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首页> 外文期刊>Journal of Theoretical Biology >Prediction of FMN-binding residues with three-dimensional probability distributions of interacting atoms on protein surfaces
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Prediction of FMN-binding residues with three-dimensional probability distributions of interacting atoms on protein surfaces

机译:具有蛋白质表面相互作用原子的三维概率分布的FMN结合残基预测

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摘要

Flavin mono-nucleotide (FMN) is a cofactor which is involved in many biological reactions. The insights on protein-FMN interactions aid the protein functional annotation and also facilitate in drug design. In this study, we have established a new method, making use of an encoding scheme of the three-dimensional probability density maps that describe the distributions of 40 non-covalent interacting atom types around protein surfaces, to predict FMN-binding sites on protein surfaces. One machine learning model was trained for each of the 30 protein atom types to predict tentative FMN-binding sites on protein structures. The method's capability was evaluated by five-fold cross-validation on a dataset containing 81 non-redundant FMN-binding protein structures and further tested on independent datasets of 30 and 15 non-redundant protein structures respectively. These predictions achieved an accuracy of 0.94, 0.94 and 0.96 with the Matthews correlation coefficient (MCC) of 0.53, 0.53 and 0.65 respectively for the three protein structure sets. The prediction capability is superior to the existing method. This is the first structure-based approach that does not rely on evolutionary information for predicting FMN-interacting residues. The webserver for the prediction is available at http://ismblab.genomics.sinica.edu.tw/.
机译:黄素单核苷酸(FMN)是参与许多生物反应的辅因子。关于蛋白质-FMN相互作用的见解有助于蛋白质功能注释,也有助于药物设计。在这项研究中,我们建立了一种新方法,利用三维概率密度图的编码方案来描述蛋白质表面周围40种非共价相互作用原子类型在蛋白质表面的分布,以预测蛋白质表面上的FMN结合位点。针对30种蛋白质原子类型中的每一种训练一种机器学习模型,以预测蛋白质结构上的暂定FMN结合位点。通过对包含81个非冗余FMN结合蛋白结构的数据集进行五重交叉验证,评估了该方法的能力,并分别在30个和15个非冗余蛋白结构的独立数据集上进行了测试。这些预测对于三种蛋白质结构组分别具有0.53、0.53和0.65的Matthews相关系数(MCC),实现了0.94、0.94和0.96的准确度。预测能力优于现有方法。这是第一种基于结构的方法,该方法不依赖于进化信息来预测与FMN相互作用的残基。有关预测的Web服务器可从http://ismblab.genomics.sinica.edu.tw/获得。

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