Improving Protein Secondary-Structure Prediction by Predicting Ends of Secondary-Structure Segments

U. Midic, Dunker Ak, Z. Obradovic
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引用次数: 7

Abstract

Motivated by known preferences for certain amino acids in positions around a-helices, we developed neural network-based predictors of both N and C a-helix ends, which achieved about 88% accuracy. We applied a similar approach for predicting the ends of three types of secondary structure segments. The predictors for the ends of H, E and C segments were then used to create input for protein secondary-structure prediction. By incorporating this new type of input, we significantly improved the basic one-stage predictor of protein secondary structure in terms of both per-residue (Q3) accuracy (+0.8%) and segment overlap (SOV3) measure (+1.4).
通过预测蛋白质二级结构片段的末端来提高蛋白质二级结构的预测
由于人们对a-螺旋周围某些氨基酸的偏好,我们开发了基于神经网络的N和C -螺旋末端预测器,准确率达到了88%左右。我们应用了类似的方法来预测三种类型的二级结构段的末端。然后使用H、E和C段末端的预测因子为蛋白质二级结构预测创建输入。通过引入这种新型输入,我们在每残基(Q3)准确度(+0.8%)和片段重叠(SOV3)测量(+1.4)方面显著提高了蛋白质二级结构的基本单阶段预测器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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