Computer vision-aided bioprinting for bone research

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作者
Changxi Liu
Liqiang Wang
Weijie Lu
Jia Liu
Chengliang Yang
Chunhai Fan
Qian Li
Yujin Tang
机构
[1] Shanghai Jiao Tong University,State Key Laboratory of Metal Matrix Composites, School of Material Science and Engineering
[2] Medical University for Nationalities,Affiliated Hospital of Youjiang
[3] Shanghai Jiao Tong University,School of Chemistry and Chemical Engineering, National Center for Translational Medicine
来源
Bone Research | / 10卷
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摘要
Bioprinting is an emerging additive manufacturing technology that has enormous potential in bone implantation and repair. The insufficient accuracy of the shape of bioprinted parts is a primary clinical barrier that prevents widespread utilization of bioprinting, especially for bone design with high-resolution requirements. During the last five years, the use of computer vision for process control has been widely practiced in the manufacturing field. Computer vision can improve the performance of bioprinting for bone research with respect to various aspects, including accuracy, resolution, and cell survival rate. Hence, computer vision plays a substantial role in addressing the current defect problem in bioprinting for bone research. In this review, recent advances in the application of computer vision in bioprinting for bone research are summarized and categorized into three groups based on different defect types: bone scaffold process control, deep learning, and cell viability models. The collection of printing parameters, data processing, and feedback of bioprinting information, which ultimately improves printing capabilities, are further discussed. We envision that computer vision may offer opportunities to accelerate bioprinting development and provide a new perception for bone research.
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