Litcius/Paper detail

Optimised hybrid deep learning classification model for kidney stone diagnosis

Yael Jacob, J Bethanney Janney, Hemalatha RJ, S. Preethi

2025Results in Engineering9 citationsDOIOpen Access PDF

Abstract

• Hybrid Deep Learning Approach – Combines AlexNet for feature extraction and Gated Recurrent Unit (GRU) for classification to enhance kidney stone detection accuracy. • Hyperparameter Optimization – Utilizes the Elephant Herding Optimizer (EHO) to fine-tune model parameters, improving performance and efficiency. • Multiple Imaging Modalities – Supports CT scans, ultrasound scans, and Doppler scans , ensuring robust and accurate kidney stone detection. • Superior Performance Metrics – Achieves high precision, recall, accuracy, and F1-score , outperforming traditional deep learning models. • Enhanced Early Diagnosis – Improves the quality and reliability of automated kidney stone detection , enabling early medical intervention. • Comparative Validation – Demonstrates better results than conventional models through extensive evaluation and benchmarking. The kidney plays a vital role in maintaining homeostasis within the human body. In recent years, the prevalence of nephrolithiasis (kidney stone formation) characterized by the accumulation of crystalline solids within the renal system has emerged as a significant health concern. Early detection is critical for effective treatment and prevention of complications. Diagnostic imaging techniques such as computed tomography (CT), ultrasonography, and Doppler imaging are routinely employed for this purpose. To enhance the precision and reliability of early diagnosis, Deep Learning (DL) models are increasingly being integrated into the diagnostic workflow, offering superior accuracy through advanced image analysis and pattern recognition capabilities. The proposed work combines two deep learning models, AlexNet and Gated Recurrent Unit (GRU) for feature extraction and classification. These models are integrated to deliver optimal training parameter performance. An optimized AlexNet-GRU model is introduced in this work for detection of kidney stone, feature extraction, and classification. The Elephant Herding Optimizer (EHO) is utilized to fine-tune the hyperparameters of the AlexNet-GRU model. by performing this EHO fine tuning, the performance metrics of the proposed work have provided a high optimal result. Finally, the proposed evaluation metrics like precision, recall, accuracy, and F1 score are evaluated and compared with the traditional models to prove their efficient performances. The proposed model achieved a precision of 98.67 %, a recall of 97.68 %, an accuracy of 98.82 %, and an F1 score of 97.54 %.

Topics & Concepts

Deep learningArtificial intelligenceKidney stonesComputer scienceMachine learningMedicineInternal medicineAdvanced X-ray and CT ImagingDental Radiography and ImagingDigital Radiography and Breast Imaging