It is important to preprocess high-throughput data generated from mass spectrometry experiments in order to obtain a successful proteomics analysis. Outlier detection is an important preprocessing step. A naive outlier detection approach may miss many true outliers and instead select many non-outliers because of the heterogeneity of the variability observed commonly in high-throughput data. Because of this issue, we developed a outlier detection software program accounting for the heterogeneous variability by utilizing linear, non-linear and non-parametric quantile regression techniques. Our program was developed using the R computer language. As a consequence, it can be used interactively and conveniently in the R environment. © 2008 The Author(s).
CITATION STYLE
Cho, H., Kim, Y. J., Jung, H. J., Lee, S. W., & Lee, J. W. (2008). OutlierD: An R package for outlier detection using quantile regression on mass spectrometry data. Bioinformatics, 24(6), 882–884. https://doi.org/10.1093/bioinformatics/btn012
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