4.4 Article

Synthesis of sub-10 nm solid lipid nanoparticles for topical and biomarker detection applications

期刊

JOURNAL OF NANOPARTICLE RESEARCH
卷 16, 期 2, 页码 -

出版社

SPRINGER
DOI: 10.1007/s11051-014-2252-2

关键词

Solid lipid nanoparticle (SLN); Design of experiments (DOE); Topical delivery; Biomarker detection; Nanobiotechnology

资金

  1. Research and Exploratory Development Department, The Johns Hopkins University Applied Physics Laboratory, Laurel, Maryland

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Solid lipid nanoparticles (SLNs) are a promising platform for sensing in vivo biomarkers due to their biocompatibility, stability, and their ability to carry a wide range of active ingredients. The skin is a prominent target organ for numerous inflammatory and stress-related biomarkers, making it an excellent site for early detection of physiological imbalance and application of sensory nanoparticles. Though smaller particle size has generally been correlated with increased penetration of skin models, there has been little attention paid to the significance of other nanoparticle synthesis parameters with respect to their physical properties. In this study, we demonstrate the synthesis of sub-10 nm SLNs by the phase inversion temperature (PIT) method. These particles were specifically designed for topical delivery of hydrogen peroxide-detecting chemiluminescent dyes. A systematic design of experiments approach was used to investigate the role of the processing variables on SLN form and properties. The processing variables were correlated with the SLN properties (e.g., dye solubility, phase inversion temperature, particle size, polydispersity, melting point, and latent heat of melting). Statistical analysis revealed that the PIT method, while allowing total control over the thermal properties, resulted in well-controlled synthesis of ultra-small particles, while allowing great flexibility in the processing conditions and incorporated compounds.

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