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Integrating multiple networks for protein function prediction

机译:集成多个网络进行蛋白质功能预测

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Background: High throughput techniques produce multiple functional association networks. Integrating these networks can enhance the accuracy of protein function prediction. Many algorithms have been introduced to generate a composite network, which isobtained as a weighted sum of individual networks. The weight assigned to an individual network reflects its benefit towards the protein functional annotation inference. A classifier is then trained on the composite network for predicting protein functions. However, since these techniques model the optimization of the composite network and the prediction tasks as separate objectives, the resulting composite network is not necessarily optimal for the follow-up protein function prediction.Results: We address this issue by modeling the optimization of the composite network and the prediction problems within a unified objective function. In particular, we use a kernel target alignment technique and the loss function of a network based classifier to jointly adjust the weights assigned to the individual networks. We show that the proposed method, called MNet, can achieve a performance that is superior (with respect to different evaluation criteria) to related techniques using the multiple networks of four example species (yeast, human, mouse, and fly) annotated with thousands (or hundreds) of GO terms.Conclusion: MNet can effectively integrate multiple networks for protein function prediction and is robust to the input parameters. Supplementary data is available at https://sites.google.com/site/guoxian85/home/mnet. The Matlab code of MNet is availableupon request.
机译:背景:高吞吐量技术会产生多个功能关联网络。集成这些网络可以提高蛋白质功能预测的准确性。已经引入了许多算法以生成复合网络,其被认为是单个网络的加权之和。分配给单个网络的重量反映了其对蛋白质功能注释推理的益处。然后在复合网络上培训分类器以预测蛋白质功能。然而,由于这些技术模型复合网络的优化和预测任务作为单独的目标,因此得到的复合网络不一定对后续蛋白函数预测最佳。结果:我们通过建模复合优化来解决这个问题网络和统一目标函数中的预测问题。特别地,我们使用内核目标对准技术和基于网络的分类器的丢失功能,共同调整分配给各个网络的权重。我们表明,所谓的MNET的方法可以实现使用多个示例物种(酵母,人,鼠标和飞)的多个网络的相关技术优越(关于不同的评估标准)的性能,以数千(或数百个Go术语。结论:MNET可以有效地集成了多个网络的蛋白质功能预测,并且对输入参数具有鲁棒性。补充数据可在https://sites.google.com/site/guoxian85/home/mnet上获得。 MNET的MATLAB代码是可用的。

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