Genomics of Gene Expression

Welcome to the ConesaLab website

Job positions available

About The Lab

The Genomics of Gene Expression is led by Dr. Ana Conesa from the Institute for Integrative Systems Biology (I2SysBio), Spanish National Research Council (CSIC).

We are interested in understanding functional aspects of gene expression by combining a wide variety of high-throughput molecular techniques, including transcriptomics, epigenomics, proteomics, metabolomics, metagenomics and single-cell data, both for model and non-model species. Our lab develops statistical methods and user-friendly software tools to analyze these multi-omics data. Our most current interest is the application of long reads sequencing technologies for transcriptome analysis and the integration of multi-omics data to model chromatin-metabolome regulation.

Research Lines

We have created statistical methods for time-course analysis of gene expression data (maSigPro), multifactorial designs (ASCA-genes) and non-parametric approaches in RNA-seq differential expression analysis (NOISeq). Our ARSyN method is an ASCA based approach to identify and remove batch effects in NGS datasets. Moreover, the QualiMap tool assesses the quality of short read mapped data, while SpongeScan can be used to identify lncRNAs acting as microRNA sponges.

We are developing methods and software for the analysis of alternative isoform expression and its effect on the phenotype. These methodologies leverage long reads technologies for the accurate detection of full-length transcripts. Our tools include SQANTI, for the quality control of long-reads transcriptomics data, IsoAnnot, for functional annotation with isoform resolution, and tappAS, for statistical analysis of these new data.

We have created a wide array of tools for the analysis of multi-omics data, namely NGS, metabolomics and proteomics data. These include annotation of multi-omics experiments (STATegraEMS), experimental design (MultiPower and MultiML), removal of multi-omics batch effects (MultiBaC), simulation of multi-omics datasets (MOSim), statistical integration (MORE), and visualization of multi-omics data (Paintomics). We have also created the STATegra and MultiMip6 multi-omics datasets that are made available to the scientific community.

We are developing cutting edge algorithms to analyze single cell data, taking special focus on the use of long read data. This goes in combination with spatial-transcriptomics, shaping the future of the field.

Latest news

Closed registration for the MDA Course
The Genomics of the Gene Expression Lab has closed registration for the International Course on Massive...
Ana Conesa invited to the Cancer Center & Genetics Institute
On February 14, 2014  Dr. Ana Conesa will present her seminar with the title “Preeminence Seminar-...
DEANN Project - exchange program started
The DEANN project has already started exchanging  researches between different countries. The first partner...
International Course on Massive Data Analysis: Transcriptomics 10th-14th March 2014, Valencia (Spain)
Please visit the webpage of the course for more details. http://bioinfo.cipf.es/mda14transcriptomics/ What...
1 22 23 24 25 26 27