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Fast anatomy segmentation by combining coarse scale multi-atlas label fusion with fine scale corrective learning

机译:用细比例纠正学习结合粗糙规模多地图集标签融合来快速解剖分割

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摘要

Deformable registration based multi-atlas segmentation has been successfully applied in a broad range of anatomy segmentation applications. However, the excellent performance comes with a high computational burden due to the requirement for deformable image registration and voxel-wise label fusion. To address this problem, we investigate the role of corrective learning () in speeding up multi-atlas segmentation. We propose to combine multi-atlas segmentation with corrective learning in a multi-scale analysis fashion for faster speeds. First, multi-atlas segmentation is applied in a low spatial resolution. After resampling the segmentation result back to the native image space, learning-based error correction is applied to correct systematic errors due to performing multi-atlas segmentation in a low spatial resolution. In cardiac CT and brain MR segmentation experiments, we show that applying multi-atlas segmentation in a coarse scale followed by learning-based error correction in the native space can substantially reduce the overall computational cost, with only modest or no sacrificing segmentation accuracy.
机译:基于可变形的注册的多拟标志性分段已成功应用于广泛的解剖结构分段应用。然而,由于可变形图像配准和体素 - 明智标签融合,因此优异的性能具有高计算负担。为了解决这个问题,我们调查纠正学习()在加速多拟标志分割方面的作用。我们建议将多标准分割与纠正学习相结合,以实现更快的速度。首先,以低空间分辨率应用多标准分割。重新采样后,将分割结果返回到本机图像空间,应用基于学习的纠错,以纠正系统错误,因为以低空间分辨率执行多atlas分段。在心脏CT和脑MR分段实验中,我们表明,在粗糙度下应用多地图集分割,然后在本机空间中进行基于学习的纠错,只能谦虚或不牺牲分割精度。

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