A Novel Ensemble-Based Deep Learning Model with Explainable AI for Accurate Kidney Disease Diagnosis
Chronic Kidney Disease (CKD) represents a significant global health challenge, characterized by the progressive decline in renal function, leading to the accumulation of waste products and disruptions in fluid balance within the body. Given its pervasive impact on public health, there is a pressing...
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Zusammenfassung: | Chronic Kidney Disease (CKD) represents a significant global health
challenge, characterized by the progressive decline in renal function, leading
to the accumulation of waste products and disruptions in fluid balance within
the body. Given its pervasive impact on public health, there is a pressing need
for effective diagnostic tools to enable timely intervention. Our study delves
into the application of cutting-edge transfer learning models for the early
detection of CKD. Leveraging a comprehensive and publicly available dataset, we
meticulously evaluate the performance of several state-of-the-art models,
including EfficientNetV2, InceptionNetV2, MobileNetV2, and the Vision
Transformer (ViT) technique. Remarkably, our analysis demonstrates superior
accuracy rates, surpassing the 90% threshold with MobileNetV2 and achieving
91.5% accuracy with ViT. Moreover, to enhance predictive capabilities further,
we integrate these individual methodologies through ensemble modeling,
resulting in our ensemble model exhibiting a remarkable 96% accuracy in the
early detection of CKD. This significant advancement holds immense promise for
improving clinical outcomes and underscores the critical role of machine
learning in addressing complex medical challenges. |
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DOI: | 10.48550/arxiv.2412.09472 |