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1.
Nucleic Acids Res ; 42(Database issue): D1007-12, 2014 Jan.
Article in English | MEDLINE | ID: mdl-24270788

ABSTRACT

We have developed Lynx (http://lynx.ci.uchicago.edu)--a web-based database and a knowledge extraction engine, supporting annotation and analysis of experimental data and generation of weighted hypotheses on molecular mechanisms contributing to human phenotypes and disorders of interest. Its underlying knowledge base (LynxKB) integrates various classes of information from >35 public databases and private collections, as well as manually curated data from our group and collaborators. Lynx provides advanced search capabilities and a variety of algorithms for enrichment analysis and network-based gene prioritization to assist the user in extracting meaningful knowledge from LynxKB and experimental data, whereas its service-oriented architecture provides public access to LynxKB and its analytical tools via user-friendly web services and interfaces.


Subject(s)
Databases, Genetic , Disease/genetics , Phenotype , Search Engine , Autistic Disorder/genetics , Genes , Genomics , Humans , Internet , Knowledge Bases , Seizures/genetics , Systems Integration
2.
Adv Exp Med Biol ; 799: 39-67, 2014.
Article in English | MEDLINE | ID: mdl-24292961

ABSTRACT

Recent technological advances in genomics now allow producing biological data at unprecedented tera- and petabyte scales. Yet, the extraction of useful knowledge from this voluminous data presents a significant challenge to a scientific community. Efficient mining of vast and complex data sets for the needs of biomedical research critically depends on seamless integration of clinical, genomic, and experimental information with prior knowledge about genotype-phenotype relationships accumulated in a plethora of publicly available databases. Furthermore, such experimental data should be accessible to a variety of algorithms and analytical pipelines that drive computational analysis and data mining. Translational projects require sophisticated approaches that coordinate and perform various analytical steps involved in the extraction of useful knowledge from accumulated clinical and experimental data in an orderly semiautomated manner. It presents a number of challenges such as (1) high-throughput data management involving data transfer, data storage, and access control; (2) scalable computational infrastructure; and (3) analysis of large-scale multidimensional data for the extraction of actionable knowledge.We present a scalable computational platform based on crosscutting requirements from multiple scientific groups for data integration, management, and analysis. The goal of this integrated platform is to address the challenges and to support the end-to-end analytical needs of various translational projects.


Subject(s)
Translational Research, Biomedical/methods , Translational Research, Biomedical/trends , Data Mining/methods , Data Mining/trends , Databases, Genetic/trends , Genomics/methods , Genomics/trends , Humans
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