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Improved functional prediction of proteins by learning kernel combinations in multilabel settings

机译:通过在多标签设置中学习内核组合来改善蛋白质的功能预测

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摘要

Background We develop a probabilistic model for combining kernel matrices to predict the function of proteins. It extends previous approaches in that it can handle multiple labels which naturally appear in the context of protein function. Results Explicit modeling of multilabels significantly improves the capability of learning protein function from multiple kernels. The performance and the interpretability of the inference model are further improved by simultaneously predicting the subcellular localization of proteins and by combining pairwise classifiers to consistent class membership estimates. Conclusion For the purpose of functional prediction of proteins, multilabels provide valuable information that should be included adequately in the training process of classifiers. Learning of functional categories gains from co-prediction of subcellular localization. Pairwise separation rules allow very detailed insights into the relevance of different measurements like sequence, structure, interaction data, or expression data. A preliminary version of the software can be downloaded from http://www.inf.ethz.ch/personal/vroth/KernelHMM/ .
机译:背景我们开发了一种概率模型,用于组合核矩阵以预测蛋白质的功能。它扩展了以前的方法,因为它可以处理在蛋白质功能范围内自然出现的多个标记。结果多标签的显式建模显着提高了从多个内核中学习蛋白质功能的能力。通过同时预测蛋白质的亚细胞定位以及通过将成对分类器与一致的类成员估计相结合,可以进一步提高推理模型的性能和可解释性。结论出于蛋白质功能预测的目的,多标签提供了有价值的信息,应在分类器的训练过程中充分包括这些信息。对功能类别的学习得益于对亚细胞定位的共同预测。通过成对的分隔规则,可以非常详细地洞察序列,结构,相互作用数据或表达数据等不同度量的相关性。可以从http://www.inf.ethz.ch/personal/vroth/KernelHMM/下载该软件的初步版本。

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