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Applying a neural network to predict the thermodynamic parameters for an expanded nearest-neighbor model
Authors:Najafabadi Hamed Shateri  Goodarzi Hani  Torabi Noorossadat  Banihosseini Setareh Sadat
Institution:Department of Biotechnology, Faculty of Science, University of Tehran, Enghelab Ave., Tehran, Iran.
Abstract:Predicting the secondary and tertiary structure of RNAs largely depends on our capabilities in estimating the thermodynamics of RNA duplexes. In this work, an expanded nearest-neighbor model, designated INN-48, is established. The thermodynamic parameters of this model are predicted using both multiple linear regression analysis and neural network analysis. It is suggested that due to the increase in the number of parameters and the insufficiency of the existing data, neural network analysis results in more reliable predictions. Furthermore, it is suggested that INN-48 can be used to estimate the thermodynamics of RNA duplex formation for longer sequences, whereas INN-HB, the previous model on which INN-48 is based, can be used for short sequences.
Keywords:Free energy  Nearest-neighbor  Neural network  RNA duplex  Triplet
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