决于需求和可承受性。因此,介绍了四大云服务提供商(亚马逊、微软、谷歌和甲骨文)的这些途径的风险、收益和经济学。虽然为了完整性介绍了跨云服务提供商的特定途径的成本比较,例如按需和现货定价,但阐明了托管服务和云企业工具的实用性。托管服务可以补充传统劳动力和专业知识,而企业工具,如联邦学习,可以在使用医疗保健数据实施 LLM 时克服样本量挑战。在这 3 种途径中,TSP 预计在基础设施和劳动力方面最为资源密集型,同时提供最大的定制化、增强的透明度和性能。因为 TSP 使用企业医疗保健数据来训练 LLM,所以它有望利用医疗保健系统所服务人群的数字签名,并有潜力影响结果。在 FTP 中使用预训练模型是一个限制。它可能会影响其性能,因为预训练模型中使用的训练数据可能隐藏偏见,不一定与医疗保健相关。然而,FTP 在定制化、成本和性能之间提供了平衡。虽然 OBP 可以快速部署,但它提供的定制化和透明度有限,并且不能保证长期可用性。OBP 也可能在医疗保健环境中与下游应用程序无缝接口方面带来挑战,随着时间的推移,价格和使用情况会有所不同。OBP 缺乏定制化会极大地限制其影响结果的能力。最后,强调了 LLM 在医疗保健中的潜在应用,包括会话人工智能、聊天机器人、摘要和机器翻译。虽然本观点中讨论的 3 种实施途径有可能促进 LLM 的公平采用和民主化,但随着医疗系统需求的发展,它们之间的过渡可能是必要的。了解这些入门途径的经济学和权衡取舍可以指导它们的战略采用,并在有利影响医疗保健结果的同时展示价值。