7 research outputs found
MS/MS-Free Protein Identification in Complex Mixtures Using Multiple Enzymes with Complementary Specificity
In this work, we present the results
of evaluation of a workflow
that employs a multienzyme digestion strategy for MS1-based protein
identification in “shotgun” proteomic applications.
In the proposed strategy, several cleavage reagents of different specificity
were used for parallel digestion of the protein sample followed by
MS1 and retention time (RT) based search. Proof of principle for the
proposed strategy was performed using experimental data obtained for
the annotated 48-protein standard. By using the developed approach,
up to 90% of proteins from the standard were unambiguously identified.
The approach was further applied to HeLa proteome data. For the sample
of this complexity, the proposed MS1-only strategy determined correctly
up to 34% of all proteins identified using standard MS/MS-based database
search. It was also found that the results of MS1-only search were
independent of the chromatographic gradient time in a wide range of
gradients from 15–120 min. Potentially, rapid MS1-only proteome
characterization can be an alternative or complementary to the MS/MS-based
“shotgun” analyses in the studies, in which the experimental
time is more important than the depth of the proteome coverage
MS/MS-Free Protein Identification in Complex Mixtures Using Multiple Enzymes with Complementary Specificity
In this work, we present the results
of evaluation of a workflow
that employs a multienzyme digestion strategy for MS1-based protein
identification in “shotgun” proteomic applications.
In the proposed strategy, several cleavage reagents of different specificity
were used for parallel digestion of the protein sample followed by
MS1 and retention time (RT) based search. Proof of principle for the
proposed strategy was performed using experimental data obtained for
the annotated 48-protein standard. By using the developed approach,
up to 90% of proteins from the standard were unambiguously identified.
The approach was further applied to HeLa proteome data. For the sample
of this complexity, the proposed MS1-only strategy determined correctly
up to 34% of all proteins identified using standard MS/MS-based database
search. It was also found that the results of MS1-only search were
independent of the chromatographic gradient time in a wide range of
gradients from 15–120 min. Potentially, rapid MS1-only proteome
characterization can be an alternative or complementary to the MS/MS-based
“shotgun” analyses in the studies, in which the experimental
time is more important than the depth of the proteome coverage
IdentiPy: An Extensible Search Engine for Protein Identification in Shotgun Proteomics
We
present an open-source, extensible search engine for shotgun
proteomics. Implemented in Python programming language, IdentiPy shows
competitive processing speed and sensitivity compared with the state-of-the-art
search engines. It is equipped with a user-friendly web interface,
IdentiPy Server, enabling the use of a single server installation
accessed from multiple workstations. Using a simplified version of
X!Tandem scoring algorithm and its novel “autotune”
feature, IdentiPy outperforms the popular alternatives on high-resolution
data sets. Autotune adjusts the search parameters for the particular
data set, resulting in improved search efficiency and simplifying
the user experience. IdentiPy with the autotune feature shows higher
sensitivity compared with the evaluated search engines. IdentiPy Server
has built-in postprocessing and protein inference procedures and provides
graphic visualization of the statistical properties of the data set
and the search results. It is open-source and can be freely extended
to use third-party scoring functions or processing algorithms and
allows customization of the search workflow for specialized applications
Petr Damian. Certamen spirituale.
