Computational BioMedicine Laboratory (CBML), Institute of Computer Science, Foundation for Research and Technology - Hellas (FORTH), Heraklion, Greece.
Computational BioMedicine Laboratory (CBML), Institute of Computer Science, Foundation for Research and Technology - Hellas (FORTH), Heraklion, Greece.
Magn Reson Imaging. 2023 Sep;101:1-12. doi: 10.1016/j.mri.2023.03.012. Epub 2023 Mar 31.
Magnetic Resonance (MR) images suffer from spatial inhomogeneity, known as bias field corruption. The N4ITK filter is a state-of-the-art method used for correcting the bias field to optimize MR-based quantification. In this study, a novel approach is presented to quantitatively evaluate the performance of N4 bias field correction for pelvic prostate imaging. An exploratory analysis, regarding the different values of convergence threshold, shrink factor, fitting level, number of iterations and use of mask, is performed to quantify the performance of N4 filter in pelvic MR images. The performance of a total of 240 different N4 configurations is examined using the Full Width at Half Maximum (FWHM) of the segmented periprostatic fat distribution as evaluation metric. Phantom T2weighted images were used to assess the performance of N4 for a uniform test tissue mimicking material, excluding factors such as patient related susceptibility and anatomy heterogeneity. Moreover, 89 and 204 T2weighted patient images from two public datasets acquired by scanners with a combined surface and endorectal coil at 1.5 T and a surface coil at 3 T, respectively, were utilized and corrected with a variable set of N4 parameters. Furthermore, two external public datasets were used to validate the performance of the N4 filter in T2weighted patient images acquired by various scanning conditions with different magnetic field strengths and coils. The results show that the set of N4 parameters, converging to optimal representations of fat in the image, were: convergence threshold 0.001, shrink factor 2, fitting level 6, number of iterations 100 and the use of default mask for prostate images acquired by a combined surface and endorectal coil at both 1.5 T and 3 T. The corresponding optimal N4 configuration for MR prostate images acquired by a surface coil at 1.5 T or 3 T was: convergence threshold 0.001, shrink factor 2, fitting level 5, number of iterations 25 and the use of default mask. Hence, periprostatic fat segmentation can be used to define the optimal settings for achieving T2weighted prostate images free from bias field corruption to provide robust input for further analysis.
磁共振(MR)图像受到空间不均匀性的影响,称为偏置场伪影。N4ITK 滤波器是一种用于校正偏置场以优化基于磁共振的定量分析的最先进方法。在这项研究中,提出了一种新的方法来定量评估 N4 偏置场校正在骨盆前列腺成像中的性能。进行了探索性分析,针对不同的收敛阈值、收缩因子、拟合水平、迭代次数和使用掩模的值,以量化 N4 滤波器在骨盆 MR 图像中的性能。使用分割前列腺周围脂肪分布的半高全宽(FWHM)作为评估指标,检查了总共 240 种不同 N4 配置的性能。使用 Phantom T2 加权图像评估 N4 在均匀测试组织模拟材料中的性能,排除了患者相关敏感性和解剖异质性等因素。此外,使用分别在 1.5 T 处使用表面和内直肠线圈以及在 3 T 处使用表面线圈采集的来自两个公共数据集的 89 个和 204 个 T2 加权患者图像,并使用一组可变的 N4 参数进行校正。此外,还使用两个外部公共数据集来验证 N4 滤波器在不同磁场强度和线圈采集的各种扫描条件下的 T2 加权患者图像中的性能。结果表明,用于图像中脂肪的最佳表示的 N4 参数集为:收敛阈值 0.001、收缩因子 2、拟合水平 6、迭代次数 100 和前列腺图像的默认掩模使用,在 1.5 T 和 3 T 处使用表面和内直肠线圈采集。在 1.5 T 或 3 T 处使用表面线圈采集的 MR 前列腺图像的最佳 N4 配置为:收敛阈值 0.001、收缩因子 2、拟合水平 5、迭代次数 25 和默认掩模的使用。因此,前列腺周围脂肪分割可用于定义实现无偏置场伪影的 T2 加权前列腺图像的最佳设置,为进一步分析提供稳健的输入。