Objective: To investigate perioperative complications of mesh removal performed in the operating room from a single-site, tertiary care center with a large volume of referrals for mesh removal and to compare the morbidity associated with single-compartment mesh removal compared with removal from multiple vaginal compartments.
Methods: A retrospective review was performed on all patients who underwent mesh removal from January 2008 to April 2014. Patients were identified based on Current Procedural Terminology codes for removal of vaginal mesh or sling. Summary statistics were calculated for the patient population. Complications were compared between single-compartment mesh removal surgery and multicompartment mesh removal surgery. A P value of <.05 was considered significant for all analyses.
Results: During a 75-month period, a total of 398 procedures were performed for the removal of vaginally placed mesh. A total of 326 (82%) patients underwent single-compartment surgery, 48 (12%) underwent multicompartment surgery, and in 26 (6%), the type of surgery was unclear. The indications for mesh removal included: pain (63%), dyspareunia (57%), mesh exposure (54%), and voiding dysfunction (39%). The mean length of mesh removed was 4 cm (standard deviation±2.8). Those with multicompartment surgery had approximately three times higher estimated blood loss compared with single-compartment surgery (P<.001). The odds of blood transfusion after multicompartment surgery were more than nine times higher than the odds of transfusion after a single-compartment surgery (odds ratio 9.7, 95% confidence interval 2.1-44.6; P<.01).
Conclusion: Bleeding complications are higher with concomitant removal of mesh from multiple vaginal compartments.
Level Of Evidence: III.
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http://dx.doi.org/10.1097/AOG.0000000000000870 | DOI Listing |
Vet Surg
January 2025
University Equine Hospital, Swedish University of Agricultural Sciences, Uppsala, Sweden.
Objectives: To report the management and outcomes of five horses with ear skin defects treated with the use of full-thickness mesh grafts and full-thickness Meek micrografts.
Animals: Five horses with acute or granulating pinna skin wounds.
Study Design: Short case series.
Background: The number of individuals living alone with dementia is increasing throughout the world, and they have unique needs that are poorly understood. The aim of this integrative review was to understand the characteristics, needs, and perspectives of individuals living alone with dementia as well as the available community resources to guide future research and clinical practice.
Methods: Electronic (PubMed, CINAHL, and PsycINFO) and manual searches were utilized to identify articles using MeSH terms.
Indian J Ophthalmol
February 2025
Department of Ophthalmology, Faculty of Medicine, Fayoum University, Al Fayoum, Egypt.
Purpose: There are no universally established guidelines for material selection in orbital wall fracture reconstruction. With an increasing preference for permanent implants, this study aimed to compare the long-term clinical outcomes of three different non-resorbable materials in reconstructing isolated orbital floor fractures.
Design: A retrospective, interventional comparative study.
Hernia
January 2025
Department of Infectious Diseases, Hospices Civils de Lyon, Service des Maladies Infectieuses et Tropicales, 103 Grande Rue de la Croix-Rousse, Lyon, 69004, France.
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Methods: Patients with abdominal mesh infection were included in a retrospective observational cohort (2010-2023).
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