Diagnostic Image Analysis Group, Radboud University Medical Center, Nijmegen, The Netherlands.
Department of Pathology, Radboud University Medical Center, Nijmegen, The Netherlands.
Sci Rep. 2017 Apr 19;7:46479. doi: 10.1038/srep46479.
The introduction of lung cancer screening programs will produce an unprecedented amount of chest CT scans in the near future, which radiologists will have to read in order to decide on a patient follow-up strategy. According to the current guidelines, the workup of screen-detected nodules strongly relies on nodule size and nodule type. In this paper, we present a deep learning system based on multi-stream multi-scale convolutional networks, which automatically classifies all nodule types relevant for nodule workup. The system processes raw CT data containing a nodule without the need for any additional information such as nodule segmentation or nodule size and learns a representation of 3D data by analyzing an arbitrary number of 2D views of a given nodule. The deep learning system was trained with data from the Italian MILD screening trial and validated on an independent set of data from the Danish DLCST screening trial. We analyze the advantage of processing nodules at multiple scales with a multi-stream convolutional network architecture, and we show that the proposed deep learning system achieves performance at classifying nodule type that surpasses the one of classical machine learning approaches and is within the inter-observer variability among four experienced human observers.
肺癌筛查计划的引入将在不久的将来产生前所未有的大量胸部 CT 扫描,放射科医生将不得不阅读这些扫描结果,以决定患者的随访策略。根据目前的指南,对筛查出的结节的评估强烈依赖于结节的大小和结节的类型。在本文中,我们提出了一种基于多流多尺度卷积网络的深度学习系统,该系统可以自动对所有与结节评估相关的结节类型进行分类。该系统处理包含结节的原始 CT 数据,而无需任何其他信息,如结节分割或结节大小,并通过分析给定结节的任意数量的 2D 视图来学习 3D 数据的表示。深度学习系统使用来自意大利 MILD 筛查试验的数据进行训练,并在来自丹麦 DLCST 筛查试验的独立数据集上进行验证。我们分析了使用多流卷积网络架构处理多尺度结节的优势,并表明所提出的深度学习系统在分类结节类型方面的性能超过了经典机器学习方法的性能,并且与四位经验丰富的人类观察者之间的观察者内变异性相当。