qPeaks: A Linear Regression-Based Asymmetric Peak Model for Parameter-Free Automatized Detection and Characterization of Chromatographic Peaks in Non-Target Screening Data
Max Reuschenbach,
Felix Drees,
Michael S. Leupold
et al.
Abstract:We present qPeaks (quality peaks), a novel, userparameter-free algorithm for peak detection and peak characterization applicable to chromatographic data. The algorithm is based on a linearizable regression model that analyzes asymmetric peaks and estimates the specific uncertainties associated with the peak regression parameters. The uncertainties of the parameters are used to derive a data quality score DQS peak , rendering low reliability results more transparent during processing and allowing for the priori… Show more
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