Ding Y, Lawrence C E
Division of Molecular Medicine, Wadsworth Center, New York State Department of Health, Albany, NY 12201-0509, USA.
Nucleic Acids Res. 2001 Mar 1;29(5):1034-46. doi: 10.1093/nar/29.5.1034.
Single-stranded regions in RNA secondary structure are important for RNA-RNA and RNA-protein interactions. We present a probability profile approach for the prediction of these regions based on a statistical algorithm for sampling RNA secondary structures. For the prediction of phylogenetically-determined single-stranded regions in secondary structures of representative RNA sequences, the probability profile offers substantial improvement over the minimum free energy structure. In designing antisense oligonucleotides, a practical problem is how to select a secondary structure for the target mRNA from the optimal structure(s) and many suboptimal structures with similar free energies. By summarizing the information from a statistical sample of probable secondary structures in a single plot, the probability profile not only presents a solution to this dilemma, but also reveals 'well-determined' single-stranded regions through the assignment of probabilities as measures of confidence in predictions. In antisense application to the rabbit beta-globin mRNA, a significant correlation between hybridization potential predicted by the probability profile and the degree of inhibition of in vitro translation suggests that the probability profile approach is valuable for the identification of effective antisense target sites. Coupling computational design with DNA-RNA array technique provides a rational, efficient framework for antisense oligonucleotide screening. This framework has the potential for high-throughput applications to functional genomics and drug target validation.
RNA二级结构中的单链区域对于RNA-RNA和RNA-蛋白质相互作用至关重要。我们基于一种用于采样RNA二级结构的统计算法,提出了一种预测这些区域的概率分布图方法。对于预测代表性RNA序列二级结构中系统发育确定的单链区域,概率分布图比最小自由能结构有显著改进。在设计反义寡核苷酸时,一个实际问题是如何从最优结构和许多具有相似自由能的次优结构中为目标mRNA选择一种二级结构。通过在单个图中总结来自可能二级结构统计样本的信息,概率分布图不仅解决了这一困境,还通过分配概率作为预测置信度的度量,揭示了“确定良好”的单链区域。在针对兔β-珠蛋白mRNA的反义应用中,概率分布图预测的杂交潜力与体外翻译抑制程度之间存在显著相关性,这表明概率分布图方法对于识别有效的反义靶位点很有价值。将计算设计与DNA-RNA阵列技术相结合,为反义寡核苷酸筛选提供了一个合理、高效的框架。该框架具有在功能基因组学和药物靶点验证中进行高通量应用的潜力。