Pathological Analysis of Stress Urinary Incontinence in Females using Artificial Neural Networks
Mojtaba Barzegari, Bahman Vahidi, Mohammad Reza Safarinejad, Marzieh, Hashemipour

TL;DR
This study uses artificial neural networks to model urethral pressure in women with stress urinary incontinence, providing a more efficient clinical analysis tool and insights into age-related pressure variations.
Contribution
It introduces a neural network-based mathematical model to analyze urethral pressure, improving upon traditional methods for clinical diagnosis of SUI.
Findings
ANN model outperforms conventional mathematical methods
Identifies low-pressure zones in elderly women
Supports development of diagnostic assistance systems
Abstract
Objectives: To mathematically investigate urethral pressure and influencing parameters of stress urinary incontinence (SUI) in women, with focus on the clinical aspects of the mathematical modeling. Method: Several patients' data are extracted from UPP and urodynamic documents and their relation and affinities are modeled using an artificial neural network (ANN) model. The studied parameter is urethral pressure as a function of two variables: the age of the patient and the position in which the pressure was measured across the urethra (normalized length). Results: The ANN-generated surface, showing the relation between the chosen parameters and the urethral pressure in the studied patients, is more efficient than the surface generated by conventional mathematical methods for clinical analysis, with multi-sample analysis being obtained. For example, in elderly people, there are many…
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Taxonomy
TopicsPelvic floor disorders treatments · 3D Shape Modeling and Analysis
