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Spectrum Identification using a Dynamic Bayesian Network Model of Tandem Mass Spectra

机译:使用串联质谱的动态贝叶斯网络模型进行光谱识别

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Shotgun proteomics is a high-throughput technology used to identify unknown proteins in a complex mixture. At the heart of this process is a prediction task, the spectrum identification problem, in which each fragmentation spectrum produced by a shotgun proteomics experiment must be mapped to the peptide (protein subsequence) which generated the spectrum. We propose a new algorithm for spectrum identification, based on dynamic Bayesian networks, which significantly outperforms the de-facto standard tools for this task: SEQUEST and Mascot.
机译:gun弹枪蛋白质组学是一种高通量技术,用于鉴定复杂混合物中的未知蛋白质。此过程的核心是预测任务,即光谱识别问题,其中必须将由gun弹枪蛋白质组学实验产生的每个碎片质谱图映射到生成该光谱的肽段(蛋白质子序列)。我们提出了一种基于动态贝叶斯网络的频谱识别新算法,该算法明显优于事实上的标准工具SEQUEST和Mascot。

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