Muscle‐Inspired Highly Anisotropic, Strong, Ion‐Conductive Hydrogels

Weiqing Kong(University of Maryland, College Park), Chengwei Wang(University of Maryland, College Park), Chao Jia(University of Maryland, College Park), Yudi Kuang(University of Maryland, College Park), Glenn Pastel(University of Maryland, College Park), Chaoji Chen(University of Maryland, College Park), Gegu Chen(University of Maryland, College Park), Shuaiming He(University of Maryland, College Park), Hao Huang(University of Maryland, College Park), Jianhua Zhang(National Institutes of Health), Sha Wang(University of Maryland, College Park), Liangbing Hu(University of Maryland, College Park)
Advanced Materials
August 12, 2018
Cited by 609

Abstract

Abstract Biological tissues generally exhibit excellent anisotropic mechanical properties owing to their well‐developed microstructures. Inspired by the aligned structure in muscles, a highly anisotropic, strong, and conductive wood hydrogel is developed by fully utilizing the high–tensile strength of natural wood, and the flexibility and high‐water content of hydrogels. The wood hydrogel exhibits a high–tensile strength of 36 MPa along the longitudinal direction due to the strong bonding and cross‐linking between the aligned cellulose nanofibers (CNFs) in wood and the polyacrylamide (PAM) polymer. The wood hydrogel is 5 times and 500 times stronger than the bacterial cellulose hydrogels (7.2 MPa) and the unmodified PAM hydrogel (0.072 MPa), respectively, representing one of the strongest hydrogels ever reported. Due to the negatively charged aligned CNF, the wood hydrogel is also an excellent nanofluidic conduit with an ionic conductivity of up to 5 × 10 −4 S cm –1 at low concentrations for highly selective ion transport, akin to biological muscle tissue. The work offers a promising strategy to fabricate a wide variety of strong, anisotropic, flexible, and ionically conductive wood‐based hydrogels for potential biomaterials and nanofluidic applications.


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