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Sherif M. Hanafy | Umair bin Waheed | Khalid L. Alsamadony | Ertugrul U. Yildirim | Guenther Glatz | U. Waheed | S. Hanafy | G. Glatz | E. U. Yildirim | K. Alsamadony
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