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A predictive tool for determining patient-specific mechanical properties of human corneal tissue

机译:一种确定人角膜组织患者特定机械特性的预测工具

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摘要

A computational predictive tool for assessing patient-specific corneal tissue properties is developed. This predictive tool considers as input variables the corneal central thickness (CCT), the intraocular pressure (IOP), and the maximum deformation amplitude of the corneal apex (U) when subjected to a non-contact tonometry test. The proposed methodology consists of two main steps. First, an extensive dataset is generated using Monte Carlo (MC) simulations based on finite element models with patient-specific geometric features that simulate the non-contact tonometry test. The cornea is assumed to be an anisotropic tissue to reproduce the experimentally observed mechanical behavior. A clinical database of 130 patients (53 healthy, 63 keratoconic and 14 post-LASIK surgery) is used to generate a dataset of more than 9000 cases by permuting the material properties. The second step consists of constructing predictive models for the material parameters of the constitutive model as a function of the input variables. Four different approximations are explored: quadratic response surface (QRS) approximation, multiple layer perceptron (MLP), support vector regressor (SVR), and K-nn search. The models are validated against data from five real patients. The material properties obtained with the predicted models lead to a simulated corneal displacement that is within 10% error of the measured value in the worst case scenario of a patient with very advanced keratoconus disease. These results demonstrate the potential and soundness of the proposed methodology. (C) 2016 Elsevier B.V. All rights reserved.
机译:开发了用于评估患者特定角膜组织特性的计算预测工具。当进行非接触眼压测试时,该预测工具将角膜中心厚度(CCT),眼内压(IOP)和角膜顶点最大变形幅度(U)视为输入变量。拟议的方法包括两个主要步骤。首先,基于具有有限元模型的Monte Carlo(MC)模拟,使用具有特定于患者的几何特征的模拟非接触式眼压测试,生成了广泛的数据集。假定角膜是各向异性组织,以再现实验观察到的机械行为。通过排列材料属性,使用130名患者的临床数据库(53名健康,63名圆锥角膜和14例LASIK术后)来生成9000多个病例的数据集。第二步包括根据输入变量构建本构模型材料参数的预测模型。探索了四种不同的近似值:二次响应面(QRS)近似,多层感知器(MLP),支持向量回归(SVR)和K-nn搜索。根据来自五个实际患者的数据验证了模型。使用预测模型获得的材料特性会导致模拟的角膜位移,在患有严重圆锥角膜病的患者的最坏情况下,其测量值误差在测量值的10%以内。这些结果证明了所提出方法的潜力和可靠性。 (C)2016 Elsevier B.V.保留所有权利。

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