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Transformation, normalization and batch effect in the analysis of mass spectrometry data for omics studies
Automated Alignment of Mass Spectrometry Data Using Functional Geometry
The analysis of peptide-centric mass spectrometry data utilizing information about the expected isotope distribution
Probabilistic and likelihood-based methods for protein identification from MS/MS data
An MCMC-MRF Algorithm for Incorporating Spatial Information in IMS Data Processing
Mass Spectrometry Analysis Using MALDIquant
Model-based analysis of quantitative proteomics data with data independent acquisition mass spectrometry
The analysis of human serum albumin proteoforms using compositional framework
Variability Assessment of Label-Free LC-MS Experiments for Difference Detection
Statistical approach for biomarker discovery using label-free LC-MS data
an overview
Bayesian posterior integration for classification of mass spectrometry data
Logistic regression modeling on mass spectrometry data in proteomics case-control discriminant studies
Robust and confident predictor selection in metabolomics
On the combination of omics data for prediction of binary Outcomes
Statistical analysis of lipidomics data in a case-control study.
Automated Alignment of Mass Spectrometry Data Using Functional Geometry
The analysis of peptide-centric mass spectrometry data utilizing information about the expected isotope distribution
Probabilistic and likelihood-based methods for protein identification from MS/MS data
An MCMC-MRF Algorithm for Incorporating Spatial Information in IMS Data Processing
Mass Spectrometry Analysis Using MALDIquant
Model-based analysis of quantitative proteomics data with data independent acquisition mass spectrometry
The analysis of human serum albumin proteoforms using compositional framework
Variability Assessment of Label-Free LC-MS Experiments for Difference Detection
Statistical approach for biomarker discovery using label-free LC-MS data
an overview
Bayesian posterior integration for classification of mass spectrometry data
Logistic regression modeling on mass spectrometry data in proteomics case-control discriminant studies
Robust and confident predictor selection in metabolomics
On the combination of omics data for prediction of binary Outcomes
Statistical analysis of lipidomics data in a case-control study.