Determining Optimal Features for Predicting Type IV Secretion System Effector Proteins for Coxiella burnetii

Zhila Esna Ashari Esfahani, K. Brayton, S. Broschat
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引用次数: 5

Abstract

Type IV secretion systems (T4SS) are constructed from multiple protein complexes that exist in some types of bacterial pathogens and are responsible for delivering type IV effector proteins into host cells. Effectors target eukaryotic cells and try to manipulate host cell processes and the immune system of the host. Some work has been done to validate effectors experimentally, and recently a few scoring and machine learning-based methods have been developed to predict effectors from whole genome sequences. However, different types of features have been suggested to be effective. In this work, we gathered the features proposed in pre-vious reports and calculated their values for a dataset of effectors and non-effectors of Coxiella burnetii. Then we ranked the features based on their importance in classifying effectors and non-effectors to determine the set of optimal features. Finally, a Support Vector Machine model was developed to test the optimal features by comparing them to a set of features proposed in a previous study. The outcome of the comparison supports the effectiveness of our optimal features.
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确定预测伯纳氏杆菌IV型分泌系统效应蛋白的最佳特征
IV型分泌系统(T4SS)由存在于某些类型细菌病原体中的多种蛋白质复合物构成,负责将IV型效应蛋白输送到宿主细胞中。效应物以真核细胞为目标,试图操纵宿主细胞过程和宿主免疫系统。已经做了一些实验来验证效应器,最近已经开发了一些基于评分和机器学习的方法来预测全基因组序列的效应器。然而,不同类型的特征被认为是有效的。在这项工作中,我们收集了以前报告中提出的特征,并计算了伯纳氏杆菌效应物和非效应物数据集的值。然后,我们根据特征在效应器和非效应器分类中的重要程度对特征进行排序,以确定最优特征集。最后,开发了一个支持向量机模型,通过将其与先前研究中提出的一组特征进行比较来测试最优特征。比较的结果支持我们的最优特征的有效性。
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