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Automated Computer-aided Design of Cranial Implants Using a Deep Volumetric Convolutional Denoising Autoencoder

机译:使用深层容积卷积的自动升尘自动化自动化颅植式植入物的自动化计算机辅助设计

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Computer-aided Design (CAD) software enables the design of patient-specific cranial implants, but it often requires of a lot of manual userinteractions. This paper proposes a Deep Learning (DL) approach towards the automated CAD of cranial implants, allowing the design process to be less userdependent and even less time-consuming. The problem of reconstructing a cranial defect, which is essentially filling in a region in a skull, was posed as a 3D shape completion task and, to solve it, a Volumetric Convolutional Denoising Autoencoder was implemented using the open-source DL framework PyTorch. The autoencoder was trained on 3D skull models obtained by processing an open-access dataset of Magnetic Resonance Imaging brain scans. The 3D skull models were represented as binary voxel occupancy grids and experiments were carried out for different voxel resolutions. For each experiment, the autoencoder was evaluated in terms of quantitative and qualitative 3D shape completion performance. The obtained results showed that the implemented Deep Neural Network is able to perform shape completion on 3D models of defected skulls, allowing for an efficient and automatic reconstruction of cranial defects.
机译:计算机辅助设计(CAD)软件可实现患者特定的颅植入物,但它通常需要大量的手动用户互动。本文提出了一种深入的学习(DL)朝向颅植绒自动化CAD的方法,允许设计过程不那么多用户依赖,甚至更耗时。重建颅缺陷的问题基本上填充在头骨中的区域,作为3D形状完成任务,并且可以使用开源DL框架Pytorch实现体积卷积去噪自动化器。 AutoEncoder在通过处理磁共振成像脑扫描的开放访问数据集获得的3D颅骨模型上培训。 3D颅骨模型表示为二元体素占用网格,实验是针对不同体素分辨率进行的。对于每个实验,在定量和定性的3D形状完成性能方面评估了自动化器。所得结果表明,实施的深神经网络能够在缺陷的颅骨的3D模型上进行形状完成,从而允许高效和自动地重建颅缺陷。

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