Machine learning (ML) is a subfield of Artificial intelligence (AI), and its applications in radiology are growing at an ever-accelerating rate. The most studied ML application is the automated interpretation of images. However, natural language processing (NLP), which can be combined with ML for text interpretation tasks, also has many potential applications in radiology. One such application is automation of radiology protocolling, which involves interpreting a clinical radiology referral and selecting the appropriate imaging technique. It is an essential task which ensures that the correct imaging is performed. However, the time that a radiologist must dedicate to protocolling could otherwise be spent reporting, communicating with referrers, or teaching. To date, there have been few publications in which ML models were developed that use clinical text to automate protocol selection. This article reviews the existing literature in this field. A systematic assessment of the published models is performed with reference to best practices suggested by machine learning convention. Progress towards implementing automated protocolling in a clinical setting is discussed.
翻译:机器学习(ML)是人工智能(AI)的一个子领域,它在放射学中的应用正在以越来越快的速度增长。研究最多的ML应用是图像的自动解释。然而,自然语言处理(NLP)可以与ML结合进行文本解释任务,在放射学中也有许多潜在的应用。这种应用之一是放射学协议的自动化,它涉及对临床放射学转诊和选择适当的成像技术。这是一项重要任务,它确保正确成像的进行。然而,放射学家必须花在协议上的时间,否则可以花在报告上,与裁判员或教学上。迄今为止,在开发ML模型时,很少有出版物使用临床文本进行自动协议选择。本条审查了该领域的现有文献。对已公布的模型进行系统评估时参考了机器学习公约所建议的最佳做法。讨论了在临床环境中实施自动协议的进展情况。