首页> 外文期刊>Physics in medicine and biology. >Carotid wall volume quantification from magnetic resonance images using deformable model fitting and learning-based correction of systematic errors.
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Carotid wall volume quantification from magnetic resonance images using deformable model fitting and learning-based correction of systematic errors.

机译:使用变形模型拟合和基于学习的系统误差校正,从磁共振图像中量化颈动脉壁体积。

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摘要

We present a method for carotid vessel wall volume quantification from magnetic resonance imaging (MRI). The method combines lumen and outer wall segmentation based on deformable model fitting with a learning-based segmentation correction step. After selecting two initialization points, the vessel wall volume in a region around the bifurcation is automatically determined. The method was trained on eight datasets (16 carotids) from a population-based study in the elderly for which one observer manually annotated both the lumen and outer wall. An evaluation was carried out on a separate set of 19 datasets (38 carotids) from the same study for which two observers made annotations. Wall volume and normalized wall index measurements resulting from the manual annotations were compared to the automatic measurements. Our experiments show that the automatic method performs comparably to the manual measurements. All image data and annotations used in this study together with the measurements are made available through the website http://ergocar.bigr.nl.
机译:我们提出了一种从磁共振成像(MRI)进行颈动脉血管壁体积量化的方法。该方法将基于可变形模型拟合的内腔和外壁分割与基于学习的分割校正步骤相结合。选择两个初始化点后,将自动确定分叉周围区域的血管壁体积。该方法在来自老年人的一项基于人群的研究的八个数据集(16个颈动脉)上进行了训练,为此,一名观察员手动注释了内腔和外壁。对来自同一研究的19个数据集(38个颈动脉)的单独集合进行了评估,两名观察者对此进行了注释。将由手动注释产生的壁体积和归一化壁指数测量结果与自动测量结果进行了比较。我们的实验表明,自动方法的性能与手动测量相当。可通过网站http://ergocar.bigr.nl获得本研究中使用的所有图像数据和注释以及测量结果。

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