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Robust Global Registration through Geodesic Paths on an Empirical Manifold with Knee MRI from the Osteoarthritis Initiative (OAI)

机译:通过从骨关节炎倡议(OAI)的具有膝关节MRI的经验歧管上的测地路径强大的全球注册

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Accurate affine registrations are crucial for many applications in medical image analysis. Within the Osteoarthritis Initiative (OAI) dataset we have observed a failure rate of approximately 4% for direct affine registrations of knee MRI without manual initialisation. Despite this, the problem of robust affine registration has not received much attention in recent years. With the increase in large medical image datasets, manual intervention is not a suitable solution to achieve successful affine registrations. We introduce a framework to improve the robustness of affine registrations without prior manual initialisations. We use 10,307 MR images from the large dataset available from the OAI to model the low dimensional manifold of the population of unregistered knee MRIs as a sparse k-nearest-neighbour graph. Affine registrations are computed in advance for nearest neighbours only. When a pairwise image registration is required the shortest path across the graph is extracted to find a geodesic path on the empirical manifold. The precomputed affine transformations on this path are composed to find an estimated transformation. Finally a refinement step is used to further improve registration accuracy. Failure rates of geodesic affine registrations reduce to 0.86% with the registration framework proposed.
机译:准确的仿射注册对于许多医学图像分析中的应用至关重要。在骨关节炎倡议(OAI)数据集中,我们已经观察到膝关节MRI直接仿射注册的故障率约为4%,而无需手动初始化。尽管如此,近年来,强大的仿射登记问题并未受到很多关注。随着大型医学图像数据集的增加,手动干预不是合适的解决方案来实现成功的仿射注册。我们介绍了一个框架,以改善仿射注册的稳健性,而无需先前的手动初始化。我们使用从OAI可获得的大型数据集的10,307 MR图像来模拟未登记的膝关节MRIS群体的低维歧管作为稀疏的K-Cirost邻邻图。为最近的邻居预先计算仿射注册。当需要成对图像配准时,提取图表上的最短路径,以在经验歧管上找到测地路径。该路径上的预先计算的仿射转换组成用于找到估计的转换。最后,使用改进步骤来进一步提高登记准确性。随着注册框架,Geodsic Affine注册的失败率将减少到0.86%。

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