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首页> 外文期刊>Journal of Integrative Bioinformatics >Noise tolerance of Multiple Classifier Systems in data integration-based gene function prediction
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Noise tolerance of Multiple Classifier Systems in data integration-based gene function prediction

机译:基于数据集成的基因功能预测中多分类器系统的噪声容忍度

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摘要

The availability of various high-throughput experimental and computational methods developed in the last decade allowed molecular biologists to investigate the functions of genes at system level opening unprecedented research opportunities. Despite the automated prediction of genes functions could be included in the most difficult problems in bioinformatics, several recently published works showed that consistent improvements in prediction performances can be obtained by integrating heterogeneous data sources. Nevertheless, very few works have been dedicated to the investigation of the impact of noisy data on the prediction performances achievable by using data integration approaches. In this contribution we investigated the tolerance of multiple classifier systems (MCS) to noisy data in gene function prediction experiments based on data integration methods. The experimental results show that performances of MCS do not undergo a significant decay when noisy data sets are added. In addition, we show that in this task MCS are competitive with kernel fusion, one of the most widely applied technique for data integration in gene function prediction problems.
机译:过去十年中开发的各种高通量实验和计算方法的可用性使分子生物学家能够在系统水平上研究基因的功能,从而开创了前所未有的研究机会。尽管基因功能的自动预测可以包括在生物信息学中最棘手的问题中,但最近发表的一些研究表明,通过整合异构数据源可以实现预测性能的持续改进。然而,很少有研究致力于使用数据集成方法来研究噪声数据对预测性能的影响。在这项贡献中,我们研究了基于数据集成方法的基因功能预测实验中多分类器系统(MCS)对嘈杂数据的耐受性。实验结果表明,当添加有噪声的数据集时,MCS的性能不会显着下降。此外,我们表明在此任务中,MCS与内核融合具有竞争性,后者是基因功能预测问题中数据集成最广泛应用的技术之一。

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