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Combining Deformation Modeling and Machine Learning for Personalized Prosthesis Size Prediction in Valve-Sparing Aortic Root Reconstruction

机译:结合变形建模与机器学习,在阀排血管根重建中的个性化假体尺寸预测

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Finding the individually optimal prosthesis size is an intricate task during valve-sparing aortic root reconstruction. Previous work has shown that machine learning based prosthesis size prediction is possible. However, the very high demands on the underlying training data set prevent the application in a clinical setting. In this work, the authors present an alternative approach combining simplified deformation modeling with machine learning to mimic the surgeon's decision making process. Compared to the previously published approach, the new method provides a similar prediction accuracy whith a dramatic decrease of demand on the training data. This is an important step towards the clinical application of machine learning based planning of personalized valve-sparing aortic root reconstruction.
机译:发现单独最佳的假体尺寸是阀门保留主动脉根系重建期间的复杂任务。以前的工作表明,基于机器学习的假肢尺寸预测是可能的。然而,对底层训练数据集的要求非常高,防止应用于临床环境。在这项工作中,作者呈现了一种替代方法,将简化的变形建模与机器学习相结合以模仿外科医生的决策过程。与先前公布的方法相比,新方法提供了类似的预测精度,其急剧对训练数据的需求急剧下降。这是朝着基于机器学习的临床应用的个性化阀门灌注主动脉根系重建临床应用的重要一步。

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