3 research outputs found
PACOM: A Versatile Tool for Integrating, Filtering, Visualizing, and Comparing Multiple Large Mass Spectrometry Proteomics Data Sets
Mass-spectrometry-based
proteomics has evolved into a high-throughput
technology in which numerous large-scale data sets are generated from
diverse analytical platforms. Furthermore, several scientific journals
and funding agencies have emphasized the storage of proteomics data
in public repositories to facilitate its evaluation, inspection, and
reanalysis. As a consequence, public proteomics
data repositories are growing rapidly. However, tools are needed to
integrate multiple proteomics data sets to compare different experimental
features or to perform quality control analysis. Here, we present
a new Java stand-alone tool, Proteomics Assay COMparator (PACOM),
that is able to import, combine, and simultaneously compare numerous
proteomics experiments to check the integrity of the proteomic data
as well as verify data quality. With PACOM, the user can detect source
of errors that may have been introduced in any step of a proteomics
workflow and that influence the final results. Data sets can be easily
compared and integrated, and data quality and reproducibility can
be visually assessed through a rich set of graphical representations
of proteomics data features as well as a wide variety of data filters.
Its flexibility and easy-to-use interface make PACOM a unique tool
for daily use in a proteomics laboratory. PACOM is available at https://github.com/smdb21/pacom
In-depth proteomic characterization of classical and non-classical monocyte subsets
Monocytes are bone marrow-derived leukocytes that are part of the innate immune
system. Monocytes are divided into three subsets: classical, intermediate and non-classical,
which can be differentiated by their expression of some surface antigens, mainly CD14 and CD16.
These cells are key players in the inflammation process underlying the mechanism of many
diseases. Thus, the molecular characterization of these cells may provide very useful information
for understanding their biology in health and disease. We performed a multicentric proteomic
study with pure classical and non-classical populations derived from 12 healthy donors. The robust
workflow used provided reproducible results among the five participating laboratories. Over 5000
proteins were identified, and about half of them were quantified using a spectral counting approach.
The results represent the protein abundance catalogue of pure classical and enriched non-classical
blood peripheral monocytes, and could serve as a reference dataset of the healthy population.
The functional analysis of the differences between cell subsets supports the consensus roles assigned
to human monocytes
In-depth proteomic characterization of classical and non-classical monocyte subsets
Monocytes are bone marrow-derived leukocytes that are part of the innate immune
system. Monocytes are divided into three subsets: classical, intermediate and non-classical,
which can be differentiated by their expression of some surface antigens, mainly CD14 and CD16.
These cells are key players in the inflammation process underlying the mechanism of many
diseases. Thus, the molecular characterization of these cells may provide very useful information
for understanding their biology in health and disease. We performed a multicentric proteomic
study with pure classical and non-classical populations derived from 12 healthy donors. The robust
workflow used provided reproducible results among the five participating laboratories. Over 5000
proteins were identified, and about half of them were quantified using a spectral counting approach.
The results represent the protein abundance catalogue of pure classical and enriched non-classical
blood peripheral monocytes, and could serve as a reference dataset of the healthy population.
The functional analysis of the differences between cell subsets supports the consensus roles assigned
to human monocytes