A Comprehensive Computer-Assisted Diagnosis System for Early Assessment of Renal Cancer Tumors
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Ayman El-Baz | Mohammed Ghazal | Ahmed Soliman | Ahmed Shaffie | Mohamed Shehata | Norah Saleh Alghamdi | Hadil Abu Khalifeh | Ahmed Abdel Khalek Abdel Razek | Reem Salim | Ahmed Alksas | Rasha T. Abouelkheir | Ahmed Elmahdy | A. El-Baz | A. Razek | M. Shehata | M. Ghazal | A. Soliman | A. Elmahdy | Ahmed Shaffie | R. Abouelkheir | N. Alghamdi | Ahmed Alksas | Reem Salim | A. Shaffie | A. Alksas | H. A. Khalifeh
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