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An improved peak clustering algorithm for comprehensive two-dimensional liquid chromatography data analysis
- Xu, Jucai, Zheng, Lin, Su, Guowan, Sun, Baoguo, Zhao, Mouming
- Journal of chromatography 2019 v.1602 pp. 273-283
- algorithms, comprehensive two-dimensional liquid chromatography, data collection, liquid chromatography, peptides, quantitative analysis
- In this work, an improved algorithm was developed for two-dimensional (2D) peak detection in complex two-dimensional liquid chromatography (LC×LC) data sets. In the first step, conventional one-dimensional peak detection was performed. In the second step, retention time, bidirectional overlap and unimodality criteria were applied to decide which of the individual peaks should be merged. To improve the peak detection with LC×LC analysis using shifting second dimension (2D) gradients, the variable thresholds, which permitted different thresholds for candidate peaks at different first dimension (1D) retention times, were employed for examination of the 2D retention time differences. Furthermore, the bidirectional overlap criterion performed at specified height was recommended to improve detection for tailing peaks. The developed algorithm was further tested on data sets from different LC×LC analyses of a complex peptide mixture, and then quantitatively evaluated by comparison between the results by the algorithm and mass analysis. Evidently improved performance with an accuracy rate over 60% was obtained by the algorithm, even for peak detection with LC×LC analysis under relatively low 1D sampling frequency or shifting 2D gradients. This would help to improve LC×LC quantitative analysis and performance assessment.