Renal Vision Advanced Kidney Disease Detection Using Attention-Powered Ensemble CNNs
DOI:
https://doi.org/10.63163/jpehss.v3i1.114Keywords:
Machine Learning, CNNs, the Hyperparameter Optimizing, Medical Image Analysis, and K-Fold Cross-Validation, Ensemble CNNs, Attention Model, Hybrid modelAbstract
The kidneys eliminate waste, pollutants, and unnecessary water from the bloodstream, which
helps to sustain general health. Impaired kidney functioning can have solemn effects for
someone's health. Machine learning (ML) approaches have revealed to be operative tools for
enlightening clinical decision-making and reducing ambiguity. However, current approaches for
detecting kidney disease are frequently imprecise because to biological characteristic constraints.
This study delivers a progressive machine learning model that forecasts renal illness by
combining preprocessing procedures, hyper parameter optimization, feature selection and
Machine Learning algorithms. To improve detection accuracy, a Convolutional Neural Network
(CNN) is used in aggregation with an attention mechanism. The model identifies kidney
anomalies, for example cysts, stones, and cancers, as markers of renal illness. The model was
validated using k-fold cross-validation, and the dataset contained around 4000 photos (1000 in
each class). The suggested CNN with concentration model has a remarkable accuracy of 99.87%
in diagnosing various kidney disease kinds. This version simplifies the language and simplifies
the process while leaving the important elements intact.