Medical Diagnosis Cloud Model for Detection of Kidney Diseases

the paper discusses detection of Chronic Kidney Disease (CKD) and Renal Cell Cancer (RCC). Detection is done by analyzing ultrasound images of patients. For CKD feature extraction, we apply contour detection on kidney's region of interest (ROI) and in RCC detection, a group of features (feature vector) is used for feature extraction. Later the data is deployed on cloud to ease users. This study will help patients, health organizations, doctor's etc. to directly communicate through internet and access medical repositories on cloud systems. This study will also provide an outline for improving healthcare data for effective storage to provide remote access.

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