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首页> 外文期刊>Scientific reports. >A Deep Learning Framework for Design and Analysis of Surgical Bioprosthetic Heart Valves
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A Deep Learning Framework for Design and Analysis of Surgical Bioprosthetic Heart Valves

机译:手术生物假心心瓣设计与分析深层学习框架

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摘要

Bioprosthetic heart valves (BHVs) are commonly used as heart valve replacements but they are prone to fatigue failure; estimating their remaining life directly from medical images is difficult. Analyzing the valve performance can provide better guidance for personalized valve design. However, such analyses are often computationally intensive. In this work, we introduce the concept of deep learning (DL) based finite element analysis (DLFEA) to learn the deformation biomechanics of bioprosthetic aortic valves directly from simulations. The proposed DL framework can eliminate the time-consuming biomechanics simulations, while predicting valve deformations with the same fidelity. We present statistical results that demonstrate the high performance of the DLFEA framework and the applicability of the framework to predict bioprosthetic aortic valve deformations. With further development, such a tool can provide fast decision support for designing surgical bioprosthetic aortic valves. Ultimately, this framework could be extended to other BHVs and improve patient care.
机译:生物体心瓣(BHV)通常用作心脏瓣膜置换物,但它们易于疲劳失效;直接从医学图像估算其剩余生命是困难的。分析阀门性能可以为个性化阀门设计提供更好的指导。然而,这种分析通常是计算密集的。在这项工作中,我们介绍了基于深度学习(DL)的有限元分析(DLFEA)的概念,以直接从模拟中学习生物假体主动脉阀的变形生物力学。所提出的DL框架可以消除耗时的生物力学模拟,同时预测具有相同保真度的阀变形。我们提出了统计结果,证明了DLFEA框架的高性能和框架的适用性来预测生物假体主动脉瓣变形。通过进一步的发展,这种工具可以为设计手术生物假体主动脉瓣提供快速决策支持。最终,该框架可以扩展到其他BHV和改善患者护理。

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