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首页> 外文期刊>Medical image analysis >Efficient multi-modal dense field non-rigid registration: alignment of histological and section images.
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Efficient multi-modal dense field non-rigid registration: alignment of histological and section images.

机译:高效的多模式密集场非刚性配准:组织学和切片图像的对齐。

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We describe a new algorithm for non-rigid registration capable of estimating a constrained dense displacement field from multi-modal image data. We applied this algorithm to capture non-rigid deformation between digital images of histological slides and digital flat-bed scanned images of cryotomed sections of the larynx, and carried out validation experiments to measure the effectiveness of the algorithm. The implementation was carried out by extending the open-source Insight ToolKit software. In diagnostic imaging of cancer of the larynx, imaging modalities sensitive to both anatomy (such as MRI and CT) and function (PET) are valuable. However, these modalities differ in their capability to discriminate the margins of tumor. Gold standard tumor margins can be obtained from histological images from cryotomed sections of the larynx. Unfortunately, the process of freezing, fixation, cryotoming and staining the tissue to create histological images introduces non-rigid deformations and significant contrast changes. We demonstrate that the non-rigid registration algorithm we present is able to capture these deformations and the algorithm allows us to align histological images with scanned images of the larynx. Our non-rigid registration algorithm constructs a deformation field to warp one image onto another. The algorithm measures image similarity using a mutual information similarity criterion, and avoids spurious deformations due to noise by constraining the estimated deformation field with a linear elastic regularization term. The finite element method is used to represent the deformation field, and our implementation enables us to assign inhomogeneous material characteristics so that hard regions resist internal deformation whereas soft regions are more pliant. A gradient descent optimization strategy is used and this has enabled rapid and accurate convergence to the desired estimate of the deformation field. A further acceleration in speed without cost of accuracy is achieved by using an adaptive mesh refinement strategy.
机译:我们描述了一种新的非刚性配准算法,该算法能够从多模态图像数据中估计约束密集位移场。我们应用该算法捕获组织学幻灯片的数字图像与喉部冷冻切片的数字平板扫描图像之间的非刚性变形,并进行了验证实验以评估该算法的有效性。通过扩展开源的Insight Insight ToolKit软件来执行该实现。在喉癌的诊断成像中,对解剖结构(如MRI和CT)和功能(PET)均敏感的成像方式非常有价值。但是,这些方式在区分肿瘤边缘的能力方面有所不同。可以从喉的冷冻切片的组织学图像中获得金标准肿瘤切缘。不幸的是,冷冻,固定,冷冻和染色组织以形成组织学图像的过程引入了非刚性变形和明显的对比度变化。我们证明了我们提出的非刚性配准算法能够捕获这些变形,并且该算法使我们能够将组织学图像与喉部扫描图像对齐。我们的非刚性配准算法构造了一个变形场,将一个图像扭曲到另一个图像上。该算法使用互信息相似性准则来测量图像相似性,并通过使用线性弹性正则项约束估计的形变场来避免由于噪声引起的虚假形变。有限元方法用于表示变形场,我们的实现使我们能够分配不均匀的材料特性,以使硬区域抵抗内部变形,而软区域则更加柔顺。使用了梯度下降优化策略,这使得能够快速,准确地收敛到变形场的所需估计值。通过使用自适应网格细化策略,可以实现速度的进一步加速而无需牺牲准确性。

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