Investigating the Life Expectancy and Proteolytic Degradation of Engineered Skeletal Muscle Biological Machines.

Abstract:

A combination of techniques from 3D printing, tissue engineering and biomaterials has yielded a new class of engineered biological robots that could be reliably controlled via applied signals. These machines are powered by a muscle strip composed of differentiated skeletal myofibers in a matrix of natural proteins, including fibrin, that provide physical support and cues to the cells as an engineered basement membrane. However, maintaining consistent results becomes challenging when sustaining a living system in vitro. Skeletal muscle must be preserved in a differentiated state and the system is subject to degradation by proteolytic enzymes that can break down its mechanical integrity. Here we examine the life expectancy, breakdown, and device failure of engineered skeletal muscle bio-bots as a result of degradation by three classes of proteases: plasmin, cathepsin L, and matrix metalloproteinases (MMP-2 and MMP-9). We also demonstrate the use of gelatin zymography to determine the effects of differentiation and inhibitor concentration on protease expression. With this knowledge, we are poised to design the next generation of complex biological machines with controllable function, specific life expectancy and greater consistency. These results could also prove useful for the study of disease-specific models, treatments of myopathies, and other tissue engineering applications.

Profile Page: http://compmodelmatch.org/publications/5

PubMed ID: 28630410

Meetings: Finding Your Inner Modeler IV

Publication type: Journal

Journal: Sci Rep

Citation: Sci Rep. 2017 Jun 19;7(1):3775. doi: 10.1038/s41598-017-03723-8.

Date Published: 19th Jun 2017

Registered Mode: by PubMed ID

Authors: C. Cvetkovic, M. C. Ferrall-Fairbanks, E. Ko, L. Grant, H. Kong, M. O. Platt, R. Bashir

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Created: 5th Aug 2021 at 17:40

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