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Multiobjective Optimization Design of Spinal Pedicle Screws Using Neural Networks and Genetic Algorithm: Mathematical Models and Mechanical Validation

机译:基于神经网络和遗传算法的椎弓根螺钉多目标优化设计:数学模型与力学验证

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摘要

Short-segment instrumentation for spine fractures is threatened by relatively high failure rates. Failure of the spinal pedicle screws including breakage and loosening may jeopardize the fixation integrity and lead to treatment failure. Two important design objectives, bending strength and pullout strength, may conflict with each other and warrant a multiobjective optimization study. In the present study using the three-dimensional finite element (FE) analytical results based on an L25 orthogonal array, bending and pullout objective functions were developed by an artificial neural network (ANN) algorithm, and the trade-off solutions known as Pareto optima were explored by a genetic algorithm (GA). The results showed that the knee solutions of the Pareto fronts with both high bending and pullout strength ranged from 92% to 94% of their maxima, respectively. In mechanical validation, the results of mathematical analyses were closely related to those of experimental tests with a correlation coefficient of −0.91 for bending and 0.93 for pullout (P < 0.01 for both). The optimal design had significantly higher fatigue life (P < 0.01) and comparable pullout strength as compared with commercial screws. Multiobjective optimization study of spinal pedicle screws using the hybrid of ANN and GA could achieve an ideal with high bending and pullout performances simultaneously.
机译:脊柱骨折的短节段器械受到较高故障率的威胁。脊椎椎弓根螺钉的损坏,包括断裂和松动,可能会损害固定完整性并导致治疗失败。弯曲强度和拉拔强度这两个重要的设计目标可能会相互冲突,并需要进行多目标优化研究。在本研究中,使用基于L25正交阵列的三维有限元(FE)分析结果,通过人工神经网络(ANN)算法开发了弯曲和拉出目标函数,并采用了称为Pareto最优的折衷解决方案由遗传算法(GA)探索。结果表明,具有高弯曲强度和抗拉强度的帕累托锋面的膝盖解分别在其最大值的92%至94%之间。在机械验证中,数学分析的结果与实验测试的结果紧密相关,弯曲的相关系数为-0.91,拉拔的相关系数为0.93(两者的P <0.01)。与商用螺钉相比,最佳设计具有明显更高的疲劳寿命(P <0.01)和相当的拔出强度。结合ANN和GA进行的椎弓根螺钉多目标优化研究,可以同时获得高弯曲和拔出性能的理想选择。

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