论文标题

跟随我的注意:用目光监督计算机辅助诊断

Follow My Eye: Using Gaze to Supervise Computer-Aided Diagnosis

论文作者

Wang, Sheng, Ouyang, Xi, Liu, Tianming, Wang, Qian, Shen, Dinggang

论文摘要

当首次将深层神经网络(DNN)引入医学图像分析社区时,研究人员的性能给人留下了深刻的印象。但是,很明显,训练正确运行的DNN通常必须有大量的手动标记数据。对监督数据和标签的这种需求是当前医学图像分析的主要瓶颈,因为从经验丰富的专家那里收集大量注释可能是耗时且昂贵的。在本文中,我们证明了阅读医学图像的放射科医生的眼睛运动可能是培训基于DNN的计算机辅助诊断(CAD)系统的一种新形式。特别是,我们在阅读图像时记录了放射科医生凝视的曲目。凝视信息进行处理,然后通过注意力一致性模块来监督DNN的注意力。据我们所知,上述管道是利用专家眼运动进行深度学习的CAD的最早努力之一。我们已经对膝关节X射线图像进行了广泛的实验,以评估骨关节炎。结果表明,在凝视监督的帮助下,我们的方法可以在诊断性能方面取得很大改善。

When deep neural network (DNN) was first introduced to the medical image analysis community, researchers were impressed by its performance. However, it is evident now that a large number of manually labeled data is often a must to train a properly functioning DNN. This demand for supervision data and labels is a major bottleneck in current medical image analysis, since collecting a large number of annotations from experienced experts can be time-consuming and expensive. In this paper, we demonstrate that the eye movement of radiologists reading medical images can be a new form of supervision to train the DNN-based computer-aided diagnosis (CAD) system. Particularly, we record the tracks of the radiologists' gaze when they are reading images. The gaze information is processed and then used to supervise the DNN's attention via an Attention Consistency module. To the best of our knowledge, the above pipeline is among the earliest efforts to leverage expert eye movement for deep-learning-based CAD. We have conducted extensive experiments on knee X-ray images for osteoarthritis assessment. The results show that our method can achieve considerable improvement in diagnosis performance, with the help of gaze supervision.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源