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Cleft Volume Estimation and Maxilla Completion Using Cascaded Deep Neural Networks

机译:使用级联深神经网络的裂缝卷估计和夹具完成

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In this paper, we propose an end-to-end cascaded deep neural network based-framework for the prediction of cleft volume and maxilla completion in the alveolar cleft grafting procedures. We devise the coupled cascaded deformable volumetric registration and cleft prediction networks with progressively refined cleft masks. The framework can be stacked on an existing volumetric registration network for partial registration between the template volume with the complete maxilla and the one with cleft lips and palates (CLP). Instead of one-shot registration-based volume completion for the cleft volume prediction, we present a cascaded registration network to accommodate coarse-to-fine volumetric transformations, enabling the refinement of the cleft volume and fine-tuning of cleft prediction network. The resulting dense displacement fields facilitate the cleft defect location and virtual maxilla completion. The iteratively updated cleft volume from the partial registration is utilized to refine the end-to-end cleft prediction network, which avoids the Boolean operation-based cleft estimation in the online testing process. We devise an alternating optimization approach to fine-tune the registration and cleft prediction networks. Qualitative and quantitative comparisons of the proposed approach on clinically-obtained CLP CBCT images demonstrate that our method is effective for cleft volume estimation and virtual maxilla completion.
机译:在本文中,我们提出了基于端到端的级联深度神经网络的框架,用于预测孔隙裂缝移植过程中的裂隙体积和颌面井。我们将耦合的级联可变形容量登记和裂隙预测网络设计,具有逐步精制的裂缝掩模。该框架可以堆叠在现有的体积登记网络上,以便在模板体积之间与完整的夹具和带有裂隙嘴唇和口感(CLP)的体积之间的部分登记。我们呈现级联的登记网络而不是基于单次注册的基于卷积完成,以适应粗量的体积变换,从而能够改进裂缝量和裂缝预测网络的微调。得到的致密位移场有助于裂缝缺陷位置和虚拟夹具完成。从部分登记的迭代更新的裂缝量用于优化端到端裂缝预测网络,该预测网络避免了在线测试过程中的基于布尔操作的裂缝估计。我们设计了一个交替的优化方法来微调注册和裂缝预测网络。在临床上获得的CLP CBCT图像上提出的方法的定性和定量比较表明,我们的方法对于裂缝卷估计和虚拟夹竹桃完成是有效的。

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