Discretized skew‐t mixture model for deconvoluting liquid chromatograph mass spectrometry data
Xuwen Zhu and
Xiang Zhang
Statistica Neerlandica, 2023, vol. 77, issue 3, 284-303
Abstract:
In this paper, new statistical algorithms for accurate peak detection in the metabolomic data are proposed. Specifically, liquid chromatograph‐mass spectrometry data are analyzed. The discretized skew‐t mixture model for peak detection is proposed. It shows great flexibility and capability in fitting skewed or heavy‐tailed peaks. The methodology is further extended to cross‐sample peak alignment for identifying the true peaks. A measure of peak credibility is provided through the assessment of misclassification probabilities between two cross‐sample peaks. The proposed algorithms are applied to spike‐in data with promising results.
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:bla:stanee:v:77:y:2023:i:3:p:284-303
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