Abstract

Targeted analysis of data‐independent acquisition (DIA) data is a powerful mass spectrometric approach for comprehensive, reproducible and precise proteome quantitation. It requires a spectral library, which contains for all considered peptide precursor ions empirically determined fragment ion intensities and their predicted retention time (RT). RTs, however, are not comparable on an absolute scale, especially if heterogeneous measurements are combined. Here, we present a method for high‐precision prediction of RT, which significantly improves the quality of targeted DIA analysis compared to in silico RT prediction and the state of the art indexed retention time (iRT) normalization approach. We describe a high‐precision normalized RT algorithm, which is implemented in the Spectronaut software. We, furthermore, investigate the influence of nine different experimental factors, such as chromatographic mobile and stationary phase, on iRT precision. In summary, we show that using targeted analysis of DIA data with high‐precision iRT significantly increases sensitivity and data quality. The iRT values are generally transferable across a wide range of experimental conditions. Best results, however, are achieved if library generation and analytical measurements are performed on the same system.

Highlights

  • Liquid chromatography mass spectrometry (LC-MS) is a powerful and widely used approach to identify and quantify proteins [1]

  • The indexed retention time (iRT) system was initially developed for SRM

  • With 11 iRT peptides it was mostly used with linear gradients and has a limited retention time (RT) precision

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Summary

Introduction

Liquid chromatography mass spectrometry (LC-MS) is a powerful and widely used approach to identify and quantify proteins [1]. Its unbiased and comprehensive nature makes it ideal to characterize proteins, detect differentially abundant proteins, to profile proteomes or to discover biomarkers [2,3]. An LC-MS acquisition method that is currently rapidly evolving is data-independent acquisition (DIA). The approach is especially well suited for quantitation of dozens to hundreds of samples from

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