Follow-up serves an important role in the management of pulmonary nodules for lung cancer. Imaging diagnostic guidelines with expert consensus have been made to help radiologists make clinical decision for each patient. However, tumor growth is such a complicated process that it is difficult to stratify high-risk nodules from low-risk ones based on morphologic characteristics. On the other hand, recent deep learning studies using convolutional neural networks (CNNs) to predict the malignancy score of nodules, only provides clinicians with black-box predictions. To this end, we propose a unified framework, named Nodule Follow-Up Prediction Network (NoFoNet), which predicts the growth of pulmonary nodules with high-quality visual appearances and accurate quantitative results, given any time interval from baseline observations. It is achieved by predicting future displacement field of each voxel with a WarpNet. A TextureNet is further developed to refine textural details of WarpNet outputs. We also introduce techniques including Temporal Encoding Module and Warp Segmentation Loss to encourage time-aware and shape-aware representation learning. We build an in-house follow-up dataset from two medical centers to validate the effectiveness of the proposed method. NoFoNet significantly outperforms direct prediction by a U-Net in terms of visual quality; more importantly, it demonstrates accurate differentiating performance between high- and low-risk nodules. Our promising results suggest the potentials in computer aided intervention for lung nodule management.


翻译:在肺癌肺癌肺脏管理方面,跟踪工作起着重要作用; 以专家共识制作诊断准则,帮助放射学家为每个病人做出临床决定; 然而,肿瘤的生长是一个复杂的过程,很难从基于皮肤特征的低风险结核中分解出高风险结核; 另一方面,最近利用革命神经网络(CNNs)进行的深入学习研究,预测结核恶性分数,只向临床医生提供黑盒预测; 为此,我们提议了一个统一的框架,名为结核跟踪预测网络(NoFoNet),用于预测具有高质量视觉外观和准确定量结果的肺膜结核的增长,而不论基线观测间隔时间长短,都难以将高风险结核结核从高风险结核分离出来; 进一步开发了一个TextureNet,以完善WarpNet产出的纹理细节。 我们还引入了各种技术,包括Temologal Encoting模块和Warp Civalation Last, 以鼓励对时间和形状进行准确认识的预测; 利用网络中的任何时间间隔值预测,我们从两个直观值预测中心开始,从一个潜在的直观定位分析结果,通过在高端分析中心进行。

0
下载
关闭预览

相关内容

专知会员服务
60+阅读 · 2020年3月19日
Keras François Chollet 《Deep Learning with Python 》, 386页pdf
专知会员服务
151+阅读 · 2019年10月12日
【泡泡汇总】CVPR2019 SLAM Paperlist
泡泡机器人SLAM
14+阅读 · 2019年6月12日
Hierarchically Structured Meta-learning
CreateAMind
26+阅读 · 2019年5月22日
Transferring Knowledge across Learning Processes
CreateAMind
27+阅读 · 2019年5月18日
Unsupervised Learning via Meta-Learning
CreateAMind
42+阅读 · 2019年1月3日
disentangled-representation-papers
CreateAMind
26+阅读 · 2018年9月12日
Hierarchical Disentangled Representations
CreateAMind
4+阅读 · 2018年4月15日
计算机视觉近一年进展综述
机器学习研究会
9+阅读 · 2017年11月25日
Arxiv
0+阅读 · 2020年11月26日
UPSNet: A Unified Panoptic Segmentation Network
Arxiv
4+阅读 · 2019年1月12日
VIP会员
相关资讯
Top
微信扫码咨询专知VIP会员