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Incorporating Amino Acids Composition and Functional Domains for Identifying Bacterial Toxin Proteins

机译:结合氨基酸组成和功能域来鉴定细菌毒素蛋白

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摘要

Aside from pathogenesis, bacterial toxins also have been used for medical purpose such as drugs for cancer and immune diseases. Correctly identifying bacterial toxins and their types (endotoxins and exotoxins) has great impact on the cell biology study and therapy development. However, experimental methods for bacterial toxins identification are time-consuming and labor-intensive, implying an urgent need for computational prediction. Thus, we are motivated to develop a method for computational identification of bacterial toxins based on amino acid sequences and functional domain information. In this study, a nonredundant dataset of 167 bacterial toxins including 77 exotoxins and 90 endotoxins is adopted to learn the predictive model by using support vector machines (SVMs). The cross-validation evaluation shows that the SVM models trained with amino acids and dipeptides composition could yield an accuracy of 96.07% and 92.50%, respectively. For discriminating endotoxins from exotoxins, the SVM models trained with amino acids and dipeptides composition have achieved an accuracy of 95.71% and 92.86%, respectively. After incorporating functional domain information, the predictive performance is further improved. The proposed method has been demonstrated to be able to more effectively identify and classify bacterial toxins than the other two features on independent dataset, which may aid in bacterial biomedical development.
机译:除了发病机理外,细菌毒素也已用于医学目的,例如用于治疗癌症和免疫疾病的药物。正确识别细菌毒素及其类型(内毒素和外毒素)对细胞生物学研究和治疗发展具有重大影响。但是,鉴定细菌毒素的实验方法既费时又费力,这意味着迫切需要进行计算预测。因此,我们有动机开发一种基于氨基酸序列和功能域信息的细菌毒素的计算鉴定方法。在这项研究中,通过使用支持向量机(SVM)来获取167种细菌毒素(包括77种外毒素和90种内毒素)的非冗余数据集,以学习预测模型。交叉验证评估表明,用氨基酸和二肽组成训练的SVM模型的准确率分别为96.07%和92.50%。为了区分内毒素和外毒素,用氨基酸和二肽组成训练的SVM模型的准确度分别为95.71%和92.86%。合并功能域信息后,预测性能会进一步提高。与独立数据集上的其他两个功能相比,该方法已被证明能够更有效地识别和分类细菌毒素,这可能有助于细菌生物医学的发展。

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