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Roi segmentation and morphological analysis of kidney stone detection

Author: 
S. Sangeetha, S. Saiteja, P. Laxmi Prasanna, P. Meghana, M. Abhilash and Dr. Nellutla Sasikala
Subject Area: 
Physical Sciences and Engineering
Abstract: 

Kidney stone detection is crucial for timely diagnosis and treatment of urological disorders. Thisstudy presents a detailed approach combining Region of Interest (ROI) segmentation and morphological analysis to enhance the accuracy and efficiency of kidney stone detection. The first stage of our method involves ROI segmentation, where advanced image processing techniques such as convolutional neural networks (CNNs) or watershed algorithms are employed to isolate the kidney region within medical images, typically obtained through computed tomography (CT) scans. This step ensures focused analysis on the relevant anatomical area, minimizing computational complexity and false positives. Following ROI segmentation, morphological analysis is conducted to characterize the detected kidney stones. Morphological features such as shape, size, volume, and spatial distribution are extracted to provide comprehensive information about the stones. Mathematical morphology operations, including erosion, dilation, and skeletonization, are applied to accurately delineate the boundaries and internal structure of the stones. Furthermore, statistical analysis and machine learning techniques may be employed to quantify and classify the morphological characteristics of kidney stones, facilitating their classification into different types (e.g., calcium oxalate, uric acid) and aiding in treatment planning. Experimental evaluation of the proposed approach is conducted using a dataset comprising CT scans of patients with confirmed kidney stones. Performance metrics such as sensitivity, specificity, and accuracy are computed to assess the method's effectiveness in detecting and characterizing kidney stones compared to existing approaches. Results demonstrate the superior performance of the proposed method in terms of both detection accuracy and computational efficiency. The comprehensive analysis provided by the combined ROI segmentation and morphological analysis enables clinicians to make informed decisions regarding the diagnosis and management of kidney stone-related conditions. In conclusion, the proposed approach offers a valuable tool for improving the diagnosis and treatment of kidney stones, ultimately enhancing patient care in the field of urology.

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