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Get Free AccessWe report simple, water-based fabrication methods based on protein self-assembly to generate 3D silk fibroin bulk materials that can be easily hybridized with water-soluble molecules to obtain multiple solid formats with predesigned functions. Controlling self-assembly leads to robust, machinable formats that exhibit thermoplastic behavior consenting material reshaping at the nanoscale, microscale, and macroscale. We illustrate the versatility of the approach by realizing demonstrator devices where large silk monoliths can be generated, polished, and reshaped into functional mechanical components that can be nanopatterned, embed optical function, heated on demand in response to infrared light, or can visualize mechanical failure through colorimetric chemistries embedded in the assembled (bulk) protein matrix. Finally, we show an enzyme-loaded solid mechanical part, illustrating the ability to incorporate biological function within the bulk material with possible utility for sustained release in robust, programmably shapeable mechanical formats.
Benedetto Marelli, Nereus Patel, Thomas J. Duggan, Giovanni Perotto, Elijah Shirman, Chunmei Li, David Kaplan, Fiorenzo G. Omenetto (2016). Programming function into mechanical forms by directed assembly of silk bulk materials. , 114(3), DOI: https://doi.org/10.1073/pnas.1612063114.
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Type
Article
Year
2016
Authors
8
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1073/pnas.1612063114
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