Manara - Qatar Research Repository
Browse

Automated detection of posterior urethral valves in voiding cystourethrography images: A novel AI-Based pipeline for enhanced diagnosis and classification

journal contribution
submitted on 2024-12-31, 08:19 and posted on 2024-12-31, 08:21 authored by Saidul Kabir, Rusab Sarmun, Elias Ramírez-Velázquez, Anil Takvani, Mansour Ali, Muhammad E.H. Chowdhury, Tariq O. Abbas

Introduction

Posterior Urethral Valves (PUV) are rare congenital anomalies of the male urinary tract that can lead to urethral obstruction and increased risk of kidney disease. Traditional diagnosis relies on subjective interpretation of imaging techniques. This study aimed to automate and increase accuracy of PUV detection in voiding cystourethrography (VCUG) images using an AI-based pipeline. The main objective was to detect presence of PUV based on urethral ratio calculated automatically from segmented urethra region.

Methods

A total of 181 VCUG images were evaluated by 9 clinicians to determine presence of PUV. Various different encoders (DenseNet, MobileNet, ResNet and VGG) were combined with Unet and Unet++ architectures to segment the urethra region. Some preprocessing and postprocessing steps were investigated to improve segmentation performance. Urethral ratios were automatically calculated with image processing and morphological operations. Finally, samples were classified between PUV or non PUV based on urethral ratio.

Results

An overall classification accuracy of 81.52 % was achieved between PUV and non PUV cases. DenseNet201 combined with Unet achieved the best overall segmentation performance (Dice score coefficient 66.15 %). Optimal cut-off value of urethral ratio for PUV detection was determined as 2.01.

Conclusion

PUV detection from VCUG images through automated segmentation and processing can reduce subjectivity and decrease physician workloads. The proposed approach can serve as a foundation for future efforts to fully automate PUV diagnosis and follow-up.

Other Information

Published in: Computers in Biology and Medicine
License: http://creativecommons.org/licenses/by/4.0/
See article on publisher's website: https://dx.doi.org/10.1016/j.compbiomed.2024.109509

Funding

Open Access funding provided by the Qatar National Library.

History

Language

  • English

Publisher

Elsevier

Publication Year

  • 2024

License statement

This Item is licensed under the Creative Commons Attribution 4.0 International License.

Institution affiliated with

  • Sidra Medicine
  • Qatar University
  • Qatar University Health - QU
  • College of Medicine - QU HEALTH
  • College of Engineering - QU
  • Weill Cornell Medicine - Qatar