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Ear Cartilage Inference for Reconstructive Surgery with Convolutional Mesh Autoencoders

机译:用卷尘网眼自动探测重建手术的耳软骨推断

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Many children born with ear microtia undergo reconstructive surgery for both aesthetic and functional purposes. This surgery is a delicate procedure that requires the surgeon to carve a "scaffold" for a new ear, typically from the patient's own rib cartilage. This is an unnecessarily invasive procedure, and reconstruction relies on the skill of the surgeon to accurately construct a scaffold that best suits the patient based on limited data. Work in stem-cell technologies and bioprinting present an opportunity to change this procedure by providing the opportunity to "bioprint" a personalised cartilage scaffold in a lab. To do so, however, a 3D model of the desired cartilage shape is first required. In this paper we optimise the standard convolutional mesh autoencoder framework such that, given only the soft tissue surface of an unaffected ear, it can accurately predict the shape of the underlying cartilage. To prevent predicted cartilage meshes from intersecting with, and protruding through, the soft tissue ear mesh, we develop a novel intersection-based loss function. These combined efforts present a means of designing personalised ear cartilage scaffold for use in reconstructive ear surgery.
机译:许多患有耳脊的儿童接受审美和功能目的的重建手术。这种手术是一种精致的程序,需要外科医生为新耳朵雕刻“脚手架”,通常来自患者自己的肋骨软骨。这是一种不必要的侵入性过程,并且重建依赖于外科医生的技能,以准确地构建基于有限数据的患者最适合患者的脚手架。在干细胞技术和Bioplinting中的工作提供了一个机会通过在实验室中为“Bioprint”个个性化软骨脚手架提供机会来改变这一程序。然而,为了这样做,首先需要所需软骨形状的3D模型。在本文中,我们优化了标准的卷积网格自动统计学框架,使得仅给予不受影响的耳朵的软组织表面,它可以准确地预测底层软骨的形状。为了防止预测的软骨网与软组织耳网相交,突出,我们开发了一种新的基于交叉的损耗功能。这些综合努力提出了一种设计用于重建耳手术的个性化耳软骨支架的方法。

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