Closed-Loop Control of Extrusion-Based Bioprinting Through Real-Time Computer Vision
 
More details
Hide details
1
, France
 
 
Submission date: 2025-03-12
 
 
Final revision date: 2025-05-08
 
 
Acceptance date: 2025-05-21
 
 
Online publication date: 2025-06-05
 
 
Corresponding author
Javier Arduengo   

Rapid Manufacturing Platform, Nantes Université, École Centrale Nantes, CNRS, GeM, UMR 6183, F-44000, Nantes, France
 
 
 
KEYWORDS
TOPICS
ABSTRACT
Bioprinting is the technology that combines the use of living matter and biomaterials to manufacture biological models, tissues, and structures layer by layer for applications in regenerative medicine, drug testing, and tissue engineering. Among bioprinting techniques, extrusion-based methods are the most widely used because of their relative simplicity, affordability, and ability to handle as wide range of biomaterials, including those with high viscosities. However, achieving consistent print quality remains a challenge, as the rheological properties of bioinks are highly variable and sensitive to environmental factors such as temperature. A critical aspect of print quality is maintaining a consistent and predictable line width, as pre-programmed trajectories and design fidelity rely on this parameter being well controlled. This work introduces a closed-loop control system for Extrusion-Based Bioprinting (EBB), utilizing real-time computer vision. The system employs a camera that is placed to monitor the line width immediately after extrusion, enabling real-time feedback to adjust the feedrate of the extrusion mechanism. This approach ensures consistent line widths across a wide range of materials and conditions, addressing the variability that traditionally hampers EBB. The method was validated using a Pluronic hydrogel, achieving closed-loop control over a wide range of target line widths. These findings demonstrate the potential for automated, robust bioprinting with improved reproducibility and precision, advancing the reliability of this technology for biomedical applications.
REFERENCES (29)
1.
IBRAHIM T. OBZOLAT., 2017, 3D Bioprinting - Fundamentals, Principles and Applications, Elsevier Inc.
 
2.
LIU C., LIU J., YANG C., TANG Y., LIN Z., LI L., LIANG H., LU W., WANG L., 2022, Computer Vision-Aided 2D Error Assessment and Correction for Helix Bioprinting, International Journal of Bioprinting, 8/2, 547, https://doi.org/10.18063/ijb.v....
 
3.
GU Z., FU J., LIN H., HE Y., 2020, Development of 3D Bioprinting: from Printing Methods to Biomedical Applications, Asian Journal of Pharmaceutical Sciences, 15/5, 529–557, https://doi.org/10.1016/j.ajps....
 
4.
HINTON T.J., LEE A., FEINBERG A.W., 2017, 3D Bioprinting from the Micrometer to Millimeter Length Scales: Size Does Matter, Current Opinion in Biomedical Engineering, 1, 31–37, https://doi.org/10.1016/j.cobm....
 
5.
DABABNEH A., OZBOLAT I., 2014, Bioprinting technology: A Current State-of-the-Art Review, Journal of Manufacturing Science and Engineering, 136/6, 061016, https://doi.org/10.1115/1.4028....
 
6.
BARJUEI E.S., SHIN J., KIM K., LEE J.., 2024, Precision Improvement of Robotic Bioprinting via Vision-Based Tool Path Compensation, Scientific Reports, 14, 17764.
 
7.
ARMSTRONG A., PFEIL A., ALLEYNE A., JOHNSON A.W., 2021, Process Monitoring and Control Strategies in Extrusion-Based Bioprinting to Fabricate Spatially Graded Structures, Bioprinting, 21, https://doi.org/10.1016/j.bpri....
 
8.
GUGLIANDOLO S.G., MARGARITA A., SANTONI S., MOSCATELLI D., COLOSIMO B.M., 2022, In-Situ Monitoring of Defects in Extrusion-Based Bioprinting Processes Using Visible Light Imaging, V CIRP Conference on BioManufacturing, 110, 219–224, https://doi.org/10.1016/j.proc....
 
9.
SERGIS V., KELLY D., BRITCHFIELD G., PRAMANICK A., MASON K., DALY A., 2025, In-Situ Quality Monitoring During Embedded Bioprinting Using Integrated Microscopy and Classical Computer Vision, Biofabrication, 17/2, https://doi.org/10.1088/1758-5....
 
10.
ASTRÖM K.J., MURRAY R., 2008, Feedback Systems: An Introduction for Scientists and Engineers, DRAFT v2.4a, © 2006 Karl Johan ˚Astr¨om and Richard Murray.
 
11.
MATAMOROS M., GOMEZ-BLANCO J.C., SANCHEZ J.A., MANCHA E., MACROS A.C., CARRASCO-AMADOR P., PAGADOR J.B., 2020, Temperature and Humidity PID Controller for a Bioprinter Atmospheric Enclosure System, Micro-machines, 11, 999, https://doi.org/10.3390/mi1111....
 
