Department of Mechanical Engineering, Purdue University, West Lafayette, IN 47907.
McCormick School of Engineering, Northwestern University, Chicago, IL 60611.
J Biomech Eng. 2022 Dec 1;144(12). doi: 10.1115/1.4055276.
Growth of skin in response to stretch is the basis for tissue expansion (TE), a procedure to gain new skin area for reconstruction of large defects. Unfortunately, complications and suboptimal outcomes persist because TE is planned and executed based on physician's experience and trial and error instead of predictive quantitative tools. Recently, we calibrated computational models of TE to a porcine animal model of tissue expansion, showing that skin growth is proportional to stretch with a characteristic time constant. Here, we use our calibrated model to predict skin growth in cases of pediatric reconstruction. Available from the clinical setting are the expander shapes and inflation protocols. We create low fidelity semi-analytical models and finite element models for each of the clinical cases. To account for uncertainty in the response expected from translating the models from the animal experiments to the pediatric population, we create multifidelity Gaussian process surrogates to propagate uncertainty in the mechanical properties and the biological response. Predictions with uncertainty for the clinical setting are essential to bridge our knowledge from the large animal experiments to guide and improve the treatment of pediatric patients. Future calibration of the model with patient-specific data-such as estimation of mechanical properties and area growth in the operating room-will change the standard for planning and execution of TE protocols.
皮肤对拉伸的反应生长是组织扩张(TE)的基础,这是一种为重建大面积缺损而获得新皮肤区域的方法。不幸的是,由于 TE 是基于医生的经验和反复试验来计划和执行的,而不是基于预测性的定量工具,因此仍然存在并发症和不理想的结果。最近,我们对 TE 的计算模型进行了校准,使其与组织扩张的猪动物模型相匹配,结果表明皮肤生长与拉伸成正比,具有特征时间常数。在这里,我们使用经过校准的模型来预测儿科重建的皮肤生长情况。从临床环境中可以获得扩张器的形状和充气方案。我们为每个临床病例创建了低保真度的半分析模型和有限元模型。为了说明将模型从动物实验转化为儿科人群时所预期的反应的不确定性,我们创建了多保真度高斯过程代理,以传播机械性能和生物反应中的不确定性。对临床环境的具有不确定性的预测对于将我们从大型动物实验中获得的知识扩展到指导和改善儿科患者的治疗至关重要。未来,随着对患者特定数据(例如在手术室中估计机械性能和区域生长)的模型进行校准,将改变 TE 方案的规划和执行标准。