Computational and analytical challenges in single-cell transcriptomics
The development of high-throughput RNA sequencing (RNA-seq) at the single-cell level has
already led to profound new discoveries in biology, ranging from the identification of novel …
already led to profound new discoveries in biology, ranging from the identification of novel …
Enter the matrix: factorization uncovers knowledge from omics
Omics data contain signals from the molecular, physical, and kinetic inter-and intracellular
interactions that control biological systems. Matrix factorization (MF) techniques can reveal …
interactions that control biological systems. Matrix factorization (MF) techniques can reveal …
COBRApy: constraints-based reconstruction and analysis for python
Abstract Background COnstraint-Based Reconstruction and Analysis (COBRA) methods are
widely used for genome-scale modeling of metabolic networks in both prokaryotes and …
widely used for genome-scale modeling of metabolic networks in both prokaryotes and …
[图书][B] Generalized latent variable modeling: Multilevel, longitudinal, and structural equation models
A Skrondal, S Rabe-Hesketh - 2004 - taylorfrancis.com
This book unifies and extends latent variable models, including multilevel or generalized
linear mixed models, longitudinal or panel models, item response or factor models, latent …
linear mixed models, longitudinal or panel models, item response or factor models, latent …
Studying and modelling dynamic biological processes using time-series gene expression data
Biological processes are often dynamic, thus researchers must monitor their activity at
multiple time points. The most abundant source of information regarding such dynamic …
multiple time points. The most abundant source of information regarding such dynamic …
Trans-omics: how to reconstruct biochemical networks across multiple 'omic'layers
We propose 'trans-omic'analysis for reconstructing global biochemical networks across
multiple omic layers by use of both multi-omic measurements and computational data …
multiple omic layers by use of both multi-omic measurements and computational data …
Large-scale mapping and validation of Escherichia coli transcriptional regulation from a compendium of expression profiles
Machine learning approaches offer the potential to systematically identify transcriptional
regulatory interactions from a compendium of microarray expression profiles. However …
regulatory interactions from a compendium of microarray expression profiles. However …
Geometric interpretation of gene coexpression network analysis
The merging of network theory and microarray data analysis techniques has spawned a new
field: gene coexpression network analysis. While network methods are increasingly used in …
field: gene coexpression network analysis. While network methods are increasingly used in …
Bipartite graphs in systems biology and medicine: a survey of methods and applications
The latest advances in high-throughput techniques during the past decade allowed the
systems biology field to expand significantly. Today, the focus of biologists has shifted from …
systems biology field to expand significantly. Today, the focus of biologists has shifted from …
Advantages and limitations of current network inference methods
R De Smet, K Marchal - Nature Reviews Microbiology, 2010 - nature.com
Network inference, which is the reconstruction of biological networks from high-throughput
data, can provide valuable information about the regulation of gene expression in cells …
data, can provide valuable information about the regulation of gene expression in cells …