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MRI-SegFlow: a novel unsupervised deep learning pipeline enabling accurate vertebral segmentation of MRI images

机译:MRI-SegFlow:一种新颖的无监督深度学习管道,可对MRI图像进行准确的椎骨分割

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Most deep learning based vertebral segmentation methods require laborious manual labelling tasks. We aim to establish an unsupervised deep learning pipeline for vertebral segmentation of MR images. We integrate the sub-optimal segmentation results produced by a rule-based method with a unique voting mechanism to provide supervision in the training process for the deep learning model. Preliminary validation shows a high segmentation accuracy achieved by our method without relying on any manual labelling.The clinical relevance of this study is that it provides an efficient vertebral segmentation method with high accuracy. Potential applications are in automated pathology detection and vertebral 3D reconstructions for biomechanical simulations and 3D printing, facilitating clinical decision making, surgical planning and tissue engineering.
机译:大多数基于深度学习的椎骨分割方法都需要费力的手动标记任务。我们旨在建立一个无监督的深度学习管道,用于MR图像的椎骨分割。我们将基于规则的方法产生的次优分割结果与独特的投票机制进行集成,以在深度学习模型的训练过程中提供监督。初步验证表明,我们的方法无需任何手动标记即可实现较高的分割精度。本研究的临床意义在于,它提供了一种高效,高精度的椎骨分割方法。潜在的应用领域包括用于生物力学模拟和3D打印的自动病理检测和椎体3D重建,从而有助于临床决策,外科手术计划和组织工程。

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