A Deep Learning Approach for Slice to Volume Biomedical Image Integration

B. Almogadwy, Kenneth McLeod, A. Burger
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引用次数: 5

Abstract

Biomedical atlas images obtained from multiple sources need to be aligned and transformed into a single coordinate system so as to be able to integrate and relate these different sets of data. Formally known as image registration, this process of image pre-processing has proven to be integral in a wide array of computer vision ap- plications, most notably in the area of medical imaging. During the last decade slice-to-volume registration, a particular case of image registration problem, has received further attention in the medical imaging community due to the emergence of several medi- cal applications of slice-to-volume mapping. This paper proposes a Convolutional Neural Network (CNN) based deep learning ap- proach for registering a 2D image slice to the 3D volume of images in a Biomedical atlas. The proposed CNN model is trained to de- termine the distance and pitch values that are used to describe the position of the 2D slice in the atlas coordinate system. High-level features are automatically extracted from the training dataset of images, which addresses the limitation of shallow machine learning techniques for handcrafted features followed by the classification task. Then on the basis of predicted values of distance and pitch, the target image is registered to the 3D volume of images. Experimental results showing the effect on the similarity of images with variation in distance and the impact of varying the distances among the classes on the regression are presented. It was observed that using the successive images at a distance of 10 lead to the maxi- mum accuracy. These results demonstrate the applicability of the proposed approach to slice-to-volume image registration.
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切片到体生物医学图像集成的深度学习方法
从多个来源获得的生物医学地图集图像需要对齐并转换为单一坐标系,以便能够整合和关联这些不同的数据集。正式称为图像配准,这一图像预处理过程已被证明是广泛的计算机视觉应用中不可或缺的一部分,尤其是在医学成像领域。在过去的十年中,由于出现了一些医学上的切片到体映射应用,切片到体配准作为图像配准问题的一个特殊案例,在医学成像界得到了进一步的关注。本文提出了一种基于卷积神经网络(CNN)的深度学习方法,用于将二维图像切片配准到生物医学地图集中的三维图像体中。所提出的CNN模型被训练来确定用于描述二维切片在地图集坐标系中的位置的距离和节距值。从图像的训练数据集中自动提取高级特征,这解决了浅机器学习技术在分类任务之后手工制作特征的局限性。然后根据距离和间距的预测值,将目标图像配准到图像的三维体中。实验结果显示了距离变化对图像相似性的影响以及类间距离变化对回归的影响。结果表明,使用距离为10的连续图像可以获得最高的精度。这些结果证明了所提出的方法对切片到体图像配准的适用性。
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