Juergensen Lukas, Rischen Robert, Hasselmann Julian, Toennemann Max, Pollmanns Arne, Gosheger Georg, Schulze Martin
Department of General Orthopedics and Tumor Orthopedics, University Hospital Muenster, Münster, 48149, Germany.
Clinic for Radiology, University Hospital Muenster, Muenster, 48149, Germany.
3D Print Med. 2024 Nov 22;10(1):38. doi: 10.1186/s41205-024-00242-x.
The use of 3D-printing in medicine requires a context-specific quality assurance program to ensure patient safety. The process of medical 3D-printing involves several steps, each of which might be prone to its own set of errors. The segmentation error (SegE), the digital editing error (DEE) and the printing error (PrE) are the most important partial errors. Approaches to evaluate these have not yet been implemented in a joint concept. Consequently, information on the stability of the overall process is often lacking and possible process optimizations are difficult to implement. In this study, SegE, DEE, and PrE are evaluated individually, and error propagation is used to examine the cumulative effect of the partial errors.
The partial errors were analyzed employing surface deviation analyses. The effects of slice thickness, kernel, threshold, software and printers were investigated. The total error was calculated as the sum of SegE, DEE and PrE.
The higher the threshold value was chosen, the smaller were the segmentation results. The deviation values varied more when the CT slices were thicker and when the threshold was more distant from a value of around -400 HU. Bone kernel-based segmentations were prone to artifact formation. The relative reduction in STL file size [as a proy for model complexity] was greater for higher levels of smoothing and thinner slice thickness of the DICOM datasets. The slice thickness had a minor effect on the surface deviation caused by smoothing, but it was affected by the level of smoothing. The PrE was mainly influenced by the adhesion of the printed part to the build plate. Based on the experiments, the total error was calculated for an optimal and a worst-case parameter configuration. Deviations of 0.0093 mm ± 0.2265 mm and 0.3494 mm ± 0.8001 mm were calculated for the total error.
Various parameters affecting geometric deviations in medical 3D-printing were analyzed. Especially, soft reconstruction kernels seem to be advantageous for segmentation. The concept of error propagation can contribute to a better understanding of the process specific errors and enable future analytical approaches to calculate the total error based on process parameters.
医学中3D打印的应用需要特定背景下的质量保证程序以确保患者安全。医学3D打印过程涉及多个步骤,每个步骤都可能容易出现其自身的一系列错误。分割误差(SegE)、数字编辑误差(DEE)和打印误差(PrE)是最重要的部分误差。尚未在一个联合概念中实施评估这些误差的方法。因此,通常缺乏关于整个过程稳定性的信息,并且难以实施可能的过程优化。在本研究中,分别评估了SegE、DEE和PrE,并使用误差传播来检查部分误差的累积效应。
采用表面偏差分析来分析部分误差。研究了切片厚度、核函数、阈值、软件和打印机的影响。总误差计算为SegE、DEE和PrE之和。
选择的阈值越高,分割结果越小。当CT切片较厚且阈值距离约-400 HU的值越远时,偏差值变化更大。基于骨核的分割容易形成伪影。对于更高水平的平滑处理和更薄的DICOM数据集切片厚度,STL文件大小的相对减小[作为模型复杂性的指标]更大。切片厚度对由平滑处理引起的表面偏差影响较小,但它受平滑处理水平的影响。PrE主要受打印部件与构建板的附着力影响。基于实验,计算了最佳和最坏情况参数配置下的总误差。总误差分别计算为0.0093 mm±0.2265 mm和0.3494 mm±0.8001 mm。
分析了影响医学3D打印中几何偏差的各种参数。特别是,软重建核函数似乎对分割有利。误差传播的概念有助于更好地理解特定过程的误差,并使未来能够基于过程参数计算总误差的分析方法成为可能。