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Landmark Optimization Using Local Curvature for Point-Based Nonlinear Rodent Brain Image Registration

机译:基于局部曲率的地标优化用于基于点的非线性啮齿动物脑图像配准

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Purpose. To develop a technique to automate landmark selection for point-based interpolating transformations for nonlinear medical image registration.Materials and Methods. Interpolating transformations were calculated from homologous point landmarks on the source (image to be transformed) and target (reference image). Point landmarks are placed at regular intervals on contours of anatomical features, and their positions are optimized along the contour surface by a function composed of curvature similarity and displacements of the homologous landmarks. The method was evaluated in two cases (n=5each). In one, MRI was registered to histological sections; in the second, geometric distortions in EPI MRI were corrected. Normalized mutual information and target registration error were calculated to compare the registration accuracy of the automatically and manually generated landmarks.Results. Statistical analyses demonstrated significant improvement (P<0.05) in registration accuracy by landmark optimization in most data sets and trends towards improvement (P<0.1) in others as compared to manual landmark selection.
机译:目的。为非线性医学图像配准开发基于点的插值变换的地标选择自动化技术。材料和方法。根据源(要转换的图像)和目标(参考图像)上的同源点界标来计算插值转换。将点界标以规则的间隔放置在解剖特征的轮廓上,并通过由曲率相似度和同源界标的位移组成的函数沿轮廓表面优化其位置。在两种情况下评估了该方法(n = 5)。在其中之一中,MRI被记录到组织切片中。第二,纠正了EPI MRI中的几何变形。计算归一化的互信息和目标配准误差,以比较自动和手动生成的地标的配准精度。统计分析表明,与手动地标选择相比,大多数数据集中的地标优化显着提高了注册准确性(P <0.05),而其他数据集则显示出改善趋势(P <0.1)。

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