4.7 Article

Preparation and characterization of directly compactible layer-by-layer nanocoated cellulose

期刊

INTERNATIONAL JOURNAL OF PHARMACEUTICS
卷 404, 期 1-2, 页码 57-65

出版社

ELSEVIER
DOI: 10.1016/j.ijpharm.2010.10.056

关键词

Layer-by-layer; Self-assembling; Nanocoating; Cellulose; Direct compression

资金

  1. University of Wisconsin
  2. North-West University
  3. Louisiana Tech University
  4. National Research Foundation of South Africa (NRF)

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Microcrystalline cellulose is a commonly used direct compression tablet diluent and binder. It is derived from purified a-cellulose in an environmentally unfriendly process that involves mineral acid catalysed hydrolysis. In this study Kraft softwood fibers was nanocoated using a layer-by-layer self-assembling process. Powder flow and compactibility results showed that the application of nano-thin polymer layers on the fibers turned non-flowing, non-compacting cellulose into powders that can be used in the direct compression of tablets. The powder flow properties and tableting indices of compacts compressed from these nanocoated microfibers were similar or better than that of directly compactible microcrystalline cellulose powders. Cellulose microfibers coated with four PSS/PVP bilayers had the best compaction properties while still producing tablets that were able to absorb water and disintegrate and did not retard the dissolution of a model drug acetaminophen. The advantages of nanocoating rather than traditional pharmaceutical coating are that it add less than 1% to the weight of the fibers and allows control of the molecular properties of the surface and the thickness of the coat to within a few nanometers. This process is potentially friendlier to the environment because of the type and quantity of materials used. Also, it does not involve acid-catalyzed hydrolysis and neutralization of depolymerized cellulose. (C) 2010 Elsevier B.V. All rights reserved.

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