6 research outputs found
Large-Scale Filter-Aided Sample Preparation Method for the Analysis of the Ubiquitinome
Protein
ubiquitination regulates key cellular functions, including
protein homeostasis and signal transduction. The digestion of ubiquitinated
proteins with trypsin yields a glycineāglycine remnant bound
to the modified lysine residue (K-Īµ-GG) that can be recognized
by specific antibodies for immunoaffinity purification (IAP) and subsequent
identification of ubiquitination sites by mass spectrometry. Previous
ubiquitinome studies based on this strategy have consistently digested
milligram amounts of protein as starting material using in-solution
digestion protocols prior to K-Īµ-GG enrichment. Filter-aided
sample preparation (FASP) surpasses in-solution protein digestion
in cleavage efficiency, but its performance has thus far been shown
for digestion of sample amounts on the order of micrograms. Because
cleavage efficiency is pivotal in the generation of the K-Īµ-GG
epitope recognized during IAP, here we developed a large-scale FASP
method (LFASP) for digestion of milligram amounts of protein and evaluated
its applicability to the study of the ubiquitinome. Our results demonstrate
that LFASP-based tryptic digestion is efficient, robust, reproducible,
and applicable to the study of the ubiquitinome. We benchmark our
results with state-of-the-art ubiquitinome studies and show a ā¼3-fold
reduction in the proportion of miscleaved peptides with the method
presented here. Beyond ubiquitinome analysis, LFASP overcomes the
general limitation in sample capacity of standard FASP-based protocols
and can therefore be used for a variety of applications that demand
a largeĀ(r) amount of starting material
Sewage Protein Information Mining: Discovery of Large Biomolecules as Biomarkers of Population and Industrial Activities
Wastewater-based epidemiology has been revealed as a
powerful approach
for surveying the health and lifestyle of a population. In this context,
proteins have been proposed as potential biomarkers that complement
the information provided by currently available methods. However,
little is known about the range of molecular species and dynamics
of proteins in wastewater and the information hidden in these protein
profiles is still to be uncovered. In this study, we investigated
the protein composition of wastewater from 10 municipalities in Catalonia
with diverse populations and industrial activities at three different
times of the year. The soluble fraction of this material was analyzed
using liquid chromatography high-resolution tandem mass spectrometry
using a shotgun proteomics approach. The complete proteomic profile,
distribution among different organisms, and semiquantitative analysis
of the main constituents are described. Excreta (urine and feces)
from humans, and blood and other residues from livestock were identified
as the two main protein sources. Our findings provide new insights
into the characterization of wastewater proteomics that allow for
the proposal of specific bioindicators for wastewater-based environmental
monitoring. This includes human and animal population monitoring,
most notably for rodent pest control (immunoglobulins (Igs) and amylases)
and livestock processing industry monitoring (albumins)
Sewage Protein Information Mining: Discovery of Large Biomolecules as Biomarkers of Population and Industrial Activities
Wastewater-based epidemiology has been revealed as a
powerful approach
for surveying the health and lifestyle of a population. In this context,
proteins have been proposed as potential biomarkers that complement
the information provided by currently available methods. However,
little is known about the range of molecular species and dynamics
of proteins in wastewater and the information hidden in these protein
profiles is still to be uncovered. In this study, we investigated
the protein composition of wastewater from 10 municipalities in Catalonia
with diverse populations and industrial activities at three different
times of the year. The soluble fraction of this material was analyzed
using liquid chromatography high-resolution tandem mass spectrometry
using a shotgun proteomics approach. The complete proteomic profile,
distribution among different organisms, and semiquantitative analysis
of the main constituents are described. Excreta (urine and feces)
from humans, and blood and other residues from livestock were identified
as the two main protein sources. Our findings provide new insights
into the characterization of wastewater proteomics that allow for
the proposal of specific bioindicators for wastewater-based environmental
monitoring. This includes human and animal population monitoring,
most notably for rodent pest control (immunoglobulins (Igs) and amylases)
and livestock processing industry monitoring (albumins)
Sewage Protein Information Mining: Discovery of Large Biomolecules as Biomarkers of Population and Industrial Activities
Wastewater-based epidemiology has been revealed as a
powerful approach
for surveying the health and lifestyle of a population. In this context,
proteins have been proposed as potential biomarkers that complement
the information provided by currently available methods. However,
little is known about the range of molecular species and dynamics
of proteins in wastewater and the information hidden in these protein
profiles is still to be uncovered. In this study, we investigated
the protein composition of wastewater from 10 municipalities in Catalonia
with diverse populations and industrial activities at three different
times of the year. The soluble fraction of this material was analyzed
using liquid chromatography high-resolution tandem mass spectrometry
using a shotgun proteomics approach. The complete proteomic profile,
distribution among different organisms, and semiquantitative analysis
of the main constituents are described. Excreta (urine and feces)
from humans, and blood and other residues from livestock were identified
as the two main protein sources. Our findings provide new insights
into the characterization of wastewater proteomics that allow for
the proposal of specific bioindicators for wastewater-based environmental
monitoring. This includes human and animal population monitoring,
most notably for rodent pest control (immunoglobulins (Igs) and amylases)
and livestock processing industry monitoring (albumins)
Sewage Protein Information Mining: Discovery of Large Biomolecules as Biomarkers of Population and Industrial Activities
Wastewater-based epidemiology has been revealed as a
powerful approach
for surveying the health and lifestyle of a population. In this context,
proteins have been proposed as potential biomarkers that complement
the information provided by currently available methods. However,
little is known about the range of molecular species and dynamics
of proteins in wastewater and the information hidden in these protein
profiles is still to be uncovered. In this study, we investigated
the protein composition of wastewater from 10 municipalities in Catalonia
with diverse populations and industrial activities at three different
times of the year. The soluble fraction of this material was analyzed
using liquid chromatography high-resolution tandem mass spectrometry
using a shotgun proteomics approach. The complete proteomic profile,
distribution among different organisms, and semiquantitative analysis
of the main constituents are described. Excreta (urine and feces)
from humans, and blood and other residues from livestock were identified
as the two main protein sources. Our findings provide new insights
into the characterization of wastewater proteomics that allow for
the proposal of specific bioindicators for wastewater-based environmental
monitoring. This includes human and animal population monitoring,
most notably for rodent pest control (immunoglobulins (Igs) and amylases)
and livestock processing industry monitoring (albumins)
General Statistical Framework for Quantitative Proteomics by Stable Isotope Labeling
The combination of stable isotope
labeling (SIL) with mass spectrometry
(MS) allows comparison of the abundance of thousands of proteins in
complex mixtures. However, interpretation of the large data sets generated
by these techniques remains a challenge because appropriate statistical
standards are lacking. Here, we present a generally applicable model
that accurately explains the behavior of data obtained using current
SIL approaches, including <sup>18</sup>O, iTRAQ, and SILAC labeling,
and different MS instruments. The model decomposes the total technical
variance into the spectral, peptide, and protein variance components,
and its general validity was demonstrated by confronting 48 experimental
distributions against 18 different null hypotheses. In addition to
its general applicability, the performance of the algorithm was at
least similar than that of other existing methods. The model also
provides a general framework to integrate quantitative and error information
fully, allowing a comparative analysis of the results obtained from
different SIL experiments. The model was applied to the global analysis
of protein alterations induced by low H<sub>2</sub>O<sub>2</sub> concentrations
in yeast, demonstrating the increased statistical power that may be
achieved by rigorous data integration. Our results highlight the importance
of establishing an adequate and validated statistical framework for
the analysis of high-throughput data