Difference between revisions of "Literature Studies"
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* [[Identification of differentially expressed peptides in high-throughput proteomics data]] | * [[Identification of differentially expressed peptides in high-throughput proteomics data]] | ||
* [[In-depth method assessments of di?erentially expressed protein detection for shotgun proteomics data with missing values]] | * [[In-depth method assessments of di?erentially expressed protein detection for shotgun proteomics data with missing values]] | ||
+ | * [[Strategies for analyzing bisulfite sequencing data]] | ||
==== Identifying differential regions (e.g. DMRs) ==== | ==== Identifying differential regions (e.g. DMRs) ==== |
Revision as of 17:21, 25 January 2019
Page summary |
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Here outcomes of benchmarking studies from the literature are collected. The focus is on computational methods for analyzing experimental data (instead of comparing experimental techniques or platforms). Please extend this list by creating a new page and adding a link below. |
Contents
1 Results from Literature
1.1 Classification
2003
Comparison of statistical methods for classification of ovarian cancer using mass spectrometry data
2005
2016
1.2 Feature Selection
1.2.1 Identifying different features
2006
2010
2017
- Identification of differentially expressed peptides in high-throughput proteomics data
- In-depth method assessments of di?erentially expressed protein detection for shotgun proteomics data with missing values
- Strategies for analyzing bisulfite sequencing data
1.2.2 Identifying differential regions (e.g. DMRs)
2017
2018
- Defiant: (DMRs: easy, fast, identification and ANnoTation) identifies differentially Methylated regions from iron-deficient rat hippocampus
- DMRcaller: a versatile R/Bioconductor package for detection and visualization of differentially methylated regions in CpG and non-CpG contexts
- MethCP: Differentially Methylated Region Detection with Change Point Models (bioRxiv)
1.2.3 Identifying sets of features (e.g. gene set analyses)
1.2.4 Dimension reduction
2008
2015
1.3 Imputation methods for missing values
2001
2015
- Accounting for the Multiple Natures of Missing Values in Label-Free Quantitative Proteomics Data Sets to Compare Imputation Strategies
- Multiple imputation and analysis for high-dimensional incomplete proteomics data
2018
1.4 ODE-based Modelling
2001
2008
2013
- Lessons Learned from Quantitative Dynamical Modeling in Systems Biology
- ODE parameter inference using adaptive gradient matching with Gaussian processes
2018
1.5 Omics Workflows
2017
1.6 Preprocessing high-throughput data
2003
2005
- Comparison of Affymetrix GeneChip Expression Measures
- Comparison of background correction and normalization procedures for high-density oligonucleotide microarrays
2006
2008
2009
2010
- Consistency of predictive signature genes and classifiers generated using different microarray platforms
- Detecting and correcting systematic variation in large-scale RNA sequencing data
- Evaluation of statistical methods for normalization and differential expression in mRNA-Seq experiments
- Normalization of RNA-seq data using factor analysis of control genes or samples
2011
2012
2014