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A vertebral level-wise data augmentation scheme for segmentation via deep learning

机译:深度学习分割的椎体级别数据增强方案

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Accurate vertebral segmentation is important for image-related assessment of spine pathologies. Recent spine segmentation techniques focus on deep learning-based methods. However, they typically require a large training dataset with accurate annotations, which may not be feasible in practice. To mitigate the challenge, here we propose a data augmentation scheme based on a single spine to incorporate biomechanically constrained intervertebral motion (rotation and translation) to generate a large training dataset (N=3000). Vertebrae are then segmented using a point cloud-based deep learning architecture, PointNet++, which appears not to have been applied to spine segmentation before. Spine testing samples (N=90) are first generated by applying our data augmentation technique to three separate spines. Segmentation performances are compared with two baseline data augmentation methods that do not include intervertebral motion. Then, we further evaluate our technique based on 8 spine samples from actual image acquisitions. In both cases, we show that incorporation of vertebral level-wise data augmentation improves segmentation accuracy in terms of mean Dice coefficient (e.g., 0.932 vs. 0.902 for augmented testing samples and 0.940 vs. 0.924 for acquired testing samples). These results suggest that our vertebral level-wise data augmentation is useful to facilitate deep learning-based spine segmentation, which is important especially when it is not feasible to generate accurate annotations for a large number of training samples.
机译:精确的椎体分割对于与脊柱病理学的图像相关评估很重要。最近的脊柱分割技术专注于基于深度学习的方法。然而,它们通常需要具有准确注释的大型训练数据集,这在实践中可能不可行。为了减轻挑战,我们在这里提出基于单个脊柱的数据增强方案来包含生物力学限制的椎间运动(旋转和翻译)来产生大型训练数据集(n = 3000)。然后使用基于点云的深度学习架构,注意事项++进行分段,该PointNET ++在之前未应用于脊椎分割。首先通过将数据增强技术应用于三个单独的刺来生成脊柱测试样本(n = 90)。将分割性能与两种基线数据增强方法进行比较,这些方法不包括椎间运动。然后,我们进一步根据实际图像采集的8个脊柱样本进一步评估我们的技术。在这两种情况下,我们表明,椎体水平数据增强的掺入提高了平均骰子系数(例如,用于增强测试样品的0.932 vs.0.902和0.940 vs.0.924的0.932 vs.0.902)。这些结果表明,我们的椎体级别数据增强是有助于促进基于深度学习的脊柱分割,这是重要的,特别是在不可行的时候为大量训练样本产生准确的注释。

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