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Propagating labels of the human brain based on non-rigid MR image registration: an evaluation

机译:基于非刚性MR图像配准的人脑传播标签:一种评估

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Background: In order to perform statistical analysis of cohorts based on images, reliable methods for automated anatomical segmentation are required. Label propagation (LP) from manually segmented atlases onto newly acquired images is a particularly promising approach. Methods: We investigated LP on a set of 6 three-dimensional T1-weighted magnetic resonance data sets of the brains of normal individuals. For each image, a manually prepared segmentation of 67 structures was available. Each subject image was used in turn as an atlas and registered non-rigidly to each other subject's image. The resulting transformations were applied to the label sets, yielding five different generated segmentations for each subject, which we compared with the native manual segmentations using an overlap measure (similarity index, SI). We then reviewed the LP results for five structures with varied anatomical and label characteristics visually to determine how the registration procedure had affected the delineation of their boundaries. Results: The majority of structures propagated well as measured by SI (SI > 70 in 80% of measurements). Boundaries that were marked in the atlas image by definite intensity differences were congruent, with good agreement between the manual and the generated segmentations. Some boundaries in the manual segmentation were defined as planes marked by landmarks; such boundaries showed greater mismatch. In some cases, the proximity of structures with similar intensity distorted the LP results: e.g., parts of the parahippocampal gyrus were labeled as hippocampus in two cases. Conclusion: The size and shape of anatomical structures can be determined reliably using label propagation, especially where boundaries are defined by distinct differences in grey scale image intensity. These results will inform further work to evaluate potential clinical uses of information extracted from images in this way.
机译:背景:为了基于图像进行队列的统计分析,需要可靠的方法来进行自动解剖分割。从手动分割的地图集到新获取的图像的标签传播(LP)是一种特别有前途的方法。方法:我们在正常人的大脑的6组三维T1加权磁共振数据集上研究了LP。对于每个图像,可以使用67个结构的手动准备的分割。每个对象的图像依次用作图集,并且非刚性地注册到彼此的对象的图像。将生成的转换应用于标签集,为每个主题生成五个不同的生成的细分,我们将其与使用重叠量度(相似性指数,SI)的本地手动细分进行了比较。然后,我们通过视觉检查了五个具有不同解剖特征和标记特征的结构的LP结果,以确定配准程序如何影响其边界的轮廓。结果:通过SI测量,大多数结构都能很好地传播(在80%的测量中,SI> 70)。通过确定的强度差异在图集图像中标记的边界是一致的,在手册和生成的分割之间有很好的一致性。手动分割中的某些边界定义为标有地标的平面;这样的边界显示出更大的失配。在某些情况下,强度相似的结构的接近度会扭曲LP结果:例如,在两种情况下,海马旁回的部分被标记为海马。结论:可以使用标记传播可靠地确定解剖结构的大小和形状,尤其是在边界由灰度图像强度的明显差异定义的情况下。这些结果将为进一步评估以这种方式从图像中提取信息的潜在临床用途提供信息。

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    Imaging Sciences Department MRC Clinical Sciences Centre Faculty of Medicine Imperial College at Hammersmith Hospital Campus Du Cane Road London W12 OHS United Kingdom;

    Department of Computing 180 Queen's Gate South Kensington Campus Imperial College London London SW7 2AZ United Kingdom;

    Centre for Medical Image Computing (MedIC) New Engineering Building University College London Malet Place London WC1E 6BT United Kingdom;

    Division of Neuroscience and Mental Health MRC Clinical Sciences Centre Faculty of Medicine Imperial College at Hammersmith Hospital Campus Du Cane Road London W12 ONN United Kingdom;

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