Department of Engineering, Faculty of Science & Engineering, Manchester Metropolitan University, Manchester, M1 5GD, UK.
Department of Life Sciences, Faculty of Science & Engineering, Manchester Metropolitan University, Manchester, M1 5GD, UK; Lancaster Medical School, Faculty of Health and Medicine, Lancaster University, Lancaster, LA1 4YW, UK.
J Mech Behav Biomed Mater. 2024 Sep;157:106630. doi: 10.1016/j.jmbbm.2024.106630. Epub 2024 Jun 17.
Currently, the use of autografts is the gold standard for the replacement of many damaged biological tissues. However, this practice presents disadvantages that can be mitigated through tissue-engineered implants. The aim of this study is to explore how machine learning can mechanically evaluate 2D and 3D polyvinyl alcohol (PVA) electrospun scaffolds (one twisted filament, 3 twisted filament and 3 twisted/braided filament scaffolds) for their use in different tissue engineering applications. Crosslinked and non-crosslinked scaffolds were fabricated and mechanically characterised, in dry/wet conditions and under longitudinal/transverse loading, using tensile testing. 28 machine learning models (ML) were used to predict the mechanical properties of the scaffolds. 4 exogenous variables (structure, environmental condition, crosslinking and direction of the load) were used to predict 2 endogenous variables (Young's modulus and ultimate tensile strength). ML models were able to identify 6 structures and testing conditions with comparable Young's modulus and ultimate tensile strength to ligamentous tissue, skin tissue, oral and nasal tissue, and renal tissue. This novel study proved that Classification and Regression Trees (CART) models were an innovative and easy to interpret tool to identify biomimetic electrospun structures; however, Cubist and Support Vector Machine (SVM) models were the most accurate, with R of 0.93 and 0.8, to predict the ultimate tensile strength and Young's modulus, respectively. This approach can be implemented to optimise the manufacturing process in different applications.
目前,使用自体移植物是替代许多受损生物组织的金标准。然而,这种做法存在一些缺点,可以通过组织工程植入物来减轻。本研究旨在探讨机器学习如何在力学上评估二维和三维聚乙烯醇(PVA)电纺支架(单根扭曲丝、3 根扭曲丝和 3 根扭曲/编织丝支架),以将其用于不同的组织工程应用。交联和非交联支架被制造并在干燥/湿润条件下以及在纵向/横向加载下使用拉伸测试进行力学表征。使用 28 个机器学习模型(ML)来预测支架的机械性能。4 个外源性变量(结构、环境条件、交联和载荷方向)用于预测 2 个内源性变量(杨氏模量和极限拉伸强度)。ML 模型能够识别出 6 种结构和测试条件,其杨氏模量和极限拉伸强度与韧带组织、皮肤组织、口腔和鼻腔组织以及肾脏组织相当。这项新研究证明了分类和回归树(CART)模型是一种创新的、易于解释的工具,可以识别仿生电纺结构;然而,Cubist 和支持向量机(SVM)模型是最准确的,R 分别为 0.93 和 0.8,用于预测极限拉伸强度和杨氏模量。这种方法可以在不同的应用中实施,以优化制造工艺。