Ritesh18117 / Detection-and-Classification-of-Kidney-Diseases-Using-CT-Scanned-ImageLinks
Classification of Kidney Disease using CNN model in Deep Learning to classify kidney disease among Cyst, Stone, Tumor and Normal Kidney in Jupyter Notebook.
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