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Thalamic Nuclei Segmentation in Clinical 3T T1-weighted Images Using High-Resolution 7T Shape Models

机译:使用高分辨率7T形状模型在临床3T T1加权图像中进行丘脑核分割

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Accurate and reliable identification of thalamic nuclei is important for surgical interventions and neuroanatomical studies. This is a challenging task due to their small sizes and low intra-thalamic contrast in standard T1-weighted or T2-weighted images. Previously proposed techniques rely on diffusion imaging or functional imaging. These require additional scanning and suffer from the low resolution and signal-to-noise ratio in these images. In this paper, we aim to directly segment the thalamic nuclei in standard 3T T1-weighted images using shape models. We manually delineate the structures in high-field MR images and build high resolution shape models from a group of subjects. We then investigate if the nuclei locations can be inferred from the whole thalamus. To do this, we hierarchically fit joint models. We start from the entire thalamus and fit a model that captures the relation between the thalamus and large nuclei groups. This allows us to infer the boundaries of these nuclei groups and we repeat the process until all nuclei are segmented. We validate our method in a leave-one-out fashion with seven subjects by comparing the shape-based segmentations on 3T images to the manual contours. Results we have obtained for major nuclei (dice coefficients ranging from 0.57 to 0.88 and mean surface errors from 0.29mm to 0.72mm) suggest the feasibility of using such joint shape models for localization. This may have a direct impact on surgeries such as Deep Brain Stimulation procedures that require the implantation of stimulating electrodes in specific thalamic nuclei.
机译:准确可靠地识别丘脑核对手术干预和神经解剖学研究很重要。这是一项具有挑战性的任务,因为它们在标准T1加权或T2加权图像中体积小且丘脑内对比度低。先前提出的技术依赖于扩散成像或功能成像。这些需要额外的扫描,并且在这些图像中具有较低的分辨率和信噪比。在本文中,我们旨在使用形状模型在标准3T1加权图像中直接分割丘脑核。我们手动描绘高场MR图像中的结构,并从一组对象中构建高分辨率的形状模型。然后,我们调查是否可以从整个丘脑中推断出细胞核的位置。为此,我们对联合模型进行分层拟合。我们从整个丘脑开始,并拟合一个模型,该模型捕获了丘脑和大核群之间的关系。这使我们能够推断出这些核基团的边界,并且我们重复此过程,直到所有核都被分割为止。通过将3T图像上基于形状的分割与手动轮廓进行比较,我们以一劳永逸的方式对7个对象进行了验证。我们获得的主要核的结果(骰子系数范围从0.57至0.88,平均表面误差范围从0.29mm至0.72mm)表明使用此类关节形状模型进行定位的可行性。这可能对诸如深部脑部刺激程序之类的手术有直接影响,这些程序需要在特定丘脑核中植入刺激性电极。

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