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Dueling Deep Q-Network For Unsupervised Inter-Frame Eye Movement Correction In Optical Coherence Tomography Volumes

机译:决斗深层Q-Network用于光学相干断层扫描卷中的无监督帧间运动校正

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In optical coherence tomography (OCT) volumes of retina, the sequential acquisition of the individual slices makes this modality prone to motion artifacts, misalignments between adjacent slices being the most noticeable. Any distortion in OCT volumes can bias structural analysis and influence the outcome of longitudinal studies. The presence of speckle noise characteristic of this imaging modality leads to inaccuracies when traditional registration techniques are employed. Also, the lack of a well-defined ground truth makes supervised deep-learning techniques ill-posed to tackle the problem. In this paper, we tackle these issues by using deep reinforcement learning to correct inter-frame movements in an unsupervised manner. Specifically, we use dueling deep Q-network to train an artificial agent to find the optimal policy, i.e. a sequence of actions, that best improves the alignment by maximizing the sum of reward signals. Instead of relying on the ground-truth of transformation parameters to guide the rewarding system, for the first time, we use a combination of intensity based image similarity metrics. Further, to avoid the agent bias towards speckle noise, we ensure the agent can see retinal layers as part of the interacting environment. For quantitative evaluation, we simulate the eye movement artifacts by applying 2D rigid transformations on individual B-scans. The proposed model achieves an average of 0.985 and 0.914 for normalized mutual information and correlation coefficient, respectively. We also compare our model with elastix intensity based medical image registration approach, where significant improvement is achieved by our model for both noisy and denoised volumes.
机译:在光学相干断层扫描(OCT)的视网膜中,各个切片的顺序采集使得这种方式容易发生运动伪影,相邻切片之间的错位是最明显的。 OCT体积中的任何畸变都可以偏离结构分析并影响纵向研究的结果。当采用传统登记技术时,这种成像模块的散斑噪声特性的存在导致不准确的空间。此外,缺乏明确的地面真理使受监管的深度学习技巧不适用于解决问题。在本文中,我们通过使用深度加强学习以无监督方式纠正帧间运动来解决这些问题。具体而言,我们使用Dueling Deep Q-Network培训人工代理以找到最佳政策,即通过最大化奖励信号的总和来最佳地改善对齐。首次使用基于强度的图像相似度量的强度的组合,而不是依赖转换参数的地面真实来指导奖励系统。此外,为了避免代理偏置散对斑点噪声,我们确保代理可以将视网膜层视为相互作用环境的一部分。为了定量评估,我们通过在单个B扫描上应用2D刚性变换来模拟眼睛运动伪影。对于标准化的互信息和相关系数,所提出的模型平均达到0.985和0.914。我们还将模型与基于Elastix强度的医学图像登记方法进行了比较,其中我们的模型对于嘈杂和去噪量的模型实现了重大改进。

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