RIASSUNTO MATĚJEK, Marek: Pier Damiani. Certamen spirituale. La licenza di teologia spirituale Ľargomento centrale della mia licenza è ľanalisi delle lettere e scritture di Pier Damiani e della vita monastica da lui praticata a Fonte Avellana. Fin dalľinizio del cristianesimo esistettero cristiani che si ritiravano in luoghi solitari per dedicarsi interamente alla contemplazione. Questa forma di vita religiosa è testimoniata per la prima volta in Egitto, nel 3. secolo. La vita eremitica si diffuse in Occidente grazie a sanťAtanasio e a san Girolamo. Dal 4. secolo troviamo eremiti in Africa e in Europa. Nelľ11. secolo furono fondati ordini religiosi di eremiti. Nella mia licenza ho cercato di identificare ľorigine della idea eremitica e lo sviluppo progressivo fino ai giorni della riforma Gregoriana. Pier Damiani è nato a Ravenna da agiata famiglia. Lui viene in custodia da un suo fratello maggiore di nome Damiano, che si preoccupò della sua educazione. I suoi studi furono fatti dapprima a Ravenna, poi a Faenza e infine a Parma, dove studiò filosofia e retorica. Nel 1034 era professore nelle arti del trivio e del quadrivio, ma nonostante cercò la solitudine per praticare la sua devozione verso Dio. Da qui si fece monaco. Nel 1042 è a San Vincenzo al Furlo, dove scrive la Vita Romualdi e nel 1043 venne eletto...Department of Theological Ethics and Theology of SpiritualityKatedra teologické etiky a spirituální teologie (do 2018)Catholic Theological FacultyKatolická teologická fakult
Proteogenomics of Malignant Melanoma Cell Lines: The Effect of Stringency of Exome Data Filtering on Variant Peptide Identification in Shotgun Proteomics
The
identification of genetically encoded variants at the proteome
level is an important problem in cancer proteogenomics. The generation
of customized protein databases from DNA or RNA sequencing data is
a crucial stage of the identification workflow. Genomic data filtering
applied at this stage may significantly modify variant search results,
yet its effect is generally left out of the scope of proteogenomic
studies. In this work, we focused on this impact using data of exome
sequencing and LC–MS/MS analyses of six replicates for eight
melanoma cell lines processed by a proteogenomics workflow. The main
objectives were identifying variant peptides and revealing the role
of the genomic data filtering in the variant identification. A series
of six confidence thresholds for single nucleotide polymorphisms and
indels from the exome data were applied to generate customized sequence
databases of different stringency. In the searches against unfiltered
databases, between 100 and 160 variant peptides were identified for
each of the cell lines using X!Tandem and MS-GF+ search engines. The
recovery rate for variant peptides was ∼1%, which is approximately
three times lower than that of the wild-type peptides. Using unfiltered
genomic databases for variant searches resulted in higher sensitivity
and selectivity of the proteogenomic workflow and positively affected
the ability to distinguish the cell lines based on variant peptide
signatures
Proteogenomics of Malignant Melanoma Cell Lines: The Effect of Stringency of Exome Data Filtering on Variant Peptide Identification in Shotgun Proteomics
The
identification of genetically encoded variants at the proteome
level is an important problem in cancer proteogenomics. The generation
of customized protein databases from DNA or RNA sequencing data is
a crucial stage of the identification workflow. Genomic data filtering
applied at this stage may significantly modify variant search results,
yet its effect is generally left out of the scope of proteogenomic
studies. In this work, we focused on this impact using data of exome
sequencing and LC–MS/MS analyses of six replicates for eight
melanoma cell lines processed by a proteogenomics workflow. The main
objectives were identifying variant peptides and revealing the role
of the genomic data filtering in the variant identification. A series
of six confidence thresholds for single nucleotide polymorphisms and
indels from the exome data were applied to generate customized sequence
databases of different stringency. In the searches against unfiltered
databases, between 100 and 160 variant peptides were identified for
each of the cell lines using X!Tandem and MS-GF+ search engines. The
recovery rate for variant peptides was ∼1%, which is approximately
three times lower than that of the wild-type peptides. Using unfiltered
genomic databases for variant searches resulted in higher sensitivity
and selectivity of the proteogenomic workflow and positively affected
the ability to distinguish the cell lines based on variant peptide
signatures
Proteogenomics of Malignant Melanoma Cell Lines: The Effect of Stringency of Exome Data Filtering on Variant Peptide Identification in Shotgun Proteomics
The
identification of genetically encoded variants at the proteome
level is an important problem in cancer proteogenomics. The generation
of customized protein databases from DNA or RNA sequencing data is
a crucial stage of the identification workflow. Genomic data filtering
applied at this stage may significantly modify variant search results,
yet its effect is generally left out of the scope of proteogenomic
studies. In this work, we focused on this impact using data of exome
sequencing and LC–MS/MS analyses of six replicates for eight
melanoma cell lines processed by a proteogenomics workflow. The main
objectives were identifying variant peptides and revealing the role
of the genomic data filtering in the variant identification. A series
of six confidence thresholds for single nucleotide polymorphisms and
indels from the exome data were applied to generate customized sequence
databases of different stringency. In the searches against unfiltered
databases, between 100 and 160 variant peptides were identified for
each of the cell lines using X!Tandem and MS-GF+ search engines. The
recovery rate for variant peptides was ∼1%, which is approximately
three times lower than that of the wild-type peptides. Using unfiltered
genomic databases for variant searches resulted in higher sensitivity
and selectivity of the proteogenomic workflow and positively affected
the ability to distinguish the cell lines based on variant peptide
signatures