
Three-dimensional (3D) printing technology, also known as additive manufacturing (AM), has emerged as an attractive state-of-the-art tool for precisely fabricating functional materials with complex geometries, championing several advancements in tissue engineering, regenerative medicine, and therapeutics. However, this technology has an untapped potential for biotechnological applications, such as sensor and biosensor development. By exploring these avenues, the scope of 3D printing technology can be expanded and pave the way for groundbreaking innovations in the biotechnology field. Indeed, new printing materials and printers would offer new possibilities for seamlessly incorporating biological functionalities within the growing 3D scaffolds. Herein, we review the additive manufacturing applications in biosensor technologies with a particular emphasis on extrusion-based 3D printing modalities. We highlight the application of natural, synthetic, and composite biomaterials as 3D-printed soft hydrogels. Emphasis is placed on the approach by which the sensing molecules are introduced during the fabrication process. Finally, future perspectives are provided.
bioinks, Tissue Engineering, Biocompatible Materials, Review, Biosensing Techniques, biosensors, Regenerative Medicine, 3D (bio)printing, Printing, Three-Dimensional, additive manufacturing, polymers, TP248.13-248.65, Biotechnology
bioinks, Tissue Engineering, Biocompatible Materials, Review, Biosensing Techniques, biosensors, Regenerative Medicine, 3D (bio)printing, Printing, Three-Dimensional, additive manufacturing, polymers, TP248.13-248.65, Biotechnology
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