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Improving the accuracy of the structure prediction of the third hypervariable loop of the heavy chains of antibodies

机译:提高抗体重链第三高变环的结构预测准确性

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Motivation: Antibodies are able to recognize a wide range of antigens through their complementary determining regions formed by six hypervariable loops. Predicting the 3D structure of these loops is essential for the analysis and reengineering of novel antibodies with enhanced affinity and specificity. The canonical structure model allows high accuracy prediction for five of the loops. The third loop of the heavy chain, H3, is the hardest to predict because of its diversity in structure, length and sequence composition.Results: We describe a method, based on the Random Forest automatic learning technique, to select structural templates for H3 loops among a dataset of candidates. These can be used to predict the structure of the loop with a higher accuracy than that achieved by any of the presently available methods. The method also has the advantage of being extremely fast and returning a reliable estimate of the model quality
机译:动机:抗体能够通过由六个高变环形成的互补决定区来识别多种抗原。预测这些环的3D结构对于分析和重建具有增强的亲和力和特异性的新型抗体至关重要。规范的结构模型允许对五个回路进行高精度预测。重链的第三个环H3由于结构,长度和序列组成的多样性而最难预测。结果:我们描述了一种基于随机森林自动学习技术的方法,用于选择H3环的结构模板在候选人数据集中。这些可以用来以比通过任何当前可用方法获得的精度更高的精度来预测回路的结构。该方法还具有非常快的优点,并且可以返回模型质量的可靠估计值

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