Rapid Biocompatibility Analysis of Materials via In Vivo Fluorescence Imaging of Mouse Models
Author(s)
Bratlie, Kaitlin M.; Dang, Tram T.; Lyle, Stephen; Nahrendorf, Matthias; Weissleder, Ralph; Langer, Robert; Anderson, Daniel G.; ... Show more Show less
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Background:
Many materials are unsuitable for medical use because of poor biocompatibility. Recently, advances in the high throughput synthesis of biomaterials has significantly increased the number of potential biomaterials, however current biocompatibility analysis methods are slow and require histological analysis.
Methodology/Principal Findings:
Here we develop rapid, non-invasive methods for in vivo quantification of the inflammatory response to implanted biomaterials. Materials were placed subcutaneously in an array format and monitored for host responses as per ISO 10993-6: 2001. Host cell activity in response to these materials was imaged kinetically, in vivo using fluorescent whole animal imaging. Data captured using whole animal imaging displayed similar temporal trends in cellular recruitment of phagocytes to the biomaterials compared to histological analysis.
Conclusions/Significance:
Histological analysis similarity validates this technique as a novel, rapid approach for screening biocompatibility of implanted materials. Through this technique there exists the possibility to rapidly screen large libraries of polymers in vivo.
Date issued
2010-04Department
Harvard University--MIT Division of Health Sciences and Technology; Massachusetts Institute of Technology. Department of Chemical Engineering; Koch Institute for Integrative Cancer Research at MITJournal
PLoS One
Publisher
Public Library of Science
Citation
Bratlie KM, Dang TT, Lyle S, Nahrendorf M, Weissleder R, et al. 2010 Rapid Biocompatibility Analysis of Materials via In Vivo Fluorescence Imaging of Mouse Models. PLoS ONE 5(4): e10032. doi:10.1371/journal.pone.0010032
Version: Final published version
ISSN
1932-6203