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Incorporating g-gap dipeptide composition and position specific scoring matrix for identifying antioxidant proteins

机译:结合g间隙二肽成分和位置特异性评分矩阵以鉴定抗氧化剂蛋白

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Oxidative stress can damage major cell components, including protein, DNA, lipid and cell membranes, which may make cells lose function and induce a wide variety of diseases. As an extensive kind of antioxidants in human and animals, antioxidant proteins are essential to eliminate cell damage and aging problems caused by oxidative stress. Accurate identification of antioxidant proteins is a significant step to reveal the inducement and physiological process of certain types of diseases and aging. Furthermore, newly identified antioxidant proteins may provide candidate targets for curing or alleviating diseases and slowing down the aging process. In this study, a random forest-based approach incorporating PSSM (Position Specific Scoring Matrix) and g-gap dipeptide composition is put forward to distinguish antioxidant proteins from non-antioxidant proteins. To further improve the prediction performance, the information gain combined with incremental feature selection is adopted to obtain optimal features. Compared with prior studies in testing dataset, the proposed method shows excellent predictive performance with accuracy of 0.807, MCC of 0.543, AUC of 0.939, respectively. It is indicated that this method may be an alternative perspective predictor for annotating antioxidant proteins.
机译:氧化应激会破坏主要的细胞成分,包括蛋白质,DNA,脂质和细胞膜,这可能会使细胞丧失功能并诱发多种疾病。作为人类和动物中广泛的抗氧化剂,抗氧化剂蛋白对于消除由氧化应激引起的细胞损伤和衰老问题至关重要。准确鉴定抗氧化蛋白是揭示某些类型疾病和衰老的诱因和生理过程的重要步骤。此外,新发现的抗氧化剂蛋白可以为治疗或减轻疾病,延缓衰老的进程提供候选靶标。在这项研究中,提出了一种基于森林的随机方法,该方法结合了PSSM(位置特定得分矩阵)和g间隙二肽组成,以区分抗氧化剂蛋白和非抗氧化剂蛋白。为了进一步提高预测性能,采用信息增益与增量特征选择相结合以获得最优特征。与测试数据集中的现有研究相比,该方法具有出色的预测性能,准确度分别为0.807,MCC为0.543,AUC为0.939。表明该方法可能是用于注释抗氧化剂蛋白质的替代性透视预测器。

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