Sharing and describing experimental results unambiguously with sufficient detail to enable replication of results is a fundamental tenet of scientific research. In today’s cluttered world of “-omics” sciences, data standards and standardized use of terminologies and ontologies for biomedical informatics play an important role in reporting high-throughput experiment results in formats that can be interpreted by both researchers and analytical tools. Increasing adoption of Semantic Web and Linked Data technologies for the integration of heterogeneous and distributed health care and life sciences (HCLSs) datasets has made the reuse of standards even more pressing; dynamic semantic query federation can be used for integrative bioinformatics whe...
Background: The RDF triple provides a simple linguistic means of describing limitless types of infor...
The volume of publicly available genomic scale data is increasing. Genomic datasets in public reposi...
Motivation: Integrating heterogeneous data across distributed sources is a major requirement for in ...
Sharing and describing experimental results unambiguously with sufficient detail to enable replicati...
Background: The study and analysis of gene expression measurements is the primary focus of functiona...
Background: With the advent of inexpensive assay technologies, there has been an unprecedented growt...
Motivation: Experimental and predicted data concerning gene transcriptional regulation are distribut...
International audienceBackground: In life sciences, there has been a long-standing effort of standar...
Data integration promises to be one of the main catalysts in enabling new insights to be drawn from ...
National audienceOver the past few years, research programs involving genetic, genomic and post-geno...
One of the most common problems encountered while deciphering results from expression profiling expe...
Gene expression studies are generally performed through multi-step analysis processes, which require...
Gene expression studies are generally performed through multi-step analysis processes, which require...
Background: The RDF triple provides a simple linguistic means of describing limitless types of infor...
The volume of publicly available genomic scale data is increasing. Genomic datasets in public reposi...
Motivation: Integrating heterogeneous data across distributed sources is a major requirement for in ...
Sharing and describing experimental results unambiguously with sufficient detail to enable replicati...
Background: The study and analysis of gene expression measurements is the primary focus of functiona...
Background: With the advent of inexpensive assay technologies, there has been an unprecedented growt...
Motivation: Experimental and predicted data concerning gene transcriptional regulation are distribut...
International audienceBackground: In life sciences, there has been a long-standing effort of standar...
Data integration promises to be one of the main catalysts in enabling new insights to be drawn from ...
National audienceOver the past few years, research programs involving genetic, genomic and post-geno...
One of the most common problems encountered while deciphering results from expression profiling expe...
Gene expression studies are generally performed through multi-step analysis processes, which require...
Gene expression studies are generally performed through multi-step analysis processes, which require...
Background: The RDF triple provides a simple linguistic means of describing limitless types of infor...
The volume of publicly available genomic scale data is increasing. Genomic datasets in public reposi...
Motivation: Integrating heterogeneous data across distributed sources is a major requirement for in ...