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Automatic segmentation of age-related white matter changes on flair images: Method and multicentre validation

机译:与年龄相关的白质变化的自动分割对平凡图像:方法和多期验证

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White matter hyperintensities (WMH) are commonly seen on T2-weighted images in elderly people. They are considered as a potential marker of vascular pathology and have been associated with motor and cognitive deficits. In this paper, non linear diffusion was applied to FLAIR images and combined with precise anatomical knowledge extracted from T1-weighted images to automatically segment WMH. Evaluation was performed on 24 patients with mild cognitive impairment (MCI) from 5 different centres. Results showed excellent volume agreement with manual delineation (Pearson coefficient: r=0.98, p<0.001) and substantial spatial correspondence (Similarity index: 66%±17%). Our method appeared robust to acquisition differences across the centres.
机译:白质超收缩性(WMH)通常在老年人的T2加权图像上看到。 它们被认为是血管病理学的潜在标记,并且已经与电动机和认知缺陷有关。 本文将非线性扩散施加到Flair图像并与从T1加权图像提取的精确解剖学知识与自动段WMH相结合。 对来自5个不同中心的24名患有轻度认知障碍(MCI)的患者进行评估。 结果表明,具有手动描绘(Pearson系数:r = 0.98,P <0.001)和大量空间通信(相似性指数:66%&#x00b1; 17%)。 我们的方法出现了在整个中心的采集差异稳健。

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