基于集成学习和数据过采样的rna结合蛋白序列预测方法

Xu Wang, Shunfang Wang
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引用次数: 0

摘要

RNA结合蛋白在转录后的过程中发挥重要作用,识别特殊的RNA结合结构域并与RNA相互作用。虽然提出了许多计算方法,但大多数方法都存在特征不足和样本不平衡的问题。本文提出了一个由4个基本分类器和1个元分类器组成的叠加分类模型。在丰富特征的同时,从不同的特征表达方法中提取尽可能多的信息。我们使用二肽分布矩阵来补充氨基酸组成中缺失的二肽位置信息。采用滑动窗口法平衡正负样本,序列长度分布更加合理。结果表明,叠加分类模型对rna结合蛋白序列预测的准确性有一定的提高。同时,二肽分布矩阵中包含的位置信息比氨基酸组成信息表现出更优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RNA-binding protein sequence prediction method based on ensemble learning and data over-sampling
RNA binding proteins play an important role in the process of post-transcription, identifying special RNA binding domains and interacting with RNA. Although many calculation methods have been proposed, most of them have the problems of insufficient features and unbalanced samples. This paper proposes a Stacking classification model composed of 4 base classifiers and 1 meta classifier. While enriching features, it extracts as much information as possible from different feature expression methods. We use the dipeptide distribution matrix to supplement the missing dipeptide position information in the amino acid composition. The sliding window method is used to balance the positive and negative samples, and the sequence length distribution is more reasonable. The results show that the Stacking classification model has a certain improvement in the accuracy of RNA-binding protein sequence prediction. At the same time, the position information contained in the dipeptide distribution matrix shows more excellent performance than amino acid composition information.
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