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首页> 外文期刊>Human brain mapping >Rapid automatic segmentation of the human cerebellum and its lobules (RASCAL)--implementation and application of the patch-based label-fusion technique with a template library to segment the human cerebellum.
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Rapid automatic segmentation of the human cerebellum and its lobules (RASCAL)--implementation and application of the patch-based label-fusion technique with a template library to segment the human cerebellum.

机译:人小脑及其小叶的快速自动分割(RASCAL)-基于补丁的标签融合技术与模板库的实现和应用,用于分割人小脑。

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Reliable and fast segmentation of the human cerebellum with its complex architecture of lobes and lobules has been a challenge for the past decades. Emerging knowledge of the functional integration of the cerebellum in various sensori-motor and cognitive-behavioral circuits demands new automatic segmentation techniques, with accuracies similar to manual segmentations, but applicable to large subject numbers in a reasonable time frame. This article presents the development and application of a novel pipeline for rapid automatic segmentation of the human cerebellum and its lobules (RASCAL) combining patch-based label-fusion and a template library of manually labeled cerebella of 16 healthy controls from the International Consortium for Brain Mapping (ICBM) database. Leave-one-out experiments revealed a good agreement between manual and automatic segmentations (Dice kappa?=?0.82). Intraclass correlation coefficients (ICC) were calculated to test reliability of segmented volumes and were highest (ICC?>?0.9) for global measures (total and hemispherical grey and white matter) followed by larger lobules of the posterior lobe (ICC?>?0.8). Further we applied the pipeline to all 152 young healthy controls of the ICBM database to look for hemispheric and gender differences. The results demonstrated larger native space volumes in men then women (mean (± SD) total cerebellar volume in women?=?217 cm(3) (± 26), men?=?259 cm(3) (± 29); P??women) and anterior lobe volume (women?>?men). This new method shows great potential for the precise and efficient analysis of the cerebellum in large patient cohorts.
机译:在过去的几十年中,以小叶和小叶的复杂结构可靠,快速地分割人类小脑一直是一个挑战。关于小脑在各种感觉运动和认知行为电路中功能整合的新兴知识,需要新的自动分割技术,其准确性与手动分割相似,但适用于合理时间范围内的大量受试者。本文介绍了一种新型流水线的开发和应用,该流水线结合了基于补丁的标签融合技术和来自国际脑组织的16种健康对照的手动标记小脑的模板库,用于快速自动分割人小脑及其小叶(RASCAL)。映射(ICBM)数据库。一劳永逸的实验表明手动分割和自动分割之间有很好的一致性(Dice kappa == 0.82)。计算组内相关系数(ICC)以测试分段量的可靠性,对于整体测量值(总和半球灰色和白色物质),其次是较大的后叶小叶(ICC≥> 0.8),该值在分类量的可靠性上最高(ICC≥> 0.9)。 )。此外,我们将该管道应用于ICBM数据库的所有152位年轻健康对照者,以寻找半球和性别差异。结果表明,男性的自然空间体积大于女性(平均(±SD)女性小脑总体积?=?217 cm(3)(±26),男人?=?259 cm(3)(±29); P << 0.001)。仅在白质核心(男性→女性)和前叶体积(女性→男性)的立体定向空间体积中发现了显着的性别差异。这种新方法显示出在大型患者队列中精确和高效分析小脑的巨大潜力。

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