Optimizing Spectronaut Search Parameters to Improve Data Quality with Minimal Proteome Coverage Reductions in DIA Analyses of Heterogeneous Samples


Journal article


Christa P Baker, R. Bruderer, James Abbott, J. S. C. Arthur, A. Brenes
Journal of Proteome Research, 2024

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APA   Click to copy
Baker, C. P., Bruderer, R., Abbott, J., Arthur, J. S. C., & Brenes, A. (2024). Optimizing Spectronaut Search Parameters to Improve Data Quality with Minimal Proteome Coverage Reductions in DIA Analyses of Heterogeneous Samples. Journal of Proteome Research.


Chicago/Turabian   Click to copy
Baker, Christa P, R. Bruderer, James Abbott, J. S. C. Arthur, and A. Brenes. “Optimizing Spectronaut Search Parameters to Improve Data Quality with Minimal Proteome Coverage Reductions in DIA Analyses of Heterogeneous Samples.” Journal of Proteome Research (2024).


MLA   Click to copy
Baker, Christa P., et al. “Optimizing Spectronaut Search Parameters to Improve Data Quality with Minimal Proteome Coverage Reductions in DIA Analyses of Heterogeneous Samples.” Journal of Proteome Research, 2024.


BibTeX   Click to copy

@article{christa2024a,
  title = {Optimizing Spectronaut Search Parameters to Improve Data Quality with Minimal Proteome Coverage Reductions in DIA Analyses of Heterogeneous Samples},
  year = {2024},
  journal = {Journal of Proteome Research},
  author = {Baker, Christa P and Bruderer, R. and Abbott, James and Arthur, J. S. C. and Brenes, A.}
}

Abstract

Data-independent acquisition has seen breakthroughs that enable comprehensive proteome profiling using short gradients. As the proteome coverage continues to increase, the quality of the data generated becomes much more relevant. Using Spectronaut, we show that the default search parameters can be easily optimized to minimize the occurrence of false positives across different samples. Using an immunological infection model system to demonstrate the impact of adjusting search settings, we analyzed Mus musculus macrophages and compared their proteome to macrophages spiked withCandida albicans. This experimental system enabled the identification of “false positives” as Candida albicans peptides and proteins should not be present in the Mus musculus-only samples. We show that adjusting the search parameters reduced “false positive” identifications by 89% at the peptide and protein level, thereby considerably increasing the quality of the data. We also show that these optimized parameters incurred a moderate cost, only reducing the overall number of “true positive” identifications across each biological replicate by <6.7% at both the peptide and protein level. We believe the value of our updated search parameters extends beyond a two-organism analysis and would be of great value to any DIA experiment analyzing heterogeneous populations of cell types or tissues.