12.
ROJAS C.J.G., PORTILLA C., ÔZKAN L., 2024, Model-Based Feedback Control of Filament Geometry in Extrusion-Based Additive Manufacturing, IFAC Papers OnLine, 58, 403–408, 12th IFAC Symposium on Advanced Control of Chemical Processes (ADCHEM), https://doi.org/10.1016/j.ifac....
 
13.
ZOMORODI H., LANDERS R., 2016, Extrusion Based Additive Manufacturing Using Explicit Model Predictive Control, American Control Conference (ACC), 1747–1752, IEEE, Boston, MA, USA.
 
14.
LIU C., LAW A.C.C., ROBERSON D., KONG Z., 2019, Image Analysis-Based Closed Loop Quality Control for Additive Manufacturing with Fused Filament Fabrication, Journal of Manufacturing Systems, 51, 75–86, https://doi.org/10.1016/j.jmsy....
 
15.
TIAN X., LI Y., MA D., HAN J., XIA L., 2021, Closed-Loop Control of Silicone Extrusion-Based Additive Manufacturing Based on Machine Vision, International Manufacturing Science and Engineering Conference, https://doi.org/10.1115/MSEC20....
 
16.
TIAN X., LI Y., MA D., HAN J., XIA L., 2022, Strand Width Uniformly Control for Silicone Extrusion Additive Manufacturing Based on Image Processing, International Journal of Advanced Manufacturing Technology, 119, 3077–3090.
 
17.
BRION D., PATTINSON S., 2022, Generalisable 3D Printing Error Detection and Correction Via Multi-Head Neural Networks, Nature Communications, 13, 4654.
 
18.
TAMIR T., XIONG G., FANG Q., YANG Y., SHEN Z., ZHOU M., JIANG J., 2023, Machine-Learning-Based Monitoring and Optimization of Processing Parameters In 3D Printing, International Journal of Computer Integrated Manufacturing, 36/9, 1362–1378, https://doi.org/10.1080/095119....
 
19.
ROACH D.J., ROHSKOPF A., LEGUIZAMON S., APPELHANS L., COOK A.W., 2023, Invertible Neural Networks for Real-Time Control of Extrusion Additive Manufacturing, Additive Manufacturing, 74, 103742, https://doi.org/10.1016/j.addm....
 
20.
MA D., TIAN X., CHANG T., HUSSAIN S., XIA L., HAN J., 2024, In-Situ Process Monitoring and Optimization for Extrusion-Based Silicone Additive Manufacturing, 19th International Manufacturing Science and Engineering Conference (MSEC), Knoxville, Tennessee, USA, https://doi.org/10.1115/MSEC20....
 
21.
TRUCCO D., SHARMA A., MANFERDINI C., GABUSI E., PETRETTA M., DESANDO G., RICOTTI L., CHAKRABORTY J., GHOSH S., LISIGNOLI G., 2021, Modeling and Fabrication of Silk Fibroin–Gelatin-Based Constructs Using Extrusion-Based Three-Dimensional Bioprinting, ACS Biomaterials Science and Engineering, 7/7, 3306–3320, https://doi.org/10.1021/acsbio....
 
22.
ARJOCA S., BOJIN F., NEAGU M., P˘AUNESCU A., NEAGU A., PAUNESCU V., 2024, Hydrogel Extrusion Speed Measurements for the Optimization of Bioprinting Parameters, Gels, https://doi.org/10/2, 10.3390/gels10020103.
 
23.
ARDUENGO J., HASCOËT N., CHINESTA F., HASCOËT J-Y., 2024, Open-Loop Control System for High Precision Extrusion-Based Bioprinting Through Machine Learning Modeling, Journal of Machine Engineering, 24/1, 103–117, https://doi.org/10.36897/jme/1....
 
24.
SINGH M., 2021, Sensor-Based Characterization and Control of Additive Biomanufacturing Processes, PhD thesis, Virginia Tech.
 
25.
WENGER L., STRAUß S., HUBBUCH J., 2022, Automated and Dynamic Extrusion Pressure Adjustment Based on Real-Time Flow Rate Measurements for Precise Ink Dispensing in 3D Bioprinting, Bioprinting, 28, https://doi.org/10.1016/j.bpri....
 
26.
KELLY D., SERGIS V., VENTURA-BLANCO L., MASON K., DALY A.C., 2024, Autonomous Control of Extrusion Bioprinting Using Convolutional Neural Networks, Advanced Functional Materials, 2424553, https://doi.org/10.1101/2024.1....
 
27.
Trio Motion Technology, 2025, Software Downloads and Support, Available at: www.triomotion.com/public/software/ softwareSupport.php (Accessed: 4 May 2025).
 
28.
BRADSKI G., 2000, Dr.Dobb's, Journal of Software Tools, The OpenCV Library.
 
29.
Nordson EFD, Ultimus V High Precision Dispenser, Available at: https://www.nordson.com/en/pro... (Accessed: 4 May 2025).
 
eISSN:2391-8071
ISSN:1895-7595
Journals System - logo
Scroll to top