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Brain surface extraction from PET images with deformable model: assessment using Monte Carlo simulator

机译:具有可变形模型的PET图像脑表面提取:使用Monte Carlo Simulator评估

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In this study, we evaluate quantitatively the performance of the DM-DSM (deformable model with dual surface minimization) method for brain surface extraction from PET images with Monte Carlo simulated data. The DM-DSM method is based on a deformable model and has been found reliable in previous tests with images of healthy volunteers acquired with C-11-Raclopride and F-18-FDG. As the evaluation of the method with real data is challenging, it could not provide precise figures describing the accuracy of the method. In addition to evaluation, we adjust parameter values for the DM-DSM method to improve its accuracy in this study. We compare the DM-DSM method to PET brain delineation based on MRI-PET registration. For this we assume either the knowledge of the precise anatomical brain volume or we extract the brain volume from the anatomical MR image. With FDG, the DM-DSM method yielded brain surfaces of high accuracy, almost as accurate as those obtained by using image registration and the knowledge of the exact anatomy. If the precise anatomical brain volume was not known, the DM-DSM method was more accurate than the image registration based method. With Raclopride, the accuracy of the DM-DSM method was slightly lower than with FDG but it was better than the one obtained using image registration and assuming the knowledge of the anatomical brain volume. When we extracted brain volume automatically from the MR image, the sagittal sinus was excluded from the brain improving the registration accuracy and leading to better quantitative results than those obtained with the DM-DSM method.
机译:在这项研究中,我们评估了DM-DSM(可变形模型与双表面最小化)方法的性能,从PET图像与蒙特卡罗模拟数据从PET图像中提取的脑表面提取方法。 DM-DSM方法基于可变形的模型,并且在先前的测试中发现了可靠的测试,其中用C-11-Raclopride和F-18-FDG获得的健康志愿者的图像。由于对具有实际数据的方法的评估是具有挑战性的,它无法提供描述方法的准确性的精确图。除了评估外,我们还调整DM-DSM方法的参数值,以提高本研究的准确性。我们将DM-DSM方法与基于MRI-PET登记的PET BRAN DELINEATION进行比较。为此,我们假设对精确解剖脑体积的知识或从解剖学MR图像中提取大脑体积。使用FDG,DM-DSM方法产生高精度的脑表面,几乎与使用图像配准和确切解剖学的知识一样准确。如果未知精确解剖脑体积,则DM-DSM方法比基于图像配准的方法更准确。利用丙酮,DM-DSM方法的准确性略低于FDG,但优于使用图像配准和假设解剖脑体积的知识来优于获得的。当我们从MR图像自动提取脑体积时,矢状窦被排除在大脑中,从而提高了登记精度,并导致比使用DM-DSM方法获得的数量更好的定量结果。

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