Literature DB >> 33882674

Monitoring Anomalies in 3D Bioprinting with Deep Neural Networks.

Zeqing Jin1, Zhizhou Zhang1, Xianlin Shao1, Grace X Gu1.   

Abstract

Additive manufacturing technologies have progressed in the past decades, especially when used to print biofunctional structures such as scaffolds and vessels with living cells for tissue engineering applications. Part quality and reliability are essential to maintaining the biocompatibility and structural integrity needed for engineered tissue constructs. As a result, it is critical to detect for any anomalies that may occur in the 3D-bioprinting process that can cause a mismatch between the desired designs and printed shapes. However, challenges exist in detecting the imperfections within oftentimes transparent bioprinted and complex printing features accurately and efficiently. In this study, an anomaly detection system based on layer-by-layer sensor images and machine learning algorithms is developed to distinguish and classify imperfections for transparent hydrogel-based bioprinted materials. High anomaly detection accuracy is obtained by utilizing convolutional neural network methods as well as advanced image processing and augmentation techniques on extracted small image patches. Along with the prediction of various anomalies, the category of infill pattern and location information on the image patches can be accurately determined. It is envisioned that using our detection system to categorize and localize printing anomalies, real-time autonomous correction of process parameters can be realized to achieve high-quality tissue constructs in 3D-bioprinting processes.

Entities:  

Keywords:  3D bioprinting; additive manufacturing; computer vision; convolutional neural networks; machine learning

Year:  2021        PMID: 33882674     DOI: 10.1021/acsbiomaterials.0c01761

Source DB:  PubMed          Journal:  ACS Biomater Sci Eng        ISSN: 2373-9878


  6 in total

1.  Compensating the cell-induced light scattering effect in light-based bioprinting using deep learning.

Authors:  Jiaao Guan; Shangting You; Yi Xiang; Jacob Schimelman; Jeffrey Alido; Xinyue Ma; Min Tang; Shaochen Chen
Journal:  Biofabrication       Date:  2021-12-03       Impact factor: 9.954

Review 2.  Bioink Formulation and Machine Learning-Empowered Bioprinting Optimization.

Authors:  Sebastian Freeman; Stefano Calabro; Roma Williams; Sha Jin; Kaiming Ye
Journal:  Front Bioeng Biotechnol       Date:  2022-06-13

3.  Scalable Biofabrication: A Perspective on the Current State and Future Potentials of Process Automation in 3D-Bioprinting Applications.

Authors:  Nils Lindner; Andreas Blaeser
Journal:  Front Bioeng Biotechnol       Date:  2022-05-20

Review 4.  Printability and Cell Viability in Extrusion-Based Bioprinting from Experimental, Computational, and Machine Learning Views.

Authors:  Ali Malekpour; Xiongbiao Chen
Journal:  J Funct Biomater       Date:  2022-04-10

5.  Machine Learning Reveals a General Understanding of Printability in Formulations Based on Rheology Additives.

Authors:  Ali Nadernezhad; Jürgen Groll
Journal:  Adv Sci (Weinh)       Date:  2022-08-25       Impact factor: 17.521

Review 6.  Optimized 3D Bioprinting Technology Based on Machine Learning: A Review of Recent Trends and Advances.

Authors:  Jaemyung Shin; Yoonjung Lee; Zhangkang Li; Jinguang Hu; Simon S Park; Keekyoung Kim
Journal:  Micromachines (Basel)       Date:  2022-02-25       Impact factor: 2.891

  6 in total

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