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A Boltzmann filter improves the prediction of RNA folding pathways in a massively parallel genetic algorithm

  1. Author:
    Wu, J. C.
    Shapiro, B. A.
  2. Author Address

    Wu JC NCI, Frederick Canc Res & Dev Ctr, Sci Applicat Int Corp, LECB Frederick, MD 21702 USA NCI, Frederick Canc Res & Dev Ctr, Sci Applicat Int Corp, LECB Frederick, MD 21702 USA NCI, Frederick Canc Res & Dev Ctr, Image Proc Sect, Lab Expt & Computat Biol,Div Basic Sci,NIH Frederick, MD 21702 USA
    1. Year: 1999
  1. Journal: Journal of Biomolecular Structure & Dynamics
    1. 17
    2. 3
    3. Pages: 581-595
  2. Type of Article: Article
  1. Abstract:

    RNA folding using the massively parallel genetic algorithm (GA) has been enhanced by the addition of a Boltzmann filter. The filter uses the Boltzmann probability distribution in conjunction with Metropolis' relaxation algorithm. The combination of these two concepts within the GA's massively parallel computational environment helps guide the genetic algorithm to more accurately reflect RNA folding pathways and thus final solution structures. Helical regions (base-paired stems) now form in the structures based upon the stochastic properties of the thermodynamic parameters that have been determined from experiments. Thus, structural changes occur based upon the relative energetic impact that the change causes rather than just geometric conflicts alone. As a result, when comparing the predictions to phylogenetically determined structures, over multiple runs, fewer false-positive stems (predicted incorrectly) and more true-positive stems (predicted correctly) are generated, and the total number of predicted stems representing a solution is diminished. In addition, the significance (rate of occurrence) of the true-positive stems is increased. Thus, the predicted results more accurately reflect phylogenetically determined structures. [References: 29]

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