Improving prediction of secondary structure, local backbone angles and solvent accessible surface area of proteins by iterative deep learning
Rhys Heffernan(Griffith University), Yaoqi Zhou(China University of Geosciences (Beijing)), Alok Sharma(Griffith University), Abdul Sattar(Lahore Garrison University), James Lyons(Griffith University), Kuldip K. Paliwal(Griffith University), Abdollah Dehzangi(Rutgers, The State University of New Jersey), Jihua Wang(Institute of Biophysics), Yuedong Yang(Guangzhou Experimental Station)
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