Walton S P, Stephanopoulos G N, Yarmush M L, Roth C M
Center for Engineering in Medicine/Surgical Services, Massachusetts General Hospital, Harvard Medical School and Shriners Burns Hospital, 55 Fruit Street/GRB1401, Boston, MA 02114, USA.
Biotechnol Bioeng. 1999 Oct 5;65(1):1-9.
Antisense oligonucleotides, which act through the pairing of complementary bases to an RNA target sequence, are showing great promise in research and clinical applications. However, the selection of effective antisense oligonucleotides has proven more difficult than initially presumed. We developed a prediction algorithm to identify those sequences with the highest predicted binding affinity for their target mRNA based on a thermodynamic cycle that accounts for the energetics of structural alterations in both the target mRNA and the oligonucleotide. The model was used to predict the binding affinity of antisense oligonucleotides complementary to the rabbit beta-globin (RBG) and mouse tumor necrosis factor-alpha (TNFalpha) mRNAs, for which large experimental datasets were available. Of the top ten candidates identified by the algorithm for the RBG mRNA, six were the most strongly binding sequences determined from an experimental assay. The prediction for the TNFalpha mRNA also identified high affinity sequences with approximately 60% accuracy. Computational prediction of antisense efficacy is more cost-efficient and faster than in vitro or in vivo selection and can potentially speed the development of sequences for both research and clinical applications.
反义寡核苷酸通过与RNA靶序列的互补碱基配对发挥作用,在研究和临床应用中显示出巨大潜力。然而,事实证明,选择有效的反义寡核苷酸比最初设想的要困难得多。我们开发了一种预测算法,基于一个热力学循环来识别那些对其靶mRNA具有最高预测结合亲和力的序列,该循环考虑了靶mRNA和寡核苷酸结构改变的能量学。该模型用于预测与兔β-珠蛋白(RBG)和小鼠肿瘤坏死因子-α(TNFα)mRNA互补的反义寡核苷酸的结合亲和力,针对这两种mRNA有大量的实验数据集。在该算法为RBG mRNA鉴定出的前十位候选序列中,有六个是实验测定确定的结合最强的序列。对TNFα mRNA的预测也以约60%的准确率识别出了高亲和力序列。反义效果的计算预测比体外或体内筛选更具成本效益且速度更快,并且有可能加速用于研究和临床应用的序列开发。