Tanaka Martin L, Weisenbach Charles A, Carl Miller Mark, Kuxhaus Laurel
Department of Engineering and Technology, Western Carolina University, Cullowhee, NC 28723, USA.
J Biomech Eng. 2011 Jul;133(7):074502. doi: 10.1115/1.4004412.
Developing appropriate mathematical models for biological soft tissues such as ligaments, tendons, and menisci is challenging. Stress-strain behavior of these tissues is known to be continuous and characterized by an exponential toe region followed by a linear elastic region. The conventional curve-fitting technique applies a linear curve to the elastic region followed by a separate exponential curve to the toe region. However, this technique does not enforce continuity at the transition between the two regions leading to inaccuracies in the material model. In this work, a Continuous Method is developed to fit both the exponential and linear regions simultaneously, which ensures continuity between regions. Using both methods, three cases were evaluated: idealized data generated mathematically, noisy idealized data produced by adding random noise to the idealized data, and measured data obtained experimentally. In all three cases, the Continuous Method performed superiorly to the conventional technique, producing smaller errors between the model and data and also eliminating discontinuities at the transition between regions. Improved material models may lead to better predictions of nonlinear biological tissues' behavior resulting in improved the accuracy for a large array of models and computational analyses used to predict clinical outcomes.
为韧带、肌腱和半月板等生物软组织建立合适的数学模型具有挑战性。已知这些组织的应力-应变行为是连续的,其特征是有一个指数形的起始区域,随后是一个线性弹性区域。传统的曲线拟合技术在弹性区域应用一条线性曲线,在起始区域应用一条单独的指数曲线。然而,这种技术在两个区域的过渡处无法保证连续性,从而导致材料模型不准确。在这项工作中,开发了一种连续方法来同时拟合指数区域和线性区域,以确保区域之间的连续性。使用这两种方法,评估了三种情况:通过数学方式生成的理想化数据、在理想化数据中添加随机噪声产生的带噪声理想化数据以及通过实验获得的测量数据。在所有这三种情况下,连续方法的表现均优于传统技术,在模型与数据之间产生的误差更小,并且还消除了区域过渡处的不连续性。改进的材料模型可能会更好地预测非线性生物组织的行为,从而提高用于预测临床结果的大量模型和计算分析的准确性。