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Segmentation of Thalamus from MR images via Task-Driven Dictionary Learning

机译:通过任务驱动词典学习从MR图像中分割丘脑

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摘要

Automatic thalamus segmentation is useful to track changes in thalamic volume over time. In this work, we introduce a task-driven dictionary learning framework to find the optimal dictionary given a set of eleven features obtained from T1-weighted MRI and diffusion tensor imaging. In this dictionary learning framework, a linear classifier is designed concurrently to classify voxels as belonging to the thalamus or non-thalamus class. Morphological post-processing is applied to produce the final thalamus segmentation. Due to the uneven size of the training data samples for the non-thalamus and thalamus classes, a non-uniform sampling scheme is proposed to train the classifier to better discriminate between the two classes around the boundary of the thalamus. Experiments are conducted on data collected from 22 subjects with manually delineated ground truth. The experimental results are promising in terms of improvements in the Dice coefficient of the thalamus segmentation over state-of-the-art atlas-based thalamus segmentation algorithms.
机译:自动丘脑分割对跟踪丘脑体积随时间的变化很有用。在这项工作中,我们引入了任务驱动的字典学习框架,以根据从T1加权MRI和扩散张量成像获得的11种特征,找到最佳字典。在此字典学习框架中,同时设计了线性分类器,以将体素分类为属于丘脑或非丘脑类。应用形态学后处理来产生最终的丘脑分割。由于非丘脑和丘脑类别的训练数据样本大小不均匀,因此提出了一种非均匀采样方案来训练分类器,以更好地区分丘脑边界附近的两个类别。实验是从22位受试者收集的数据中进行的,这些数据具有手动描述的地面真实性。与基于最新图集的丘脑分割算法相比,丘脑分割的Dice系数有所改善,实验结果令人鼓舞。

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