Department of Materials Science and Engineering, National Yang Ming Chiao Tung University, Hsinchu 30010, Taiwan.
National Center for High-Performance Computing, Hsinchu 30076, Taiwan.
Int J Mol Sci. 2023 Jan 18;24(3):1948. doi: 10.3390/ijms24031948.
Tissue differentiation varies based on patients' conditions, such as occlusal force and bone properties. Thus, the design of the implants needs to take these conditions into account to improve osseointegration. However, the efficiency of the design procedure is typically not satisfactory and needs to be significantly improved. Thus, a deep learning network (DLN) is proposed in this study. A data-driven DLN consisting of U-net, ANN, and random forest models was implemented. It serves as a surrogate for finite element analysis and the mechano-regulation algorithm. The datasets include the history of tissue differentiation throughout 35 days with various levels of occlusal force and bone properties. The accuracy of day-by-day tissue differentiation prediction in the testing dataset was 82%, and the AUC value of the five tissue phenotypes (fibrous tissue, cartilage, immature bone, mature bone, and resorption) was above 0.86, showing a high prediction accuracy. The proposed DLN model showed the robustness for surrogating the complex, time-dependent calculations. The results can serve as a design guideline for dental implants.
组织分化因患者的咬合力量和骨特性等条件而异。因此,植入物的设计需要考虑这些条件,以提高骨整合。然而,设计过程的效率通常不能令人满意,需要显著提高。因此,本研究提出了一种深度学习网络(DLN)。实现了一种由 U-net、ANN 和随机森林模型组成的数据驱动的 DLN。它可作为有限元分析和力学调节算法的替代物。数据集包括在不同咬合力量和骨特性水平下的 35 天组织分化史。在测试数据集上,对每天组织分化的预测准确率为 82%,5 种组织表型(纤维组织、软骨、未成熟骨、成熟骨和吸收)的 AUC 值均高于 0.86,表现出较高的预测准确性。所提出的 DLN 模型在替代复杂的、时变的计算方面表现出稳健性。结果可作为牙科植入物的设计指南。