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Protein structure prediction aided by geometrical and probabilistic constraints
Authors:Porwal Gaurav  Jain Swapnil  Babu S Dhilly  Singh Deepak  Nanavati Hemant  Noronha Santosh
Affiliation:Department of Chemical Engineering, IIT Bombay, Powai, Mumbai 400076, India.
Abstract:Database-assisted ab initio protein structure prediction methods have exhibited considerable promise in the recent past, with several implementations being successful in community-wide experiments (CASP). We have employed combinatorial optimization techniques toward solving the protein structure prediction problem. A Monte Carlo minimization algorithm has been employed on a constrained search space to identify minimum energy configurations. The search space is constrained by using radius of gyration cutoffs, the loop backbone dihedral probability distributions, and various secondary structure packing conformations. Simulations have been carried out on several sequences and 1000 conformations have been initially generated. Of these, 50 best candidates have then been selected as probable conformations. The search for the optimum has been simplified by incorporating various geometrical constraints on secondary structural elements using distance restraint potential functions. The advantages of the reported methodology are its simplicity, and modifiability to include other geometric and probabilistic restraints.
Keywords:protein structure prediction  Monte Carlo minimization  distance restraints  loop backbone probability distribution  secondary structure packing
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