Insights Imaging. 2019 Apr 4;10(1):44. doi: 10.1186/s13244-019-0738-2.
This paper aims to provide a review of the basis for application of AI in radiology, to discuss the immediate ethical and professional impact in radiology, and to consider possible future evolution.Even if AI does add significant value to image interpretation, there are implications outside the traditional radiology activities of lesion detection and characterisation. In radiomics, AI can foster the analysis of the features and help in the correlation with other omics data. Imaging biobanks would become a necessary infrastructure to organise and share the image data from which AI models can be trained. AI can be used as an optimising tool to assist the technologist and radiologist in choosing a personalised patient's protocol, tracking the patient's dose parameters, providing an estimate of the radiation risks. AI can also aid the reporting workflow and help the linking between words, images, and quantitative data. Finally, AI coupled with CDS can improve the decision process and thereby optimise clinical and radiological workflow.
本文旨在综述人工智能在放射学中的应用基础,探讨其对放射学直接的伦理和专业影响,并思考其未来可能的发展。即使人工智能确实为图像解读增添了重大价值,但在传统的病变检测和特征描述等放射学活动之外,仍存在一些影响。在放射组学中,人工智能可以促进特征分析,并有助于与其他组学数据进行关联。影像生物样本库将成为组织和共享图像数据的必要基础设施,从中可以训练人工智能模型。人工智能可以用作优化工具,协助技术人员和放射科医生选择个性化的患者检查方案,跟踪患者的剂量参数,估计辐射风险。人工智能还可以辅助报告流程,并帮助建立文字、图像和定量数据之间的联系。最后,人工智能与临床决策支持系统相结合可以改善决策过程,从而优化临床和放射学工作流程。