骨植入体柱状TPMS晶格的多目标机器学习优化。

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Mansoureh Rezapourian, Ali Cheloee Darabi, Mohammadreza Khoshbin, Irina Hussainova
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引用次数: 0

摘要

本研究提出了一个多目标优化框架,用于设计适合骨种植体应用的圆柱形三周期最小表面(TPMS)晶格。利用人工神经网络(ANN)作为模拟数据训练的替代模型,从七个晶格设计参数中预测了四个关键特性——极限应力(U)、能量吸收(EA)、表面积体积比(SA/VR)和相对密度(RD)。为了解决解剖学上的差异,引入了一种新的基于种植体尺寸的分类(小、中、大),并对每组进行了单独的优化运行。通过NSGA-II算法进行优化,以最大化机械性能(U和EA)和表面效率(SA/VR),同时过滤生物相关RD值(20-40%)。分别对小、中、大种植体大小组进行优化运行。共识别出105个pareto最优设计,经RD滤波后保留75个设计。SHapley加性解释(SHAP)分析揭示了厚度和胞元尺寸对目标性质的主要影响。核密度和箱线图比较证实了不同大小组的不同性能趋势。该框架有效地平衡了相互竞争的设计目标,并允许选择特定尺寸的格子。所提出的方法为优化生物结构提供了一种可重复的途径,具有加速个性化医疗中基于晶格植入物发展的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Objective Machine Learning Optimization of Cylindrical TPMS Lattices for Bone Implants.

This study presents a multi-objective optimization framework for designing cylindrical triply periodic minimal surface (TPMS) lattices tailored for bone implant applications. Using an artificial neural network (ANN) as a surrogate model trained on simulated data, four key properties-ultimate stress (U), energy absorption (EA), surface area-to-volume ratio (SA/VR), and relative density (RD)-were predicted from seven lattice design parameters. To address anatomical variability, a novel implant size-based categorization (small, medium, and large) was introduced, and separate optimization runs were conducted for each group. The optimization was performed via the NSGA-II algorithm to maximize mechanical performance (U and EA) and surface efficiency (SA/VR), while filtering for biologically relevant RD values (20-40%). Separate optimization runs were conducted for small, medium, and large implant size groups. A total of 105 Pareto-optimal designs were identified, with 75 designs retained after RD filtering. SHapley Additive exPlanations (SHAP) analysis revealed the dominant influence of thickness and unit cell size on target properties. Kernel density and boxplot comparisons confirmed distinct performance trends across size groups. The framework effectively balances competing design goals and enables the selection of size-specific lattices. The proposed approach provides a reproducible pathway for optimizing bioarchitectures, with the potential to accelerate the development of lattice-based implants in personalized medicine.

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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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