Spectral index for assessment of differential protein expression in shotgun proteomics

X Fu, SA Gharib, PS Green, ML Aitken… - Journal of proteome …, 2008 - ACS Publications
X Fu, SA Gharib, PS Green, ML Aitken, DA Frazer, DR Park, T Vaisar, JW Heinecke
Journal of proteome research, 2008ACS Publications
Detecting differentially expressed proteins is a key goal of proteomics. We describe a label-
free method, the spectral index, for analyzing relative protein abundance in large-scale data
sets derived from biological samples by shotgun proteomics. The spectral index is
comprised of two biochemically plausible features: relative protein abundance (assessed by
spectral counts) and the number of samples within a group with detectable peptides. We
combined the spectral index with permutation analysis to establish confidence intervals for …
Detecting differentially expressed proteins is a key goal of proteomics. We describe a label-free method, the spectral index, for analyzing relative protein abundance in large-scale data sets derived from biological samples by shotgun proteomics. The spectral index is comprised of two biochemically plausible features: relative protein abundance (assessed by spectral counts) and the number of samples within a group with detectable peptides. We combined the spectral index with permutation analysis to establish confidence intervals for assessing differential protein expression in bronchoalveolar lavage fluid from cystic fibrosis and control subjects. Significant differences in protein abundance determined by the spectral index agreed well with independent biochemical measurements. When used to analyze simulated data sets, the spectral index outperformed four other statistical tests (Student’s t-test, G-test, Bayesian t-test, and Significance Analysis of Microarrays) by correctly identifying the largest number of differentially expressed proteins. Correspondence analysis and functional annotation analysis indicated that the spectral index improves the identification of enriched proteins corresponding to clinical phenotypes. The spectral index is easily implemented and statistically robust, and its results are readily interpreted graphically. Therefore, it should be useful for biomarker discovery and comparisons of protein expression between normal and disease states.
ACS Publications