Exploring the Effect of Image Enhancement Techniques with Deep Neural Networks on Direct Urinary System X-Ray (DUSX) Images for Automated Kidney Stone Detection

3Citations
Citations of this article
15Readers
Mendeley users who have this article in their library.

This article is free to access.

Abstract

In diagnosing kidney stone disease, clinical specialists often apply medical imaging techniques such as CT, X-Ray and US. Among these imaging techniques, X-Ray is frequently chosen as the primary examination method in emergency services due to its low cost, accessibility, and low radiation levels. However, interpreting the X-Ray images by inexperienced specialists can be challenging due to the low image quality and the presence of noise. In this study, we propose a computer-aided diagnosis system based on deep neural networks to assist clinical specialists in detecting kidney stones using Direct Urinary System X-Ray (DUSX) images. Firstly, in consultation with clinical specialists, we created a new dataset composed of 630 DUSX images and presented it publicly. We also defined preprocessing steps that incorporate image enhancement techniques such as GF, LoG, BF, HE, CLAHE, and CBC to enable deep neural networks to perceive the images more clearly. With these techniques, we considered the noise reduction in the DUSX images and enhanced the poor quality, especially in terms of contrast. For each preprocessing step, we created models to detect kidney stones using YOLOv4 and Mask R-CNN architectures, which are common CNN-based object detectors. We examined the effects of the preprocessing steps on these models. To the best of our knowledge, the combination of BF and CLAHE which is called CBC in this study, has not been applied before in the literature to enhance DUSX images. In addition, this study is the first in its field in which the YOLOv4 and Mask R-CNN architectures have been used for the detection of kidney stones. The experimental results demonstrated the most accurate method is the YOLOv4 model, which includes the CBC preprocessing step, as the result model. This model shows that the accuracy rate, precision, recall, and F1-score were found as 96.1%, 99.3% 96.5%, and 97.9% respectively in the test set. According to these performance metrics, we expect that the proposed model will help to reduce the unnecessary radiation exposure and associated medical costs that come with CT scans.

Cite

CITATION STYLE

APA

Kilic, U., Karabey Aksakalli, I., Tumuklu Ozyer, G., Aksakalli, T., Ozyer, B., & Adanur, S. (2023). Exploring the Effect of Image Enhancement Techniques with Deep Neural Networks on Direct Urinary System X-Ray (DUSX) Images for Automated Kidney Stone Detection. International Journal of Intelligent Systems, 2023. https://doi.org/10.1155/2023/3801485

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Save time finding and organizing research with Mendeley

Sign up for free