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A Fast Atlas Pre-selection Procedure for Multi-atlas Based Brain Segmentation

机译:基于多标准的大脑细分的快速图集预选过程

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Multi-atlas based MR image segmentation has been recognized as a quantitative analysis approach for brain. For such purpose, atlas databases keep increasing to include various anatomical characteristics of human brain. Atlas pre-selection becomes a necessary step for efficient and accurate automated segmentation of human brain images. In this study, we proposed a method of atlas pre-selection for target image segmentation on the MriCloud platform, which is a state-of-the-art multi-atlas based segmentation tool. In the MRIcloud pipeline, segmentation of lateral ventricle (LV) label is generated as an additional input in the segmentation pipeline. Under this circumstance, similarity of the LV label between target image and atlases was adopted as the atlas ranking scheme. Dice overlap coefficient was calculated and taken as the quantitative measure for atlas ranking. Segmentation results based on the proposed method were compared with that based on atlas pre-selection by mutual information (MI) between images. The final segmentation results showed a comparable accuracy of the proposed method with that from MI based atlas pre-selection. However, the computation load for the atlas pre-selection was speeded up by about 20 times compared to MI based pre-selection. The proposed method provides a promising assistance for quantitative analysis of brain images.
机译:基于多标准的MR图像分割被认为是脑的定量分析方法。出于这种目的,阿特拉斯数据库不断增加,包括人脑的各种解剖学特征。阿特拉斯预选成为人脑图像有效和准确的自动分割的必要步骤。在这项研究中,我们提出了一种在Mricloud平台上的目标图像分割的Atlas预选方法,其是基于最先进的多标准的分段工具。在Murroud管道中,在分段管道中产生横向心室(LV)标签的分割作为额外输入。在这种情况下,采用目标图像和地图集之间的LV标签的相似性作为图表排名方案。计算骰子重叠系数并作为图册排名的定量措施。基于所提出的方法的分段结果与图像之间的互联信息(MI)进行了比较了基于所提出的方法。最终的分割结果表明,来自基于MI的ATLAS预选的提出方法的相当准确性。然而,与基于MI的预选择相比,ATLAS预选的计算负载提升约20次。该方法提供了对脑图像的定量分析提供了有希望的辅助。

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