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A machine learning approach for planning valve-sparing aortic root reconstruction

机译:一种机器学习方法,用于计划保留瓣膜的主动脉根重建

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Choosing the optimal prosthesis size and shape is a difficult task during surgical valve-sparing aortic root reconstruction. Hence, there is a need for surgery planning tools. Common surgery planning approaches try to model the mechanical behaviour of the aortic valve and its leaflets. However, these approaches suffer from inaccuracies due to unknown biomechanical properties and from a high computational complexity. In this paper, we present a new approach based on machine learning that avoids these problems. The valve geometry is described by geometrical features obtained from ultrasound images. We interpret the surgery planning as a learning problem, in which the features of the healthy valve are predicted from these of the dilated valve using support vector regression (SVR). Our first results indicate that a machine learning based surgery planning can be possible.
机译:在保留瓣膜的主动脉根外科手术中,选择最佳的假体尺寸和形状是一项艰巨的任务。因此,需要手术计划工具。常见的手术计划方法试图模拟主动脉瓣及其小叶的机械行为。然而,由于未知的生物力学特性以及高计算复杂性,这些方法存在误差。在本文中,我们提出了一种基于机器学习的新方法,可以避免这些问题。通过从超声图像获得的几何特征描述瓣膜的几何形状。我们将手术计划解释为学习问题,其中使用支持向量回归(SVR)从扩张瓣膜的特征预测健康瓣膜的特征。我们的第一个结果表明,基于机器学习的手术计划是可能的。

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