Current AI-driven research in radiology requires resources and expertise that are often inaccessible to small and resource-limited labs. The clinicians who are able to participate in AI research are frequently well-funded, well-staffed, and either have significant experience with AI and computing, or have access to colleagues or facilities that do. Current imaging data is clinician-oriented and is not easily amenable to machine learning initiatives, resulting in inefficient, time consuming, and costly efforts that rely upon a crew of data engineers and machine learning scientists, and all too often preclude radiologists from driving AI research and innovation. We present the system and methodology we have developed to address infrastructure and platform needs, while reducing the staffing and resource barriers to entry. We emphasize a data-first and modular approach that streamlines the AI development and deployment process while providing efficient and familiar interfaces for radiologists, such that they can be the drivers of new AI innovations.
翻译:目前由AI驱动的放射学研究需要资源和专门知识,而小型和资源有限的实验室往往无法获得这些资源和专门知识。能够参与AI研究的临床医生往往资金充足、人员充足,在AI和计算方面经验丰富,或者能够接触同事或设施。 目前的成像数据面向临床,不易采用机器学习举措,导致效率低、耗时高、费用高昂的工作,依赖数据工程师和机器学习科学家的团队,而且常常阻止放射科医生推动AI的研究和创新。我们介绍了我们为解决基础设施和平台需要而开发的系统和方法,同时减少了进入该研究所的人员配置和资源障碍。我们强调一种数据先行和模块化的方法,简化了AI的开发和部署过程,同时为放射科人员提供高效和熟悉的界面,从而能够成为新的AI创新的驱动者。