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An Edge-based Protein Complex Identification Algorithm With Gene Co-expression Data (PCIA-GeCo)

机译:具有基因共表达数据的基于边缘的蛋白质复合物识别算法(PCIA-GeCo)

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摘要

Recent studies have shown that protein complex is composed of core proteins and attachment proteins, and proteins inside the core are highly co-expressed. Based on this new concept, we reconstruct weighted PPI network by using gene expression data, and develop a novel protein complex identification algorithm from the angle of edge (PCIA-GeCo). First, we select the edge with high co-expressed coefficient as seed to form the preliminary cores. Then, the preliminary cores are filtered according to the weighted density of complex core to obtain the unique core. Finally, the protein complexes are generated by identifying attachment proteins for each core. A comprehensive comparison in term of F-measure, Coverage rate, P-value between our method and three other existing algorithms HUNTER, COACH and CORE has been made by comparing the predicted complexes against benchmark complexes. The evaluation results show our method PCIA-GeCo is effective; it can identify protein complexes more accurately.
机译:最近的研究表明,蛋白质复合物由核心蛋白质和附着蛋白质组成,并且核心内部的蛋白质高度共表达。基于这一新概念,我们利用基因表达数据重建加权PPI网络,并从边缘角度(PCIA-GeCo)开发了一种新颖的蛋白质复合物识别算法。首先,我们选择具有高共表达系数的边缘作为种子以形成初步核心。然后,根据复杂核的加权密度对初步核进行过滤,得到唯一核。最后,通过识别每个核心的附着蛋白来生成蛋白质复合物。通过将预测的复合物与基准复合物进行比较,对我们的方法与其他三种现有算法HUNTER,COACH和CORE之间的F度量,覆盖率,P值进行了全面比较。评估结果表明,我们的方法PCIA-GeCo是有效的。它可以更准确地识别蛋白质复合物。

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