Quality assurance of 3D-printed patient specific anatomical models: a systematic review.

IF 3.2 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Martin Schulze, Lukas Juergensen, Robert Rischen, Max Toennemann, Gregor Reischle, Jan Puetzler, Georg Gosheger, Julian Hasselmann
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Abstract

Background: The responsible use of 3D-printing in medicine includes a context-based quality assurance. Considerable literature has been published in this field, yet the quality of assessment varies widely. The limited discriminatory power of some assessment methods challenges the comparison of results. The total error for patient specific anatomical models comprises relevant partial errors of the production process: segmentation error (SegE), digital editing error (DEE), printing error (PrE). The present review provides an overview to improve the general understanding of the process specific errors, quantitative analysis, and standardized terminology.

Methods: This review focuses on literature on quality assurance of patient-specific anatomical models in terms of geometric accuracy published before December 4th, 2022 (n = 139). In an attempt to organize the literature, the publications are assigned to comparable categories and the absolute values of the maximum mean deviation (AMMD) per publication are determined therein.

Results: The three major examined types of original structures are teeth or jaw (n = 52), skull bones without jaw (n = 17) and heart with coronary arteries (n = 16). VPP (vat photopolymerization) is the most frequently employed basic 3D-printing technology (n = 112 experiments). The median values of AMMD (AMMD: The metric AMMD is defined as the largest linear deviation, based on an average value from at least two individual measurements.) are 0.8 mm for the SegE, 0.26 mm for the PrE and 0.825 mm for the total error. No average values are found for the DEE.

Conclusion: The total error is not significantly higher than the partial errors which may compensate each other. Consequently SegE, DEE and PrE should be analyzed individually to describe the result quality as their sum according to rules of error propagation. Current methods for quality assurance of the segmentation are often either realistic and accurate or resource efficient. Future research should focus on implementing models for cost effective evaluations with high accuracy and realism. Our system of categorization may be enhancing the understanding of the overall process and a valuable contribution to the structural design and reporting of future experiments. It can be used to educate specialists for risk assessment and process validation within the additive manufacturing industry.

三维打印病人特定解剖模型的质量保证:系统综述。
背景:在医学领域负责任地使用 3D 打印技术包括基于背景的质量保证。该领域已发表了大量文献,但评估质量参差不齐。一些评估方法的鉴别力有限,这给结果比较带来了挑战。病人特定解剖模型的总误差包括制作过程中的相关局部误差:分割误差(SegE)、数字编辑误差(DEE)和打印误差(PrE)。本综述提供了一个概述,以提高对特定过程误差、定量分析和标准化术语的总体理解:本综述侧重于 2022 年 12 月 4 日之前发表的有关患者特异性解剖模型几何精度质量保证的文献(n = 139)。为了对文献进行整理,我们将这些出版物归入了可比较的类别,并在其中确定了每篇出版物的最大平均偏差绝对值(AMDD):所研究的三种主要原始结构类型是牙齿或颌骨(52 个)、不含颌骨的颅骨(17 个)和带冠状动脉的心脏(16 个)。VPP(大桶光聚合)是最常用的基本三维打印技术(n = 112 次实验)。AMMD的中值(AMMD:AMMD指标定义为基于至少两次单独测量平均值的最大线性偏差)为:SegE为0.8毫米,PrE为0.26毫米,总误差为0.825毫米。DEE 没有平均值:结论:总误差并没有明显高于部分误差,部分误差可以相互补偿。因此,应单独分析 SegE、DEE 和 PrE,根据误差传播规则将它们的总和描述为结果质量。目前的分割质量保证方法通常要么不现实、不准确,要么资源效率低。未来的研究应重点关注如何实施具有高准确性和真实性的成本效益评估模型。我们的分类系统可能会加深对整个过程的理解,并对未来实验的结构设计和报告做出有价值的贡献。该系统还可用于教育风险评估和增材制造行业工艺验证方面的专家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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