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Reference Database Driven Statistical Analysis of Automated Frameless CT-MRI Registration Developed for Radiosurgical Investigations

机译:参考数据库驱动自动框架CT-MRI注册的驱动统计分析,用于针对放射外科调查

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The aims of this study were (1) to describe statistically the fluctuation of the goodness of automated CT-MRI registration method (2) to evaluate a numerical parameter, scaled to [0,1] interval (lambda), for characterizing the population level accuracy of any automated CT-MRI registration algorithm on voxel similarity basis. The population level distribution of cross-correlation values between the reference T1-weighted images and the automatically registered images were investigated in five patient groups (brain metastatis, cavernoma, cranial nerve schwannoma, meningioma, trigeminal neuralgia). The evaluated distributions appeared as the mixture of two Gaussians and a peak at the 1.0 value. The evaluated distributions appeared as the mixture of two Gaussians and a peak at the 1.0 value, therefore we classified the result of automated registration into three accuracy types (AT), AT1: cross-correlation equals to 1.0, AT2: when the automatically registered image slightly differs from the reference one, cross-correlation ≈1.0, and AT3: when the cross-correlation is about 0.4. P_(auto) was introduced as the ratio of well fitted automated registration relative to number of all the registrations, C_(upper) and C_(lower) are the mean of AT2 and AT3 distributions. The λ=P_(auto)*C_(upper)*C_(lower) product was used as the measure of the goodness of automated image registration procedure at population level. The evaluated lambda parameter will be used to control the impacts of software modifications and to optimize the functional parameters of the evaluated preprocessing steps.
机译:本研究的目的是(1)以描述自动化CT-MRI登记方法(2)的良好良好的波动,以评估数值参数,缩放到[0,1]间隔(Lambda),以表征人口水平任何自动化CT-MRI登记算法对体素相似性的准确性。在五个患者组中研究了参考T1加权图像与自动注册图像之间的互相关值的人口水平分布(脑转移,颅瘤,颅神经施瓦瘤,脑膜瘤,三叉神经痛)。评估的分布出现为两个高斯的混合物和1.0值下的峰值。评估的分布出现为两个高斯和1.0值的峰值的混合,因此我们将自动注册的结果分为三种精度类型(AT),AT1:互相关等于1.0,AT2:当自动登记的图像时略微不同于参考,交叉相关≈1.0和AT3:当交叉相关约为0.4时。引入P_(自动)作为相对于所有注册的井井自动登记的比率,C_(上)和C_(下)是AT2和AT3分布的平均值。 λ= P_(自动)* C_(上)* C_(下)产品被用作人口水平自动图像登记程序的良好度量。评估的Lambda参数将用于控制软件修改的影响,并优化评估的预处理步骤的功能参数。

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