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Multimodal registration of optical microscopic and infrared spectroscopic images from different tissue sections: An application to colon cancer

机译:来自不同组织切片的光学显微镜和红外光谱图像的多模式登记:对结肠癌的应用

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Fourier transform infrared (FTIR) spectroscopic images provide rich information of the biochemical tissue composition that can be analyzed together with other microscopy modalities to perform objective pathological diagnoses. Hematoxylin and Eosin (H&E) stained images are the reference images that pathologists use to make a final diagnosis of most diseases, such as cancer. Therefore, H&E images may be the most interesting imaging modality to be fused with FTIR images. Unfortunately, H&E stain introduces severe confounding artifacts in the FTIR spectra. Thus, in repeatable studies different slices of tissue must be used to acquire images for each imaging modality, which must be aligned so that the different regions of tissue spatially match. The main objective of this manuscript is to establish a complete pipeline where the two types of images (H&E and FTIR) from different tissue sections are aligned or registered. The proposed automatic framework starts by obtaining grayscale images from both FTIR raw data and H&E images where analogous anatomical structures are easily distinguishable. In the first alignment step, a feature-based registration produces a fast coarse rigid alignment by using the Scale Invariant Feature Transform (SIFT) algorithm to automatically find and match relevant keypoints in both grayscale images. Due to the spatial variability between samples, different combinations of SIFT parameters are explored and the best combination is selected through the maximization of a similarity measure between the aligned images. In the second alignment step, an intensity-based registration refines the initial alignment and compensates for the local spatial differences between the tissue sections by iteratively estimating a non-rigid transformation. This methodology was used to register 47 colon samples from three different pathological groups (16 normal, 16 intermediate and 15 tumoral) with good overall results, which were quantitatively evaluated for both registration steps. In the first rigid alignment step, the global median of difference in positioning compared to a manual registration was under 1 pixel. In the second registration step, the global median gain in mutual information between the registered images was 0.125 bits. In contrast to existing approaches, the proposed method does not need a prior segmentation step that may introduce errors and reduce the spatial information content, which is crucial when different sections of tissue are used. It can improve the accuracy to combine the spatial information extracted from both the traditional H&E stained images and the emerging FTIR spectroscopy. (C) 2017 Elsevier Inc. All rights reserved.
机译:傅里叶变换红外(FTIR)光谱图像提供了丰富的生物化学组织组合物的信息,其可以与其他显微镜样式分析以进行客观病理诊断。苏木精和曙红(H&E)染色图像是病理学家用于对大多数疾病(如癌症)的最终诊断的参考图像。因此,H&E图像可以是与FTIR图像融合的最有趣的成像模块。不幸的是,H&E污染在FTIR光谱中引入了严重的混杂伪影。因此,在可重复研究中,必须使用不同切片的组织来获取每个成像模态的图像,这必须对准,使得组织的不同区域空间匹配。该稿件的主要目的是建立一个完整的管道,其中来自不同组织切片的两种类型的图像(H&E和FTIR)对齐或注册。所提出的自动框架通过获得来自FTIR原始数据和H&E图像的灰度图像来开始,其中易于解剖结构容易区分。在第一对准步骤中,基于特征的注册通过使用秤不变特征变换(SIFT)算法来自动查找并匹配两个灰度图像中的相关关键点的快速粗糙刚性对准。由于样本之间的空间可变性,探索了SIFT参数的不同组合,并且通过对准图像之间的相似度量的最大化选择了最佳组合。在第二对准步骤中,基于强度的配准通过通过迭代地估计非刚性变换来补偿组织部分之间的局部空间差异。该方法用于将来自三种不同的病理学基团(16正常,16个中间体和15个肿瘤)注册47个结肠样品,整体结果良好,这对于两个配准步骤进行了定量评估。在第一刚性对准步骤中,与手动登记相比定位差的全球中值位于1像素下。在第二个登记步骤中,注册图像之间的相互信息中的全球中值增益为0.125位。与现有方法相比,所提出的方法不需要预先分割步骤,该步骤可以引入误差并降低空间信息内容,当使用不同的组织部分时是至关重要的。它可以提高组合从传统的H&E染色图像和新出现的FTIR光谱中提取的空间信息的准确性。 (c)2017年Elsevier Inc.保留所有权利。

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