Department of Mechanical, Bioresources and Biomedical Engineering, School of Engineering and the Built Environment, College of Science, Engineering and Technology, University of South Africa, Private Bag X6, Florida, 1710, South Africa.
Peace, Safety and Security, Council for Scientific and Industrial Research, PO Box 395, Pretoria, 0001, South Africa.
Biomed Eng Online. 2024 Oct 12;23(1):100. doi: 10.1186/s12938-024-01296-y.
Diseases of the esophagus affect its function and often lead to replacement of long sections of the organ. Current healing methods involve the use of bioscaffolds processed from other animal models. Although the properties of these animal models are not exactly the same as those of the human esophagus, they nevertheless present a reasonable means of assessing the biomechanical properties of the esophageal tissue. Besides, sheep bear many similarities physiologically to humans and they also suffer from same diseases as humans. The morphology of their esophagus is also comparable to that of humans. Thus, in the study, an ovine esophagus was studied. Studies on the planar biaxial tests of the gross esophageal anatomy are limited. The composite nature of the gross anatomy of the esophagus makes the application of structure-based models such as Holzapfel-type models very difficult. In current studies the tissue is therefore often separated into specific layers with substantial collagen content. The effects of adipose tissue and other non-collagenous tissue often make the mechanical behavior of the esophagus widely diverse and unpredictable using deterministic structure-based models. Thus, it may be very difficult to predict its mechanical behavior. In the study, an NARX neural network was used to predict the stress-strain response of the gross anatomy of the ovine esophagus. The results show that the NARX model was able to achieve a correlation above 99.9% within a fitting error margin of 16%. Therefore, the use of artificial neural networks may provide a more accurate way of predicting the biaxial stress-strain response of the esophageal tissue, and lead to further improvements in the design and development of synthetic replacement materials for esophageal tissue.
食管疾病会影响其功能,并常常导致该器官的长段被替换。目前的治疗方法涉及使用从其他动物模型加工而成的生物支架。虽然这些动物模型的特性与人类食管不完全相同,但它们仍然是评估食管组织生物力学特性的合理方法。此外,绵羊在生理上与人类有许多相似之处,它们也会患上与人类相同的疾病。它们的食管形态也与人类相似。因此,在研究中,研究了羊的食管。关于大体食管解剖的平面双轴测试的研究非常有限。食管大体解剖的复合性质使得 Holzapfel 型等基于结构的模型的应用非常困难。在目前的研究中,组织通常被分离成具有大量胶原含量的特定层。脂肪组织和其他非胶原组织的影响使得使用确定性基于结构的模型来预测食管的力学行为变得广泛多样且不可预测。因此,预测其力学行为可能非常困难。在研究中,使用 NARX 神经网络来预测羊食管大体解剖的应力-应变响应。结果表明,NARX 模型在拟合误差为 16%的范围内能够达到 99.9%以上的相关性。因此,人工神经网络的使用可能提供了一种更准确的预测食管组织双轴应力-应变响应的方法,并有助于进一步改进合成食管组织替代材料的设计和开发。