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A GPU-based symmetric non-rigid image registration method in human lung

机译:一种基于GPU的对称非刚性图像登记方法在人肺中

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Abstract Quantitative computed tomography (QCT) of the lungs plays an increasing role in identifying sub-phenotypes of pathologies previously lumped into broad categories such as chronic obstructive pulmonary disease and asthma. Methods for image matching and linking multiple lung volumes have proven useful in linking structure to function and in the identification of regional longitudinal changes. Here, we seek to improve the accuracy of image matching via the use of a symmetric multi-level non-rigid registration employing an inverse consistent ( IC ) transformation whereby images are registered both in the forward and reverse directions. To develop the symmetric method, two similarity measures, the sum of squared intensity difference (SSD) and the sum of squared tissue volume difference (SSTVD), were used. The method is based on a novel generic mathematical framework to include forward and backward transformations, simultaneously, eliminating the need to compute the inverse transformation. Two implementations were used to assess the proposed method: a two-dimensional (2-D) implementation using synthetic examples with SSD, and a multi-core CPU and graphics processing unit (GPU) implementation with SSTVD for three-dimensional (3-D) human lung datasets (six normal adults studied at total lung capacity (TLC) and functional residual capacity (FRC)). Success was evaluated in terms of the IC transformation consistency serving to link TLC to FRC. 2-D registration on synthetic images, using both symmetric and non-symmetric SSD methods, and comparison of displacement fields showed that the symmetric method gave a symmetrical grid shape and reduced IC errors, with the mean values of IC errors decreased by 37%. Results for both symmetric and non-symmetric transformations of human datasets showed that the symmetric method gave better results for IC errors in all cases, with mean values of IC errors for the symmetric method lower than the non-symmetric methods using both SSD and SSTVD. The GPU version demonstrated an average of 43 times speedup and ~5.2 times speedup over the single-threaded and 12-threaded CPU versions, respectively. Run times with the GPU were as fast as 2?min. The symmetric method improved the inverse consistency, aiding the use of image registration in the QCT-based evaluation of the lung.
机译:摘要肺部的定量计算断层扫描(QCT)在鉴定以前集中成慢性阻塞性肺病和哮喘等广泛类别的病理的子表型起着越来越大的作用。图像匹配和连接多种肺量的方法已经证明是有用的,可用于将结构连接到功能和识别区域纵向变化。在这里,我们寻求通过使用相反一致(IC)变换的对称多级非刚性登记来提高图像匹配的准确性,从而在正向和反向中登记图像。为了开发对称方法,使用两个相似度测量,使用平方强度差(SSD)和平方组织体积差(SSTVD)的总和。该方法基于新的通用数学框架,同时包括前向和后向变换,消除了计算逆变换的需要。使用两种实现来评估所提出的方法:使用具有SSD的合成示例的二维(2-D)实现,以及具有三维SSTVD的多核CPU和图形处理单元(GPU)实现(3-D. )人肺数据集(在总肺容量(TLC)和功能残留容量(FRC)中研究的六个正常成人)。在IC转换一致性方面评估了用于将TLC链接到FRC的IC转换一致性的成功。 2-D在合成图像上注册,使用对称和非对称SSD方法,并且位移字段的比较显示对称方法给出了对称网格形状和减少的IC误差,IC误差的平均值降低了37%。对对称和非对称变换的人类数据集的结果表明,对称方法在所有情况下对IC错误产生了更好的结果,具有比使用SSD和SSTVD的非对称方法低的IC误差的平均值。 GPU版本分别展现了平均加速43倍,分别在单线程和12线CPU版本上加速了〜5.2倍。使用GPU的运行时间与2?分钟一样快。对称方法改善了逆一致性,帮助在基于QCT的基于QCT的评估中使用图像配准。

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