基于节点和边缘同时预测的图神经网络的鲁棒椎体识别

Vincent Bürgin, R. Prevost, Marijn F. Stollenga
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引用次数: 0

摘要

在CT扫描中自动定位和识别椎体在许多临床应用中是重要的。在这方面已经取得了很大的进展,但它主要针对椎骨的位置定位,而忽略了它们的方向。此外,大多数方法在他们的管道中使用启发式,这在真实的临床图像中是敏感的,往往包含异常。我们引入了一个简单的管道,该管道使用U-Net进行标准预测,然后使用单图神经网络进行全方向椎骨的关联和分类。为了测试我们的方法,我们引入了一个新的椎体数据集,该数据集还包含与椎体相关的椎弓根检测,从而创建了更具挑战性的地标预测、关联和分类任务。我们的方法能够准确地将正确的身体和椎弓根标志联系起来,忽略假阳性,并以简单,完全可训练的管道对椎骨进行分类,避免了特定应用的启发式。我们证明我们的方法优于传统的方法,如匈牙利匹配和隐马尔可夫模型。我们还在标准的VerSe挑战身体识别任务中显示了竞争表现。
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Robust vertebra identification using simultaneous node and edge predicting Graph Neural Networks
Automatic vertebra localization and identification in CT scans is important for numerous clinical applications. Much progress has been made on this topic, but it mostly targets positional localization of vertebrae, ignoring their orientation. Additionally, most methods employ heuristics in their pipeline that can be sensitive in real clinical images which tend to contain abnormalities. We introduce a simple pipeline that employs a standard prediction with a U-Net, followed by a single graph neural network to associate and classify vertebrae with full orientation. To test our method, we introduce a new vertebra dataset that also contains pedicle detections that are associated with vertebra bodies, creating a more challenging landmark prediction, association and classification task. Our method is able to accurately associate the correct body and pedicle landmarks, ignore false positives and classify vertebrae in a simple, fully trainable pipeline avoiding application-specific heuristics. We show our method outperforms traditional approaches such as Hungarian Matching and Hidden Markov Models. We also show competitive performance on the standard VerSe challenge body identification task.
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