3D printing of an artificial intelligence-generated patient-specific coronary artery segmentation in a support bath.

IF 3.9 3区 医学 Q2 ENGINEERING, BIOMEDICAL Biomedical materials Pub Date : 2024-04-16 DOI:10.1088/1748-605X/ad3f60
Serkan Sokmen, Soner Çakmak, Ilkay Oksuz
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Abstract

Accurate segmentation of coronary artery tree and personalised 3D printing from medical images is essential for CAD diagnosis and treatment. The current literature on 3D printing relies solely on generic models created with different software or 3D coronary artery models manually segmented from medical images. Moreover, there are not many studies examining the bioprintability of a 3D model generated by artificial intelligence (AI) segmentation for complex and branched structures. In this study, deep learning algorithms with transfer learning have been employed for accurate segmentation of the coronary artery tree from medical images to generate printable segmentations. We propose a combination of deep learning and 3D printing, which accurately segments and prints complex vascular patterns in coronary arteries. Then, we performed the 3D printing of the AI-generated coronary artery segmentation for the fabrication of bifurcated hollow vascular structure. Our results indicate improved performance of segmentation with the aid of transfer learning with a Dice overlap score of 0.86 on a test set of 10 CTA images. Then, bifurcated regions from 3D models were printed into the Pluronic F-127 support bath using alginate+glucomannan hydrogel. We successfully fabricated the bifurcated coronary artery structures with high length and wall thickness accuracy, however, the outer diameters of the vessels and length of the bifurcation point differ from the 3D models. The extrusion of unnecessary material, primarily observed when the nozzle moves from left to the right vessel during 3D printing, can be mitigated by adjusting the nozzle speed. Moreover, the shape accuracy can also be improved by designing a multi-axis printhead that can change the printing angle in three dimensions. Thus, this study demonstrates the potential of the use of AI-segmented 3D models in the 3D printing of coronary artery structures and, when further improved, can be used for the fabrication of patient-specific vascular implants.
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在支撑槽中进行人工智能生成的患者特异性冠状动脉分段 3D 打印。
准确分割冠状动脉树并根据医学图像进行个性化三维打印对 CAD 诊断和治疗至关重要。目前有关三维打印的文献仅依赖于使用不同软件创建的通用模型或从医学影像中手动分割的三维冠状动脉模型。此外,对人工智能(AI)分割生成的复杂和分支结构三维模型的生物打印性进行研究的并不多。在这项研究中,我们采用了带有迁移学习的深度学习算法,从医学图像中准确分割冠状动脉树,生成可打印的分割图像。我们提出了一种深度学习与三维打印相结合的方法,可以精确地分割并打印出冠状动脉中复杂的血管形态。然后,我们对人工智能生成的冠状动脉分割进行了三维打印,用于制造分叉的空心血管结构。我们的结果表明,借助迁移学习,在 10 张 CTA 图像的测试集上,分割性能得到了提高,Dice 重叠得分达到了 0.86。然后,使用藻酸盐+葡甘露聚糖水凝胶将三维模型中的分叉区域打印到 Pluronic F-127 支撑槽中。我们成功制作出了长度和壁厚精确度较高的冠状动脉分叉结构,但血管外径和分叉点长度与三维模型存在差异。在三维打印过程中,主要是当喷嘴从左侧移到右侧血管时,会观察到不必要的材料挤出,这可以通过调整喷嘴速度来缓解。此外,还可以通过设计可在三维空间改变打印角度的多轴打印头来提高形状精度。因此,这项研究证明了在冠状动脉结构的三维打印中使用人工智能分段三维模型的潜力,如果进一步改进,还可用于制造特定患者的血管植入物。
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来源期刊
Biomedical materials
Biomedical materials 工程技术-材料科学:生物材料
CiteScore
6.70
自引率
7.50%
发文量
294
审稿时长
3 months
期刊介绍: The goal of the journal is to publish original research findings and critical reviews that contribute to our knowledge about the composition, properties, and performance of materials for all applications relevant to human healthcare. Typical areas of interest include (but are not limited to): -Synthesis/characterization of biomedical materials- Nature-inspired synthesis/biomineralization of biomedical materials- In vitro/in vivo performance of biomedical materials- Biofabrication technologies/applications: 3D bioprinting, bioink development, bioassembly & biopatterning- Microfluidic systems (including disease models): fabrication, testing & translational applications- Tissue engineering/regenerative medicine- Interaction of molecules/cells with materials- Effects of biomaterials on stem cell behaviour- Growth factors/genes/cells incorporated into biomedical materials- Biophysical cues/biocompatibility pathways in biomedical materials performance- Clinical applications of biomedical materials for cell therapies in disease (cancer etc)- Nanomedicine, nanotoxicology and nanopathology- Pharmacokinetic considerations in drug delivery systems- Risks of contrast media in imaging systems- Biosafety aspects of gene delivery agents- Preclinical and clinical performance of implantable biomedical materials- Translational and regulatory matters
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