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Deformable Registration of Multi-modal Microscopic Images Using a Pyramidal Interactive Registration-Learning Methodology

机译:使用金字塔形交互式套准学习方法对多模式显微图像进行可变形套准

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Co-registration of multi-modal microscopic images can integrate benefits of each modality, yet major challenges come from inherent difference between staining, distortions of specimens and various artefacts. In this paper, we propose a new interactive registration-learning method to register functional fluorescence (IF) and structural histology (HE) images in a pyramidal fashion. We synthesize HE image from the multi-channel IF image using a supervised machine learning technique and hence reduce the multi-modality registration problem into a mono-modality one, in which case the normalised cross correlation is used as the similarity measure. Unlike conventional applications of supervised learning, our classifier is not trained by 'ground-truth' (perfectly-registered) training dataset, as they are not available. Instead, we use a relatively noisy training dataset (affinely-registered) as an initialization and rely on the robustness of machine learning to the outliers and label updates via pyramidal deformable registration to gain better learning and predictions. In this sense, the proposed methodology has potential to be adapted in other learning problems as the manual labelling is usually imprecise and very difficult in the case of heterogeneous tissues.
机译:多模态显微图像的共配准可以整合每种模态的优势,但是主要挑战来自染色,标本变形和各种人工制品之间的固有差异。在本文中,我们提出了一种新的交互式注册学习方法,以金字塔的方式注册功能性荧光(IF)和结构组织学(HE)图像。我们使用有监督的机器学习技术从多通道IF图像中合成HE图像,从而将多模态配准问题简化为单模态配准问题,在这种情况下,将归一化互相关用作相似性度量。与传统的监督学习应用不同,我们的分类器不受“地面真相”(完全注册)训练数据集的训练,因为它们不可用。相反,我们使用相对嘈杂的训练数据集(仿射注册)作为初始化,并依靠机器学习对异常值的鲁棒性和通过金字塔形可变形注册进行标签更新来获得更好的学习和预测。从这个意义上说,由于人工标记通常不精确且在异质组织的情况下非常困难,因此所提出的方法有可能适用于其他学习问题。

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