论文标题
当前社区驱动的放射学AI在医学成像中部署
Current State of Community-Driven Radiological AI Deployment in Medical Imaging
论文作者
论文摘要
人工智能(AI)已成为解决日常任务的司空见惯。由于医学成像数据量和复杂性的指数增长,放射科医生的工作量正在稳步增加。我们预测,成像考试的数量与覆盖这一增加所需的专家放射科医生读取器的数量之间的差距将继续扩大,从而引入了对基于AI的工具的需求,这些工具可以提高放射科医生可以舒适地解释这些考试的效率。 AI已被证明可以提高医疗图像生成,处理和解释的效率,并且在全球研究实验室中都开发了各种此类AI模型。但是,其中很少有(如果有的话)能够进入常规临床用途,这种差异反映了AI研究与成功的AI翻译之间的鸿沟。为了解决临床部署的障碍,我们成立了Monai Consortium,这是一个开源社区,它正在建立医疗机构AI部署的标准,并开发工具和基础设施以促进其实施。该报告代表了Monai联盟中的行业专家和临床医生团体的每周讨论几年的讨论和动手解决问题的经验。我们确定研究实验室中的AI模型发展与随后的临床部署之间的障碍,并提出解决方案。我们的报告提供了有关在医疗机构中从开发到临床实施的成像AI模型的过程的指南。我们讨论临床放射学工作流程中的各种AI集成点。我们还提出了放射学AI用例的分类学。通过本报告,我们打算在医疗保健和AI(AI研究人员,放射学家,成像信息家和监管机构)方面教育利益相关者有关跨学科挑战和可能的解决方案。
Artificial Intelligence (AI) has become commonplace to solve routine everyday tasks. Because of the exponential growth in medical imaging data volume and complexity, the workload on radiologists is steadily increasing. We project that the gap between the number of imaging exams and the number of expert radiologist readers required to cover this increase will continue to expand, consequently introducing a demand for AI-based tools that improve the efficiency with which radiologists can comfortably interpret these exams. AI has been shown to improve efficiency in medical-image generation, processing, and interpretation, and a variety of such AI models have been developed across research labs worldwide. However, very few of these, if any, find their way into routine clinical use, a discrepancy that reflects the divide between AI research and successful AI translation. To address the barrier to clinical deployment, we have formed MONAI Consortium, an open-source community which is building standards for AI deployment in healthcare institutions, and developing tools and infrastructure to facilitate their implementation. This report represents several years of weekly discussions and hands-on problem solving experience by groups of industry experts and clinicians in the MONAI Consortium. We identify barriers between AI-model development in research labs and subsequent clinical deployment and propose solutions. Our report provides guidance on processes which take an imaging AI model from development to clinical implementation in a healthcare institution. We discuss various AI integration points in a clinical Radiology workflow. We also present a taxonomy of Radiology AI use-cases. Through this report, we intend to educate the stakeholders in healthcare and AI (AI researchers, radiologists, imaging informaticists, and regulators) about cross-disciplinary challenges and possible solutions.