Literature DB >> 31411620

Disassembling the complexity of mucus barriers to develop a fast screening tool for early drug discovery.

Daniela Peneda Pacheco1, Cosmin Stefan Butnarasu2, Francesco Briatico Vangosa1, Laura Pastorino3, Livia Visai4, Sonja Visentin2, Paola Petrini1.   

Abstract

Mucus is a natural barrier with a protective role that hinders drug diffusion, representing a steric and interactive barrier to overcome for an effective drug delivery to target sites. In diseases like cystic fibrosis (CF), pulmonary mucus exhibits altered features, which hamper clearance mechanisms and drug diffusion, ultimately leading to lung failure. Effectively modelling the passage through mucus still represents an unmet challenge. An airway CF mucus model is herein proposed to disassemble the complexity of the mucus barrier following a modular approach. A hydrogel, mainly composed of mucin in an alginate (Alg) network, is proposed to specifically model the chemical-physical properties of CF mucus. The steric retention of pathological mucus was reproduced by targeting its mesh size (approximately 50 nm) and viscoelastic properties. The interactive barrier was reproduced by a composition inspired from the CF mucus. Optimized mucus models, composed of 3 mg ml-1 Alg and 25 mg ml-1 mucin, exhibited a G' increasing from ∼21.2 to 55.2 Pa and a G'' ranging from ∼5.26 to 28.8 Pa in the frequency range of 0.1 to 20 Hz. Drug diffusion was tested using three model drugs. The proposed mucus model was able to discriminate between the mucin-drug interaction and the steric barrier of a mucus layer with respect to the parallel artificial membrane permeability (PAMPA) that models the phospholipidic cell membrane, the state-of-the-art screening tool for passive drug diffusion. The mucus model can be proposed as an in vitro tool for early drug discovery, representing a step forward to model the mucus layer. Additionally, the proposed methodology allows to easily include other molecules present within mucus, as relevant proteins, lipids and DNA.

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Year:  2019        PMID: 31411620     DOI: 10.1039/c9tb00957d

Source DB:  PubMed          Journal:  J Mater Chem B        ISSN: 2050-750X            Impact factor:   6.331


  4 in total

1.  Precise Targeting of miRNA Sites Restores CFTR Activity in CF Bronchial Epithelial Cells.

Authors:  Chiara De Santi; Elena Fernández Fernández; Rachel Gaul; Sebastian Vencken; Arlene Glasgow; Irene K Oglesby; Killian Hurley; Finn Hawkins; Nilay Mitash; Fangping Mu; Rana Raoof; David C Henshall; Meritxell B Cutrona; Jeremy C Simpson; Brian J Harvey; Barry Linnane; Paul McNally; Sally Ann Cryan; Ronan MacLoughlin; Agnieszka Swiatecka-Urban; Catherine M Greene
Journal:  Mol Ther       Date:  2020-02-06       Impact factor: 11.454

2.  Characterization of an engineered mucus microenvironment for in vitro modeling of host-microbe interactions.

Authors:  Andy J Huang; Courtney L O'Brien; Nicholas Dawe; Anas Tahir; Alison J Scott; Brendan M Leung
Journal:  Sci Rep       Date:  2022-04-01       Impact factor: 4.379

Review 3.  The Open Challenge of in vitro Modeling Complex and Multi-Microbial Communities in Three-Dimensional Niches.

Authors:  Martina Oriano; Laura Zorzetto; Giuseppe Guagliano; Federico Bertoglio; Sebastião van Uden; Livia Visai; Paola Petrini
Journal:  Front Bioeng Biotechnol       Date:  2020-10-20

4.  Green Approach to Develop Bee Pollen-Loaded Alginate Based Nanofibrous Mat.

Authors:  Ayben Pakolpakçıl; Zbigniew Draczynski
Journal:  Materials (Basel)       Date:  2021-05-24       Impact factor: 3.623

  4 in total

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