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Department of computer science and engineering, Paavai Engineering College, Paavai Institutions, Paavai Nagar, NH-7, Pachal, Namakkal-637018, Tamilnadu, India.
The detection of kidney stones using ultrasound image processing is a complex task due to the presence of speckle noise, low contrast, and different shapes of kidney stones. Accurate segmentation and classification of kidney stones are crucial for effective diagnosis and treatment of kidney stone diseases. In this paper, an automated framework for the detection of kidney stones is proposed using a modified U-Net-based deep learning technique. In this framework, image preprocessing techniques such as median filtering, Gabor filtering, and histogram equalization are applied for image enhancement. For segmentation, a modified U-Net technique is applied, followed by feature extraction using wavelet transforms. For classification, a CNN technique is applied. Experimental results show improved accuracy, precision, recall, and F1-score compared with traditional techniques.
Kidney stone diseases are among the most common urologic pathologies worldwide, with millions of cases reported annually. Kidney stones are solid concretions formed from the concentration of salts and minerals in the kidneys. They present a significant problem when they are left untreated. Therefore, early detection is critical for the prevention of complications during treatment.
The use of ultrasound imaging is common for the detection of kidney stones. Ultrasound imaging is non-invasive, cost-effective, and safe for the patient. However, the images provided by ultrasound have inherent limitations, which make the detection of kidney stones difficult. The limitations include speckle noise, contrast, and boundary definition.
Deep learning techniques have been reported to greatly contribute to the improvement of medical image analysis. Convolutional Neural Networks (CNNs) and U-Net have been reported to perform well for image segmentation and classification. A modified U-Net-based system is presented for the evaluation of kidney stone detection.
LITERATURE SURVEY
Kidney stone diseases are among the most common urologic pathologies worldwide, with millions of cases reported annually. Kidney stones are solid concretions formed from the concentration of salts and minerals in the kidneys. They present a significant problem when they are left untreated. Therefore, early detection is critical for the prevention of complications during treatment.
The use of ultrasound imaging is common for the detection of kidney stones. Ultrasound imaging is non-invasive, cost-effective, and safe for the patient. However, the images provided by ultrasound have inherent limitations, which make the detection of kidney stones difficult. The limitations include speckle noise, contrast, and boundary definition.
Deep learning techniques have been reported to greatly contribute to the improvement of medical image analysis. Convolutional Neural Networks (CNNs) and U-Net have been reported to perform well for image segmentation and classification. A modified U-Net-based system is presented for the evaluation of kidney stone detection.
PROBLEM STATEMENT
Manual analysis of ultrasound images is time-consuming and highly dependent on the expertise of radiologists. The presence of noise, low contrast, and varying stone sizes makes detection difficult. Small stones are often missed, leading to inaccurate diagnosis.
Therefore, there is a need for an automated system that can:
PROPOSED SYSTEM
The proposed system consists of the following stages:
SYSTEM ARCHITECTURE
Input Image → Preprocessing → U-Net Segmentation → Feature Extraction → CNN Classification → Output
EXPERIMENTAL RESULTS AND DISCUSSION
|
Method |
Accuracy |
Precision |
Recall |
F1-Score |
|
Traditional Methods |
85.2% |
83.5% |
82.1% |
82.8% |
|
CNN Only |
91.3% |
90.2% |
89.5% |
89.8% |
|
Proposed U-Net + CNN |
96.5% |
95.2% |
94.8% |
95.0% |
ADVANTAGES
The proposed system has many advantages. Some of these advantages are related to the accuracy of the proposed system, reduction in manual work, faster diagnosis, and greater reliability. Moreover, the proposed system is capable.
CONCLUSION
This paper presents an automated kidney stone detection system using deep learning techniques. The integration of preprocessing, segmentation, and classification improves performance and reliability. The system can assist healthcare professionals in accurate diagnosis and treatment planning.
FUTURE WORK
Future work includes integration with real-time systems, use of larger datasets, and deployment as a web-based or mobile application. Advanced models such as transformers can also be explored.Selection: Highlight all author and affiliation lines.
REFERENCES
G. Siva Prakash*, E. Elanchezlian, Automatic Kidney Stone Segmentation And Evaluation With Modified U-Net Based Deep Learning Models, Int. J. Sci. R. Tech., 2026, 3 (4), 1211-1213. https://doi.org/10.5281/zenodo.19922037
10.5281/zenodo.19922037