Montagnon Emmanuel, Cerny Milena, Cadrin-Chênevert Alexandre, Hamilton Vincent, Derennes Thomas, Ilinca André, Vandenbroucke-Menu Franck, Turcotte Simon, Kadoury Samuel, Tang An
Centre de recherche du Centre Hospitalier de l'Université de Montréal (CRCHUM), Montréal, Québec, Canada.
Department of Medical Imaging, CISSS Lanaudière, Université Laval, Joliette, Québec, Canada.
Insights Imaging. 2020 Feb 10;11(1):22. doi: 10.1186/s13244-019-0832-5.
Interest for deep learning in radiology has increased tremendously in the past decade due to the high achievable performance for various computer vision tasks such as detection, segmentation, classification, monitoring, and prediction. This article provides step-by-step practical guidance for conducting a project that involves deep learning in radiology, from defining specifications, to deployment and scaling. Specifically, the objectives of this article are to provide an overview of clinical use cases of deep learning, describe the composition of multi-disciplinary team, and summarize current approaches to patient, data, model, and hardware selection. Key ideas will be illustrated by examples from a prototypical project on imaging of colorectal liver metastasis. This article illustrates the workflow for liver lesion detection, segmentation, classification, monitoring, and prediction of tumor recurrence and patient survival. Challenges are discussed, including ethical considerations, cohorting, data collection, anonymization, and availability of expert annotations. The practical guidance may be adapted to any project that requires automated medical image analysis.
在过去十年中,由于深度学习在诸如检测、分割、分类、监测和预测等各种计算机视觉任务中能够实现较高的性能,放射学领域对深度学习的兴趣急剧增加。本文提供了一份逐步的实践指南,用于开展一个涉及放射学深度学习的项目,从定义规格到部署和扩展。具体而言,本文的目标是概述深度学习的临床应用案例,描述多学科团队的组成,并总结当前在患者、数据、模型和硬件选择方面的方法。关键思想将通过一个关于结直肠癌肝转移成像的典型项目中的示例进行说明。本文阐述了肝脏病变检测、分割、分类、监测以及肿瘤复发和患者生存预测的工作流程。还讨论了相关挑战,包括伦理考量、队列分组、数据收集、匿名化以及专家注释的可用性。该实践指南可适用于任何需要自动化医学图像分析的项目。