Nucleic Acids Research just published its Web Server Issue, featuring new and updates to existing web servers and applications for genomics and proteomics research. In case you missed it, be sure to check out the Database Issue that came out earlier this year.
This web server issue has lots of papers on tools for microRNA analysis, and protein/RNA secondary structure analysis and annotation. Here are a few that sounded interesting for those doing systems genomics and trying to put findings into a functional, biologically relevant context:
g:Profiler—a web server for functional interpretation of gene lists (2011 update)
Abstract: Functional interpretation of candidate gene lists is an essential task in modern biomedical research. Here, we present the                      2011 update of g:Profiler (http://biit.cs.ut.ee/gprofiler/),  a popular collection of web tools for functional analysis. g:GOSt and  g:Cocoa combine comprehensive methods for interpreting                      gene lists, ordered lists and list collections in  the context of biomedical ontologies, pathways, transcription factor and                      microRNA regulatory motifs and protein–protein  interactions. Additional tools, namely the biomolecule ID mapping  service (g:Convert),                      gene expression similarity searcher (g:Sorter) and  gene homology searcher (g:Orth) provide numerous ways for further  analysis                      and interpretation. In this update, we have  implemented several features of interest to the community: (i)  functional analysis                      of single nucleotide polymorphisms and other DNA  polymorphisms is supported by chromosomal queries; (ii) network analysis                      identifies enriched protein–protein interaction  modules in gene lists; (iii) functional analysis covers human disease  genes;                      and (iv) improved statistics and filtering provide  more concise results. g:Profiler is a regularly updated resource that is                      available for a wide range of species, including  mammals, plants, fungi and insects.
KOBAS 2.0: a web server for annotation and identification of enriched pathways and diseases
Abstract: High-throughput experimental technologies often identify dozens to  hundreds of genes related to, or changed in, a biological                      or pathological process. From these genes one wants  to identify biological pathways that may be involved and diseases that                      may be implicated. Here, we report a web server,  KOBAS 2.0, which annotates an input set of genes with putative pathways  and                      disease relationships based on mapping to genes  with known annotations. It allows for both ID mapping and cross-species  sequence                      similarity mapping. It then performs statistical  tests to identify statistically significantly enriched pathways and  diseases.                      KOBAS 2.0 incorporates knowledge across 1327  species from 5 pathway databases (KEGG PATHWAY, PID, BioCyc, Reactome  and Panther)                      and 5 human disease databases (OMIM, KEGG DISEASE,  FunDO, GAD and NHGRI GWAS Catalog). KOBAS 2.0 can be accessed at http://kobas.cbi.pku.edu.cn.
ICSNPathway: identify candidate causal SNPs and pathways from genome-wide association study by one analytical framework
Abstract: Genome-wide association study (GWAS) is widely utilized to identify  genes involved in human complex disease or some other                      trait. One key challenge for GWAS data  interpretation is to identify causal SNPs and provide profound evidence  on how they                      affect the trait. Currently, researches are  focusing on identification of candidate causal variants from the most  significant                      SNPs of GWAS, while there is lack of support on  biological mechanisms as represented by pathways. Although pathway-based  analysis                      (PBA) has been designed to identify disease-related  pathways by analyzing the full list of SNPs from GWAS, it does not  emphasize                      on interpreting causal SNPs. To our knowledge, so  far there is no web server available to solve the challenge for GWAS  data                      interpretation within one analytical framework.  ICSNPathway is developed to identify candidate causal SNPs and their  corresponding                      candidate causal pathways from GWAS by integrating  linkage disequilibrium (LD) analysis, functional SNP annotation and PBA.                      ICSNPathway provides a feasible solution to bridge  the gap between GWAS and disease mechanism study by generating  hypothesis                      of SNP → gene → pathway(s). The ICSNPathway server  is freely available at http://icsnpathway.psych.ac.cn/.
AnnotQTL: a new tool to gather functional and comparative information on a genomic region
Abstract: AnnotQTL is a web tool designed to aggregate functional annotations from  different prominent web sites by minimizing the redundancy                      of information. Although thousands of QTL regions  have been identified in livestock species, most of them are large and  contain                      many genes. This tool was therefore designed to  assist the characterization of genes in a QTL interval region as a step  towards                      selecting the best candidate genes. It localizes  the gene to a specific region (using NCBI and Ensembl data) and adds the                      functional annotations available from other  databases (Gene Ontology, Mammalian Phenotype, HGNC and Pubmed). Both  human genome                      and mouse genome can be aligned with the studied  region to detect synteny and segment conservation, which is useful for  running                      inter-species comparisons of QTL locations.  Finally, custom marker lists can be included in the results display to  select                      the genes that are closest to your most significant  markers. We use examples to demonstrate that in just a couple of hours,                      AnnotQTL is able to identify all the genes located  in regions identified by a full genome scan, with some highlighted based                      on both location and function, thus considerably  increasing the chances of finding good candidate genes. AnnotQTL is  available                      at http://annotqtl.genouest.org.                   
Génie: literature-based gene prioritization at multi genomic scale
Abstract: Biomedical literature is traditionally used as a way to inform  scientists of the relevance of genes in relation to a research                      topic. However many genes, especially from poorly  studied organisms, are not discussed in the literature. Moreover, a  manual                      and comprehensive summarization of the literature  attached to the genes of an organism is in general impossible due to the                      high number of genes and abstracts involved. We  introduce the novel Génie algorithm that overcomes these problems by  evaluating                      the literature attached to all genes in a genome  and to their orthologs according to a selected topic. Génie showed high  precision                      (up to 100%) and the best performance in comparison  to other algorithms in most of the benchmarks, especially when high  sensitivity                      was required. Moreover, the prioritization of  zebrafish genes involved in heart development, using human and mouse  orthologs,                      showed high enrichment in differentially expressed  genes from microarray experiments. The Génie web server supports  hundreds                      of species, millions of genes and offers novel  functionalities. Common run times below a minute, even when analyzing  the human                      genome with hundreds of thousands of literature  records, allows the use of Génie in routine lab work. Availability: http://cbdm.mdc-berlin.de/tools/genie/.
Nucleic Acids Research: Web Server Issue
 
