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Augmentation cystoplasty and extracellular matrix scaffolds: an ex vivo comparative study with autogenous detubularised Ileum

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posted on 2022-08-18, 07:56 authored by Niall Francis Davis, Rory Mooney, Anthony Callanan, Hugh D. Flood, TIM MC GLOUGHLINTIM MC GLOUGHLIN
Background: Augmentation cystoplasty (AC) with autogenous ileum remains the current gold standard surgical treatment for many patients with end-stage bladder disease. However, the presence of mucus-secreting epithelium within the bladder is associated with debilitating long-term complications. Currently, decellularised biological materials derived from porcine extracellular matrix (ECM) are under investigation as potential augmentation scaffolds. Important biomechanical limitations of ECMs are decreased bladder capacity and poor compliance after implantation. Methodology/Principal Findings: In the present ex vivo study a novel concept was investigated where a two-fold increase in ECM scaffold surface-area relative to the resected ileal segment was compared in ovine bladder models after AC. Results showed that bladder capacity increased by 4064% and 37611% at 10 mmHg and compliance by 40.464% and 39.766% (DP = 0–10 mmHg) after AC with ileum and porcine urinary bladder matrix (UBM) respectively (p,0.05). Comparative assessment between ileum and UBM demonstrated no significant differences in bladder capacity or compliance increases after AC (p.0.05). Conclusions: These findings may have important clinical implications as metabolic, infective and malignant complications precipitated by mucus-secreting epithelium are potentially avoided after augmentation with ECM scaffolds.

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Publication

PLoS ONE;6 (5)

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Public Library of Science

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peer-reviewed

Language

English

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    University of Limerick

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