使用多射流融合增材制造技术制造个性化医疗器械的几何重复性和预测性

IF 4.2 Q2 ENGINEERING, MANUFACTURING Additive manufacturing letters Pub Date : 2024-02-01 DOI:10.1016/j.addlet.2024.100200
Christopher H. Conway , Davis J. McGregor , Tristan Antonsen , Charles Wood , Chenhui Shao , William P. King
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引用次数: 0

摘要

随着增材制造(AM)产量增长到工业规模,质量体系也必须随之扩大,以验证每个部件都符合要求。对于个性化医疗设备来说,质量体系尤其具有挑战性,因为每个患者都需要独特的设计。本研究对用于膝关节手术的快速成型导板的可重复性进行了研究,该导板可根据患者的尺寸和形状进行个性化设计,并探索了预测几何精度的概念。我们创建了 258 个独特的手术导板设计,其关键特征的尺寸各不相同,以模拟实际情况,并使用多喷射融合 AM 制造了 2100 个零件。自动测量技术收集了 8400 个特征尺寸。在四个关键特征中,特征尺寸的标准偏差为 0.076 至 0.173 毫米,但精度始终与目标尺寸相差 -0.308 至 0.017 毫米。我们展示了机器学习(ML)模型如何预测这些几何变形,并探讨了有效训练这些模型所需的零件数量。这些模型的准确度为 0.033 至 0.075 毫米,因此可以准确预测各种零件尺寸的零件形状变形,其误差不超过一个标准偏差。
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Geometry repeatability and prediction for personalized medical devices made using multi-jet fusion additive manufacturing

As additive manufacturing (AM) production volumes grow to the industrial scale, quality systems must also scale to verify that every part satisfies requirements. Quality systems are particularly challenging for personalized medical devices, where every patient requires a unique design. This research studies the repeatability of an additively manufactured guide for knee surgery that is personalized to the size and shape of a patient and explores concepts for predicting geometric accuracy. We created 258 unique surgical guide designs with different sizes of the critical features to simulate practical conditions, and manufactured 2100 parts using multi-jet fusion AM. An automated measurement technique collected 8400 individual feature dimensions. Across four critical features, the standard deviation of feature size was 0.076 to 0.173 mm, however the accuracy was consistently different than the target dimensions by -0.308 to 0.017 mm. We show how machine learning (ML) models can predict these geometry distortions and explore the number of parts required to effectively train these models. The accuracy of these models are 0.033 to 0.075 mm, such that the part shape distortion can be accurately predicted to within one standard deviation across a wide range of part sizes.

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来源期刊
Additive manufacturing letters
Additive manufacturing letters Materials Science (General), Industrial and Manufacturing Engineering, Mechanics of Materials
CiteScore
3.70
自引率
0.00%
发文量
0
审稿时长
37 days
期刊最新文献
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