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Non-Local Means Inpainting of MS Lesions in Longitudinal Image Processing

机译:纵向图像处理中MS病变的非局部均值修复

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In medical imaging, multiple sclerosis (MS) lesions can lead to confounding effects in automatic morphometric processing tools such as registration, segmentation and cortical extraction, and subsequently alter individual longitudinal measurements. Multiple magnetic resonance imaging (MRI) inpainting techniques have been proposed to decrease the impact of MS lesions in medical image processing, however, most of these methods make the assumption that lesions only affect white matter. Here, we propose a method to fill lesion regions using the patch-based non-local mean (NLM) strategy. The method consists of a hierarchical concentric filling strategy after identification of the lesion region. The lesion is filled iteratively, based on the surrounding tissue intensity, using an onion peel strategy. This concentric technique presents the advantage of preserving the local information and therefore the continuity of the anatomy and does not require identification of any a priori normal brain tissues. The method is first evaluated on 20 healthy subjects with simulated artificial MS lesions where we assessed our technique by measuring the peak signal-to-noise ratio (PSNR) of the images with inpainted lesion and the original healthy images. Second, in order to assess the impact of lesion filling on longitudinal image analyses, we performed a power analysis with sample size estimation to evaluate brain atrophy and ventricular growth in patients with MS. The method was compared to two different publicly available methods (FSL lesion fill and Lesion LEAP) and a more classic method, which fills the region with intensities similar to that of the surrounding healthy white matter tissue or mask the lesions. The proposed method was shown to exceed the other methods in reproducing the fidelity of healthy subject images where the lesions were inpainted. The method also improved the power to detect brain atrophy or ventricular growth by decreasing the sample size by 25% in the presence of MS lesions.
机译:在医学成像中,多发性硬化(MS)病变可导致自动形态计量处理工具(例如配准,分割和皮层提取)中的混淆效果,并随后更改各个纵向测量值。已经提出了多种磁共振成像(MRI)修补技术来减少MS病变在医学图像处理中的影响,但是,这些方法中的大多数都假设病变仅影响白质。在这里,我们提出了一种使用基于补丁的非局部均值(NLM)策略填充病变区域的方法。该方法包括在确定病变区域后的分层同心填充策略。使用洋葱皮策略,根据周围组织的强度迭代填充病变。这种同心技术具有保存局部信息的优点,因此可以保留解剖结构的连续性,并且不需要识别任何先验的正常脑组织。该方法首先在模拟的人工MS病变的20名健康受试者上进行了评估,我们在该技术中通过测量病变修复图像和原始健康图像的峰值信噪比(PSNR)来评估我们的技术。其次,为了评估病变填充对纵向图像分析的影响,我们进行了具有样本量估计的功效分析,以评估MS患者的脑萎缩和心室生长。将该方法与两种不同的公众可用方法(FSL病变填充和Lesion LEAP)进行了比较,以及一种更为经典的方法,该方法以与周围健康白质组织相似的强度填充区域或掩盖病变。结果表明,所提出的方法在复制病变修复处的健康对象图像的保真度方面优于其他方法。该方法还通过在存在MS病变的情况下将样本量减少25%,从而提高了检测脑萎缩或心室生长的能力。

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