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Diffusion Tensor Driven Image Registration: A Deep Learning Approach

机译:扩散张量驱动图像注册:深入学习方法

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Tracking microsctructural changes in the developing brain relies on accurate inter-subject image registration. However, most methods rely on either structural or diffusion data to learn the spatial correspondences between two or more images, without taking into account the complementary information provided by using both. Here we propose a deep learning registration framework which combines the structural information provided by T_2 -weighted (T_2w) images with the rich microstructural information offered by diffusion tensor imaging (DTI) scans. This allows our trained network to register pairs of images in a single pass. We perform a leave-one-out cross-validation study where we compare the performance of our multi-modality registration model with a baseline model trained on structural data only, in terms of Dice scores and differences in fractional anisotropy (FA) maps. Our results show that in terms of average Dice scores our model performs better in subcortical regions when compared to using structural data only. Moreover, average sum-of-squared differences between warped and fixed FA maps show that our proposed model performs better at aligning the diffusion data.
机译:跟踪显影大脑的微区别变化依赖于准确的对象间图像登记。然而,大多数方法依赖于结构或扩散数据来学习两个或多个图像之间的空间对应关系,而不考虑通过使用两者提供的互补信息。在这里,我们提出了一个深入的学习登记框架,该框架将T_2-重量(T_2W)图像提供的结构信息与扩散张量成像(DTI)扫描提供的丰富的微观结构信息组合。这允许我们的培训网络在单个通过中注册一对图像。我们执行休假交叉验证研究,我们将多种式联符与基线模型的性能进行比较,仅在骰子分数和分数各向异性(FA)地图中的差异方面的结构数据。我们的结果表明,在平均骰子方面,与使用结构数据相比,在平均骰子中,我们的模型在皮质区域中表现更好。此外,翘曲和固定的FA图之间的平均平均差异显示我们所提出的模型更好地对齐扩散数据。

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