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Estimation of the Rigid-Body Motion from Three-Dimensional Images Using a Generalized Center-of-Mass Points Approach

机译:利用广义核心点方法估计三维图像的刚体运动

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We present an analytical method for the estimation of rigid-body motion in three-dimensional SPECT and PET slices. This method utilizes mathematically defined generalized center-of-mass points in images, requiring neither segmentation nor an iterative process. It can be applied to compensation of the rigid-body motion in both SPECT and PET. We generalized the formula for the center-of-mass and obtained a family of points co-moving with the object's rigid-body motion. In calculation of the generalized center-of-mass points and estimation of the rigid-body motion, we optimized a Gaussian smoothing function and chose the best three points, which resulted in the minimum root-mean-square difference between images. The estimated motion was used to generate a summed image, or incorporated in the iterative reconstruction of the motion-present data. To evaluate this method for different noise levels, we performed simulations with the MCAT phantom. We observed that though noise degraded the motion-detection accuracy, this method helped in reducing the motion artifact both visually and quantitatively. We also acquired four sets of the emission and transmission data of the Data Spectrum Anthropomorphic Phantom positioned at four different locations and/or orientations. From these we generated a composite acquisition simulating phantom movements during acquisition. The simulated motion was calculated from the generalized center-of-mass points on the images reconstructed from individual acquisitions. We determined that motion-compensation greatly reduced the motion artifact. Finally, in a simulation with the gated MCAT phantom, an exaggerated rigid-body motion was applied to the end-systolic frame. The motion was estimated from the end-diastolic and end-systolic images, and used to sum them into a summed image without obvious artifact. As an image-driven approach this method assumes angularly complete data sets for each state of motion. We expect this method to be applied in correction of the respiratory motion in respiratory gated SPECT and respiratory or other rigid-body motion in PET.
机译:我们介绍了一种分析方法,用于估计三维SPECT和PET切片中的刚体运动。该方法利用数学上定义的图像中的全部质量点,要求既不是分割也不是迭代过程。它可以应用于在SPECT和PET中的刚体运动的补偿。我们广泛地通过了质量中心的公式,并获得了与物体刚体运动共同移动的一系列点。在计算广义质量中心和刚体运动的估计中,我们优化了高斯平滑功能,并选择了最佳三个点,从而导致图像之间的最小根均方差异。估计的运动用于生成总和图像,或者结合在运动当前数据的迭代重建中。为了评估不同噪声水平的方法,我们使用MCAT幻像进行了模拟。我们观察到,尽管噪声降低了运动检测精度,但该方法有助于在视觉上和定量地减少运动伪影。我们还获得了位于四个不同位置和/或取向的数据谱拟方针模型的四组排放和传输数据。根据这些,我们在采集期间产生了模拟模拟幻像运动的复合采集。模拟运动是根据从单独采集重建的图像上的广义质量点计算。我们确定运动补偿大大减少了运动伪影。最后,在用栅极MCAT模拟的模拟中,将夸张的刚体运动施加到末端收缩框架上。从最终舒张和终端 - 收缩图像估计该运动,并用于将它们与求和图像的总和,而没有明显的伪影。作为图像驱动方法,该方法假设每个运动状态的角度完全数据集。我们预计这种方法将应用于呼吸门的呼吸运动中的呼吸运动和呼吸或其他刚体运动中的呼吸运动。

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