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A genetic algorithm for RNA secondary structure prediction using stacking energy thermodynamic models

机译:基于堆叠能量热力学模型的RNA二级结构预测遗传算法

摘要

RNA structure is an important field of study. Predicting structure can overcome many of the issues with physical structure determination. Structure prediction can be simplified as an energy minimization problem. Common optimization techniques are the DPA and the GA. RnaPredict is a GA used for RNA secondary structure prediction using energy minimization and is evolved from Dr. Wieseu27s lab. Selection, recombination, mutation, and elitism are used to optimize the candidate structures in a population. Candidate solutions get closer to the global energy optimum with each generation. This thesis focuses on the addition of a hydrogen bond model and two stacking energy models, and studies their relative merits. It also studies different types of encoding used in the GA. The prediction accuracy is compared with known structures, the Nussinov DPA predictions and the mfold DPA predictions. RnaPredict is able to predict more accurate structures than Nussinov and performs similarly to mfold.
机译:RNA结构是重要的研究领域。预测结构可以克服物理结构确定中的许多问题。结构预测可以简化为能量最小化问题。常见的优化技术是DPA和GA。 RnaPredict是一种用于通过能量最小化来预测RNA二级结构的GA,它是从Wiese博士的实验室发展而来的。选择,重组,突变和精英被用来优化群体中的候选结构。候选解决方案的每一代都接近全球最佳能源。本文着重研究了氢键模型和两个堆积能模型的相加,并研究了它们的相对优点。它还研究了GA中使用的不同类型的编码。将预测精度与已知结构,Nussinov DPA预测和mfold DPA预测进行比较。与Nussinov相比,RnaPredict能够预测更准确的结构,并且与mfold相似。

著录项

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    Deschenes Alain;

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  • 年度 2005
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  • 原文格式 PDF
  • 正文语种 English
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