Akkad Khaled, Mehboob Hassan, Alyamani Rakan, Tarlochan Faris
Department of Engineering Management, Prince Sultan University, P.O. Box 66833, Riyadh 11586, Saudi Arabia.
Department for Mechanical and Industrial Engineering, Qatar University, Doha 2713, Qatar.
J Funct Biomater. 2023 Mar 15;14(3):156. doi: 10.3390/jfb14030156.
Novel designs of porous and semi-porous hip stems attempt to alleviate complications such as aseptic loosening, stress shielding, and eventual implant failure. Various designs of hip stems are modeled to simulate biomechanical performance using finite element analysis; however, these models are computationally expensive. Therefore, the machine learning approach is incorporated with simulated data to predict the new biomechanical performance of new designs of hip stems. Six types of algorithms based on machine learning were employed to validate the simulated results of finite element analysis. Afterwards, new designs of semi-porous stems with outer dense layers of 2.5 and 3 mm and porosities of 10-80% were used to predict the stiffness of the stems, stresses in outer dense layers, stresses in porous sections, and factor of safety under physiological loads using machine learning algorithms. It was determined that decision tree regression is the top-performing machine learning algorithm as per the used simulation data in terms of the validation mean absolute percentage error which equals 19.62%. It was also found that ridge regression produces the most consistent test set trend as compared with the original simulated finite element analysis results despite relying on a relatively small data set. These predicted results employing trained algorithms provided the understanding that changing the design parameters of semi-porous stems affects the biomechanical performance without carrying out finite element analysis.
多孔和半多孔髋关节柄的新型设计试图减轻诸如无菌性松动、应力屏蔽以及最终的植入物失效等并发症。使用有限元分析对各种髋关节柄设计进行建模,以模拟生物力学性能;然而,这些模型的计算成本很高。因此,将机器学习方法与模拟数据相结合,以预测新型髋关节柄设计的新生物力学性能。采用六种基于机器学习的算法来验证有限元分析的模拟结果。之后,使用外层致密层分别为2.5毫米和3毫米、孔隙率为10 - 80%的新型半多孔柄设计,通过机器学习算法来预测柄的刚度、外层致密层的应力、多孔部分的应力以及生理载荷下的安全系数。根据所使用的模拟数据,就等于19.62%的验证平均绝对百分比误差而言,确定决策树回归是性能最佳的机器学习算法。还发现,尽管依赖相对较小的数据集,但与原始模拟有限元分析结果相比,岭回归产生的测试集趋势最为一致。这些采用经过训练算法的预测结果表明,在不进行有限元分析的情况下,改变半多孔柄的设计参数会影响生物力学性能。