posted on 2016-03-21, 00:00authored byZhou Yi, Marion Manil-Ségalen, Laila Sago, Annie Glatigny, Virginie Redeker, Renaud Legouis, Marie-Hélène Mucchielli-Giorgi
Affinity purifications followed by
mass spectrometric analysis
are used to identify protein–protein interactions. Because
quantitative proteomic data are noisy, it is necessary to develop
statistical methods to eliminate false-positives and identify true
partners. We present here a novel approach for filtering false interactors,
named “SAFER” for mass Spectrometry
data Analysis by Filtering
of Experimental Replicates,
which is based on the reproducibility of the replicates and the fold-change
of the protein intensities between bait and control. To identify regulators
or targets of autophagy, we characterized the interactors of LGG1,
a ubiquitin-like protein involved in autophagosome formation in C. elegans. LGG-1 partners were purified by affinity,
analyzed by nanoLC–MS/MS mass spectrometry, and quantified
by a label-free proteomic approach based on the mass spectrometric
signal intensity of peptide precursor ions. Because the selection
of confident interactions depends on the method used for statistical
analysis, we compared SAFER with several statistical tests and different
scoring algorithms on this set of data. We show that SAFER recovers
high-confidence interactors that have been ignored by the other methods
and identified new candidates involved in the autophagy process. We
further validated our method on a public data set and conclude that
SAFER notably improves the identification of protein interactors.