Quantitative proteomics by mass spectrometry is widely used in biomarker research and basic biology research for investigation of phenotype level cellular events. Despite the wide application, the methodology for statistical analysis of differentially expressed proteins has not been unified. Various methods such as t test, linear model and mixed effect models are used to define changes in proteomics experiments. However, none of these methods consider the specific structure of MS-data. Choices between methods, often originally developed for other types of data, are based on compromises between features such as statistical power, general applicability and user friendliness. Furthermore, whether to include proteins identified with one peptide...
Liquid chromatography-mass spectrometry (LC-MS)-based proteomics is becoming an increasingly importa...
Quantitative label-free mass spectrometry is increasingly used to analyze the proteomes of complex b...
Several algorithms for the normalization of proteomic data are currently available, each based on a ...
Quantitative proteomics by mass spectrometry is widely used in biomarker research and basic biology ...
As tools for quantitative label-free mass spectrometry (MS) rapidly develop, a consensus about the b...
Determining the differential expression of proteins under different conditions is of major importanc...
Label-free LC-MS/MS proteomics has proven itself to be a powerful method for evaluating protein iden...
Label-Free Quantitative mass spectrometry based workflows for differential expression (DE) analysis ...
As tools for quantitative label-free mass spectrometry (MS) rapidly develop, a consensus about the b...
With the advent of high-throughput proteomics, the type and amount of data pose a significant challe...
The expression of proteins can be quantified in high-throughput means using different types of mass ...
Mass spectrometry is widely used for quantitative proteomics studies, relative protein quantificatio...
We describe a new reproducibility-optimization method ROPECA for statistical analysis of proteomics ...
The methodology here described is implemented under the R environment and can be found on GitHub: ht...
In recent years, it has become obvious that mRNA expression does not always correlate with protein e...
Liquid chromatography-mass spectrometry (LC-MS)-based proteomics is becoming an increasingly importa...
Quantitative label-free mass spectrometry is increasingly used to analyze the proteomes of complex b...
Several algorithms for the normalization of proteomic data are currently available, each based on a ...
Quantitative proteomics by mass spectrometry is widely used in biomarker research and basic biology ...
As tools for quantitative label-free mass spectrometry (MS) rapidly develop, a consensus about the b...
Determining the differential expression of proteins under different conditions is of major importanc...
Label-free LC-MS/MS proteomics has proven itself to be a powerful method for evaluating protein iden...
Label-Free Quantitative mass spectrometry based workflows for differential expression (DE) analysis ...
As tools for quantitative label-free mass spectrometry (MS) rapidly develop, a consensus about the b...
With the advent of high-throughput proteomics, the type and amount of data pose a significant challe...
The expression of proteins can be quantified in high-throughput means using different types of mass ...
Mass spectrometry is widely used for quantitative proteomics studies, relative protein quantificatio...
We describe a new reproducibility-optimization method ROPECA for statistical analysis of proteomics ...
The methodology here described is implemented under the R environment and can be found on GitHub: ht...
In recent years, it has become obvious that mRNA expression does not always correlate with protein e...
Liquid chromatography-mass spectrometry (LC-MS)-based proteomics is becoming an increasingly importa...
Quantitative label-free mass spectrometry is increasingly used to analyze the proteomes of complex b...
Several algorithms for the normalization of proteomic data are currently available, each based on a ...