SIPMA: A Systematic Identification of Protein-Protein Interactions in Zea mays Using Autocorrelation Features in a Machine-Learning Framework

M. S. Khatun, M. Hasan, Md. Nurul Haque Mollah, H. Kurata
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引用次数: 8

Abstract

Zea mays (maize) is one of the most vital crops which are grown widely in the world. To understand the molecular structures and functions of maize, the identification of protein-protein interaction (PPI) is very important. PPI identification by wet lab experiments is time-consuming, expensive and laborious. These days in silico methods that accurately predict potential PPIs based on protein sequence information are highly demanded. Research on PPI prediction in maize is currently very limited, and no dedicated bioinformatics schemes are available. In this work, we proposed a novel approach, termed SIPMA (Systematic Identification of PPI in Maize using Autocorrelation). A machine learning random forest classifier was trained with autocorrelation features to build the prediction model. The SIPMA, which was tested by the experimentally verified PPI dataset of maize, yielded a prediction accuracy of 0.899 when the specificity was 0.969 on the training set. The SIPMA achieved promising performances on the test datasets. Compared with different sequence-based encoding and statistical learning methods, the SIPMA was a powerful computational resource for identifying PPIs in maize.
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SIPMA:在机器学习框架中使用自相关特征系统地识别玉米蛋白-蛋白相互作用
玉米是世界上广泛种植的最重要的作物之一。为了了解玉米的分子结构和功能,鉴定蛋白质-蛋白质相互作用(PPI)是非常重要的。通过湿实验室实验鉴定PPI是费时、昂贵和费力的。目前,基于蛋白质序列信息准确预测潜在PPIs的计算机方法被高度要求。目前对玉米PPI预测的研究非常有限,也没有专门的生物信息学方案。在这项工作中,我们提出了一种新的方法,称为SIPMA(利用自相关系统识别玉米PPI)。利用自相关特征训练机器学习随机森林分类器建立预测模型。通过实验验证的玉米PPI数据集进行验证,当特异性为0.969时,SIPMA的预测准确率为0.899。SIPMA在测试数据集上取得了令人满意的性能。与其他基于序列的编码方法和统计学习方法相比,SIPMA是一种强大的玉米ppi识别计算资源。
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