University Medical Center Groningen, Faculty of Medicine, University of Groningen, Groningen, The Netherlands.
Department of Radiology and Imaging Sciences, Divisions of Cardiothoracic Imaging, Nuclear Medicine and Molecular Imaging.
J Thorac Imaging. 2020 May;35 Suppl 1:S3-S10. doi: 10.1097/RTI.0000000000000485.
The field of artificial intelligence (AI) is currently experiencing a period of extensive growth in a wide variety of fields, medicine not being the exception. The base of AI is mathematics and computer science, and the current fame of AI in industry and research stands on 3 pillars: big data, high performance computing infrastructure, and algorithms. In the current digital era, increased storage capabilities and data collection systems, lead to a massive influx of data for AI algorithm. The size and quality of data are 2 major factors influencing performance of AI applications. However, it is highly dependent on the type of task at hand and algorithm chosen to perform this task. AI may potentially automate several tedious tasks in radiology, particularly in cardiothoracic imaging, by pre-readings for the detection of abnormalities, accurate quantifications, for example, oncologic volume lesion tracking and cardiac volume and image optimization. Although AI-based applications offer great opportunity to improve radiology workflow, several challenges need to be addressed starting from image standardization, sophisticated algorithm development, and large-scale evaluation. Integration of AI into the clinical workflow also needs to address legal barriers related to security and protection of patient-sensitive data and liability before AI will reach its full potential in cardiothoracic imaging.
人工智能(AI)领域目前在各个领域都经历着广泛的增长,医学也不例外。AI 的基础是数学和计算机科学,目前 AI 在工业和研究中的声誉建立在三个支柱之上:大数据、高性能计算基础设施和算法。在当前的数字时代,存储能力和数据采集系统的增加导致了大量数据涌入 AI 算法。数据的大小和质量是影响 AI 应用性能的两个主要因素。然而,这高度依赖于要执行的任务类型和选择执行该任务的算法。AI 可能通过预读检测异常、准确量化,例如肿瘤体积病变跟踪和心脏体积和图像优化,从而在放射学中实现多个繁琐任务的自动化,特别是在心胸影像学中。虽然基于 AI 的应用提供了改善放射学工作流程的巨大机会,但需要解决从图像标准化、复杂算法开发和大规模评估开始的几个挑战。在 AI 充分发挥其在心胸影像学中的潜力之前,将 AI 集成到临床工作流程中还需要解决与患者敏感数据的安全性和保护以及责任相关的法律障碍。