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Slice correspondence estimation using SURF descriptors and context-based search for prostate whole-mount histology MRI registration

机译:使用SURF描述符和基于上下文的搜索进行切片对应估计以进行前列腺全组织病理学MRI注册

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Registration of histopathology volumes to Magnetic Resonance Images(MRI) is a crucial step for finding correlations in Prostate Cancer (PCa) and assessing tumor agressivity. This paper proposes a two-stage framework aimed at registering both modalities. Firstly, Speeded-Up Robust Features (SURF) algorithm and a context-based search is used to automatically determine slice correspondences between MRI and histology volumes. This step initializes a multimodal nonrigid registration strategy, which allows to propagate histology slices to MRI. Evaluation was performed on 5 prospective studies using a slice index score and landmark distances. With respect to a manual ground truth, the first stage of the framework exhibited an average error of 1,54 slice index and 3,51 mm in the prostate specimen. The reconstruction of a three-dimensional Whole-Mount Histology (WMH) shows promising results aimed to perform later PCa pattern detection and staging.
机译:将组织病理学体积注册到磁共振图像(MRI)是在前列腺癌(PCa)中发现相关性并评估肿瘤侵袭性的关键步骤。本文提出了一个旨在注册两种模式的两阶段框架。首先,使用快速鲁棒特征(SURF)算法和基于上下文的搜索来自动确定MRI和组织学体积之间的切片对应关系。此步骤将初始化多模式非刚性配准策略,该策略可将组织学切片传播到MRI。使用切片指数评分和界标距离对5项前瞻性研究进行了评估。关于手动地面真相,框架的第一阶段在前列腺标本中表现出1.54的切片指数和3.51 mm的平均误差。三维全组织组织学(WMH)的重建显示出有希望的结果,旨在执行以后的PCa模式检测和分期。

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