We address the problem of supporting radiologists in the longitudinal management of lung cancer. Therefore, we proposed a deep learning pipeline, composed of four stages that completely automatized from the detection of nodules to the classification of cancer, through the detection of growth in the nodules. In addition, the pipeline integrated a novel approach for nodule growth detection, which relied on a recent hierarchical probabilistic U-Net adapted to report uncertainty estimates. Also, a second novel method was introduced for lung cancer nodule classification, integrating into a two stream 3D-CNN network the estimated nodule malignancy probabilities derived from a pretrained nodule malignancy network. The pipeline was evaluated in a longitudinal cohort and reported comparable performances to the state of art.
翻译:我们处理支持放射学家对肺癌进行纵向管理的问题,因此,我们提议建立一个深层学习管道,由四个阶段组成,通过检测结核生长,从检测结核到癌症分类,这四个阶段完全自动化;此外,管道还采用了结核生长检测的新颖方法,该方法依靠最近的等级概率U-Net,该方法经过调整,以报告不确定性估计;此外,为肺癌结核分类采用了第二个新方法,将预先训练的结核恶性肿瘤网络产生的估计结核恶性能纳入两个3D-CNN流网络;该管道用长纵向组别进行评估,并报告了与最新技术的类似性能。