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通过深度学习加速结构优化实现全口4颗种植体®治疗中的个性化假体设计。

Personalized prosthesis design in all-on-4® treatment through deep learning-accelerated structural optimization.

作者信息

Chen Yung-Chung, Wang Kuan-Hsin, Lin Chi-Lun

机构信息

School of Dentistry & Institute of Oral Medicine, College of Medicine, National Cheng Kung University, Tainan, Taiwan.

Division of Prosthodontics, Department of Stomatology, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan.

出版信息

J Dent Sci. 2024 Oct;19(4):2140-2149. doi: 10.1016/j.jds.2024.03.017. Epub 2024 Mar 27.

Abstract

BACKGROUND/PURPOSE: The All-on-4® treatment concept is a dental procedure that utilizes only four dental implants to support a fixed prosthesis, providing full-arch rehabilitation with affordable cost and speedy treatment courses. Although the placement of all-on-4® implants has been researched in the past, little attention was paid to the structural design of the prosthetic framework.

MATERIALS AND METHODS

This research proposed a new approach to optimize the structure of denture framework called BESO-Net, which is a bidirectional evolutionary structural optimization (BESO) based convolutional neural network (CNN). The approach aimed to reduce the use of material for the framework, such as Ti-6Al-4V, while maintaining structural strength. The BESO-Net was designed as a one-dimensional CNN based on Inception V3, trained using finite element analysis (FEA) data from 14,994 design configurations, and evaluated its training performance, generalization capability, and computation efficiency.

RESULTS

The results suggested that BESO-Net accurately predicted the optimal structure of the denture framework in various mandibles with different implant and load settings. The average error was found to be 0.29% for compliance and 11.26% for shape error when compared to the traditional BESO combined with FEA. Additionally, the computational time required for structural optimization was significantly reduced from 6.5 h to 45 s.

CONCLUSION

The proposed approach demonstrates its applicability in clinical settings to quickly find personalized All-on-4® framework structure that can significantly reduce material consumption while maintaining sufficient stiffness.

摘要

背景/目的:All-on-4®治疗理念是一种牙科手术,仅使用四颗牙种植体来支撑固定修复体,以可承受的成本和快速的治疗过程提供全牙弓修复。尽管过去已经对All-on-4®种植体的植入进行了研究,但对修复框架的结构设计关注较少。

材料与方法

本研究提出了一种优化义齿框架结构的新方法,称为BESO-Net,它是一种基于双向进化结构优化(BESO)的卷积神经网络(CNN)。该方法旨在减少框架材料(如Ti-6Al-4V)的使用,同时保持结构强度。BESO-Net被设计为基于Inception V3的一维CNN,使用来自14994种设计配置的有限元分析(FEA)数据进行训练,并评估其训练性能、泛化能力和计算效率。

结果

结果表明,BESO-Net能够准确预测不同种植体和载荷设置下各种下颌骨中义齿框架的最佳结构。与传统的BESO结合FEA相比,发现顺应性平均误差为0.29%,形状误差为11.26%。此外,结构优化所需的计算时间从6.5小时显著减少到45秒。

结论

所提出的方法证明了其在临床环境中的适用性,能够快速找到个性化的All-on-4®框架结构,在保持足够刚度的同时显著减少材料消耗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ad67/11437609/e818d831573f/gr1.jpg

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