呼吸变形模型在多分辨率腹部MRI中的应用

Chompunuch Sarasaen, S. Chatterjee, Mario Breitkopf, D. Iuso, G. Rose, O. Speck
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引用次数: 0

摘要

动态MRI是一种连续获取一系列图像以跟踪生理变化的技术。然而,如此快速的成像导致了低分辨率的图像。本研究将动态低分辨率图像计算的腹部变形模型应用于先前获得的高分辨率图像,生成动态高分辨率MRI。动态低分辨率图像被模拟成不同的呼吸阶段(吸气和呼气)。然后,使用b样条SyN可变形模型,以相互关联作为相似度度量,在呼吸时间点之间进行图像配准。根据高度欠采样数据估计不同呼吸阶段之间的变形模型。然后将该变形模型应用于高分辨率图像,得到不同呼吸阶段的高分辨率图像。结果表明,变形模型可以从相对很低分辨率的图像中计算出来。
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Breathing deformation model - application to multi-resolution abdominal MRI
Dynamic MRI is a technique of acquiring a series of images continuously to follow the physiological changes over time. However, such fast imaging results in low resolution images. In this work, abdominal deformation model computed from dynamic low resolution images have been applied to high resolution image, acquired previously, to generate dynamic high resolution MRI. Dynamic low resolution images were simulated into different breathing phases (inhale and exhale). Then, the image registration between breathing time points was performed using the B-spline SyN deformable model and using cross-correlation as a similarity metric. The deformation model between different breathing phases were estimated from highly undersampled data. This deformation model was then applied to the high resolution images to obtain high resolution images of different breathing phases. The results indicated that the deformation model could be computed from relatively very low resolution images.
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EMBC 2019 Speakers EMBC 2019 Preface EMBC 2019 Welcome EMBC 2019 Author Index Breathing deformation model - application to multi-resolution abdominal MRI
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