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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Multiple Peak Alignment in Sequential Data Analysis: A Scale-Space-Based Approach
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Multiple Peak Alignment in Sequential Data Analysis: A Scale-Space-Based Approach

机译:序列数据分析中的多个峰对齐:一种基于标度空间的方法

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In this paper, we address the multiple peak alignment problem in sequential data analysis with an approach based on the Gaussian scale-space theory. We assume that multiple sets of detected peaks are the observed samples of a set of common peaks. We also assume that the locations of the observed peaks follow unimodal distributions (e.g., normal distribution) with their means equal to the corresponding locations of the common peaks and variances reflecting the extension of their variations. Under these assumptions, we convert the problem of estimating locations of the unknown number of common peaks from multiple sets of detected peaks into a much simpler problem of searching for local maxima in the scale-space representation. The optimization of the scale parameter is achieved using an energy minimization approach. We compare our approach with a hierarchical clustering method using both simulated data and real mass spectrometry data. We also demonstrate the merit of extending the binary peak detection method (i.e., a candidate is considered either as a peak or as a nonpeak) with a quantitative scoring measure-based approach (i.e., we assign to each candidate a possibility of being a peak).
机译:在本文中,我们使用基于高斯尺度空间理论的方法解决了顺序数据分析中的多重峰对齐问题。我们假设多组检测到的峰是一组常见峰的观察样本。我们还假设观察到的峰的位置遵循单峰分布(例如正态分布),其均值等于常见峰的相应位置,并且方差反映了其变化的扩展。在这些假设下,我们将估计多组检测到的峰中未知数量的共同峰的位置的问题转换为在比例空间表示中搜索局部最大值的简单得多的问题。使用能量最小化方法可以实现比例参数的优化。我们将我们的方法与使用模拟数据和实际质谱数据的分层聚类方法进行比较。我们还展示了使用基于定量计分度量的方法扩展二元峰检测方法(即,将候选者视为峰或非峰)的优点(即,我们为每个候选者分配成为峰的可能性) )。

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