posted on 2013-12-06, 00:00authored byLuminita Moruz, Michael
R. Hoopmann, Magnus Rosenlund, Viktor Granholm, Robert L. Moritz, Lukas Käll
In typical shotgun experiments, the
mass spectrometer records the
masses of a large set of ionized analytes but fragments only a fraction
of them. In the subsequent analyses, normally only the fragmented
ions are used to compile a set of peptide identifications, while the
unfragmented ones are disregarded. In this work, we show how the unfragmented
ions, here denoted MS1-features, can be used to increase the confidence
of the proteins identified in shotgun experiments. Specifically, we
propose the usage of in silico mass tags, where the observed MS1-features
are matched against de novo predicted masses and retention times for
all peptides derived from a sequence database. We present a statistical
model to assign protein-level probabilities based on the MS1-features
and combine this data with the fragmentation spectra. Our approach
was evaluated for two triplicate data sets from yeast and human, respectively,
leading to up to 7% more protein identifications at a fixed protein-level
false discovery rate of 1%. The additional protein identifications
were validated both in the context of the mass spectrometry data and
by examining their estimated transcript levels generated using RNA-Seq.
The proposed method is reproducible, straightforward to apply, and
can even be used to reanalyze and increase the yield of existing data
sets.