Mini Daniela, Reynolds Karen J, Taylor Mark
Medical Device Research Institute, College of Science and Engineering, Flinders University, Adelaide, South Australia, Australia.
Int J Numer Method Biomed Eng. 2025 Jul;41(7):e70060. doi: 10.1002/cnm.70060.
The management of proximal humeral fractures is challenging, and fixation plates often show a high failure rate. However, new fixation plates with variable angle screws could be beneficial. Finite element (FE) studies have shown some benefits of plates with variable angle screws, but not all possible combinations have been explored, and hence worst and optimal scenarios have not been identified. The full exploration of the solution space is not possible using FE techniques due to the computational expense; therefore, a more computationally affordable technique is needed. This study aimed to develop adaptive neural network (ANN) models that can predict the likelihood of a screw collision and the level of strain on the humeral bone when the orientation of the screws is changed. ANN models were trained using input and output data from FE simulations with varying screw angles, developed on a single subject with a two-part fracture in the proximal humerus. Training sets of different sizes were developed to determine the quantity of data required for an accurate model. Firstly, the ANNs were used to make predictions of results from FE unseen data, showing an 84.4% accuracy for the prediction of screw collision and good correlation (R = 0.99) and low levels of error (RMSE = 0.65%-5.49% strain) for the prediction of bone strain. The ANNs were used to make predictions of a full factorial scenario, showing that the variation of the orientation of the screw in the calcar region has the greatest impact on the bone strain around all screws.
肱骨近端骨折的治疗具有挑战性,固定钢板的失败率往往较高。然而,带有可变角度螺钉的新型固定钢板可能会带来益处。有限元(FE)研究已经显示了可变角度螺钉钢板的一些优势,但尚未探索所有可能的组合,因此尚未确定最坏和最佳情况。由于计算成本,使用有限元技术无法全面探索解决方案空间;因此,需要一种计算成本更低的技术。本研究旨在开发自适应神经网络(ANN)模型,该模型能够在改变螺钉方向时预测螺钉碰撞的可能性以及肱骨上的应变水平。使用来自有限元模拟的输入和输出数据对ANN模型进行训练,这些模拟具有不同的螺钉角度,数据基于一名近端肱骨出现两部分骨折的个体生成。开发了不同大小的训练集以确定准确模型所需的数据量。首先,人工神经网络被用于对有限元未见过的数据结果进行预测,在预测螺钉碰撞方面显示出84.4%的准确率,在预测骨应变方面显示出良好的相关性(R = 0.99)和低误差水平(均方根误差 = 0.65%-5.49%应变)。人工神经网络被用于对全因子情景进行预测,结果表明在距骨区域螺钉方向的变化对所有螺钉周围的骨应变影响最大。