Wong Ken C L, Sermesant Maxime, Rhode Kawal, Ginks Matthew, Rinaldi C Aldo, Razavi Reza, Delingette Hervé, Ayache Nicholas
Inria, Asclepios Project, 2004 route des Lucioles, 06902 Sophia Antipolis, France.
King׳s College London, Division of Imaging Sciences, St. Thomas׳ Hospital, London, UK.
J Mech Behav Biomed Mater. 2015 Mar;43:35-52. doi: 10.1016/j.jmbbm.2014.12.002. Epub 2014 Dec 13.
Model personalization is a key aspect for biophysical models to impact clinical practice, and cardiac contractility personalization from medical images is a major step in this direction. Existing gradient-based optimization approaches show promising results of identifying the maximum contractility from images, but the contraction and relaxation rates are not accounted for. A main reason is the limited choices of objective functions when their gradients are required. For complicated cardiac models, analytical evaluations of gradients are very difficult if not impossible, and finite difference approximations are computationally expensive and may introduce numerical difficulties. By removing such limitations with derivative-free optimization, we found that a velocity-based objective function can properly identify regional maximum contraction stresses, contraction rates, and relaxation rates simultaneously with intact model complexity. Experiments on synthetic data show that the parameters are better identified using the velocity-based objective function than its position-based counterpart, and the proposed framework is insensitive to initial parameters with the adopted derivative-free optimization algorithm. Experiments on clinical data show that the framework can provide personalized contractility parameters which are consistent with the underlying physiologies of the patients and healthy volunteers.
模型个性化是生物物理模型影响临床实践的关键方面,而从医学图像进行心脏收缩性个性化是朝着这个方向迈出的重要一步。现有的基于梯度的优化方法在从图像中识别最大收缩性方面显示出了有前景的结果,但未考虑收缩和舒张速率。一个主要原因是在需要梯度时目标函数的选择有限。对于复杂的心脏模型,即使不是不可能,梯度的解析评估也非常困难,而有限差分近似计算成本高昂且可能引入数值困难。通过使用无导数优化消除此类限制,我们发现基于速度的目标函数能够在保持模型完整复杂性的同时,正确地同时识别区域最大收缩应力、收缩速率和舒张速率。对合成数据的实验表明,使用基于速度的目标函数比基于位置的目标函数能更好地识别参数,并且所提出的框架对于采用的无导数优化算法对初始参数不敏感。对临床数据的实验表明,该框架能够提供与患者和健康志愿者的潜在生理状况一致的个性化收缩性参数。