2023
DOI: 10.1021/acsmaterialslett.3c00439
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High-Speed and High-Resolution 3D Printing of Self-Healing and Ion-Conductive Hydrogels via μCLIP

Abstract: Conductive and self-healing (SH) hydrogels have been receiving continuous attention, which could broaden the design of ionotronic devices for health monitoring systems and soft robots with the ability to repair damage autonomously. So far, three-dimensional (3D) fabrication of such SH hydrogels is mainly limited to traditional molding/casting or extrusion-based 3D printing methods, which limits the formation of sophisticated structures with highresolution features. Furthermore, the need of external stimuli (e.… Show more

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Cited by 15 publications
(1 citation statement)
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“…Moreover, current 3D printing equipment often lacks speed and mass production capabilities, limiting its use in rapid emergency medical care. However, advancements in computer-aided design and engineering software have improved the precision and efficiency of the design process. , These tools can simulate how implants will perform in real-world conditions, predicting and addressing potential issues before production. By combining machine learning and artificial intelligence technologies, the design process can be automatically optimized to meet specific clinical needs and individual patient differences.…”
Section: Challenges and Potentialmentioning
confidence: 99%
“…Moreover, current 3D printing equipment often lacks speed and mass production capabilities, limiting its use in rapid emergency medical care. However, advancements in computer-aided design and engineering software have improved the precision and efficiency of the design process. , These tools can simulate how implants will perform in real-world conditions, predicting and addressing potential issues before production. By combining machine learning and artificial intelligence technologies, the design process can be automatically optimized to meet specific clinical needs and individual patient differences.…”
Section: Challenges and Potentialmentioning
confidence: 99%