Sam Coveney, Maryam Afzali, Lars Mueller, Irvin Teh, Arka Das, Erica Dall'Armellina, Filip Szczepankiewicz, Derek K Jones, Jurgen E Schneider
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引用次数: 0
摘要
心脏弥散张量成像(cDTI)极易出现图像损坏,但却很少使用稳健拟合方法。单体素离群点检测(SVOD)可能会忽略视觉上明显的损坏,这也许是不愿意取代全图像镜头剔除(SR)的原因,尽管它本身存在缺陷。SVOD 的缺陷可能相对来说并不重要:不是统计异常值的损坏信号可能不会造成损害。使用局部心肌邻域的多体素离群点检测(MVOD)可以克服 cDTI SR 和 SVOD 的共同缺陷,同时保留两者的优点。本文针对非线性最小二乘法和加权最小二乘法拟合,推导出了使用 M 估计器的稳健拟合方法,并使用(i)SVOD 和(ii)SVOD 和 MVOD 进行离群点检测。这些方法以及有/无 SR 的非稳健拟合方法被应用于健康志愿者和肥厚型心肌病患者的 cDTI 数据集。与非稳健拟合方法相比,稳健拟合方法在 MD、FA 和 E2A 方面产生的组间差异更大,更具有统计学意义,其中 MVOD 在 MD 和 FA 方面产生的组间差异最大。直观分析表明,鲁棒拟合方法优于 SR 方法,尤其是在难以将图像分为好图像集和坏图像集的情况下。合成实验证实,MVOD 的均方根误差低于 SVOD。
Outlier detection in cardiac diffusion tensor imaging: Shot rejection or robust fitting?
Cardiac diffusion tensor imaging (cDTI) is highly prone to image corruption, yet robust-fitting methods are rarely used. Single voxel outlier detection (SVOD) can overlook corruptions that are visually obvious, perhaps causing reluctance to replace whole-image shot-rejection (SR) despite its own deficiencies. SVOD's deficiencies may be relatively unimportant: corrupted signals that are not statistical outliers may not be detrimental. Multiple voxel outlier detection (MVOD), using a local myocardial neighbourhood, may overcome the shared deficiencies of SR and SVOD for cDTI while keeping the benefits of both. Here, robust fitting methods using M-estimators are derived for both non-linear least squares and weighted least squares fitting, and outlier detection is applied using (i) SVOD; and (ii) SVOD and MVOD. These methods, along with non-robust fitting with/without SR, are applied to cDTI datasets from healthy volunteers and hypertrophic cardiomyopathy patients. Robust fitting methods produce larger group differences with more statistical significance for MD, FA, and E2A, versus non-robust methods, with MVOD giving the largest group differences for MD and FA. Visual analysis demonstrates the superiority of robust-fitting methods over SR, especially when it is difficult to partition the images into good and bad sets. Synthetic experiments confirm that MVOD gives lower root-mean-square-error than SVOD.
期刊介绍:
Medical Image Analysis serves as a platform for sharing new research findings in the realm of medical and biological image analysis, with a focus on applications of computer vision, virtual reality, and robotics to biomedical imaging challenges. The journal prioritizes the publication of high-quality, original papers contributing to the fundamental science of processing, analyzing, and utilizing medical and biological images. It welcomes approaches utilizing biomedical image datasets across all spatial scales, from molecular/cellular imaging to tissue/organ imaging.