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Genomics pipelines and data integration: challenges and opportunities in the research setting
Authors:Jeremy Davis-Turak  Sean M. Courtney  E. Starr Hazard  W. Bailey Glen Jr.  Willian A. da Silveira  Timothy Wesselman
Affiliation:1. OnRamp Bioinformatics, Inc., San Diego, CA;2. MUSC Bioinformatics, Center for Genomics Medicine, Medical University of South Carolina (MUSC), Charleston, SC;3. Department of Pathology and Laboratory Medicine, MUSC, Charleston, USA;4. Library Science and Informatics, MUSC, Charleston, USA
Abstract:
Introduction: The emergence and mass utilization of high-throughput (HT) technologies, including sequencing technologies (genomics) and mass spectrometry (proteomics, metabolomics, lipids), has allowed geneticists, biologists, and biostatisticians to bridge the gap between genotype and phenotype on a massive scale. These new technologies have brought rapid advances in our understanding of cell biology, evolutionary history, microbial environments, and are increasingly providing new insights and applications towards clinical care and personalized medicine.

Areas covered: The very success of this industry also translates into daunting big data challenges for researchers and institutions that extend beyond the traditional academic focus of algorithms and tools. The main obstacles revolve around analysis provenance, data management of massive datasets, ease of use of software, interpretability and reproducibility of results.

Expert commentary: The authors review the challenges associated with implementing bioinformatics best practices in a large-scale setting, and highlight the opportunity for establishing bioinformatics pipelines that incorporate data tracking and auditing, enabling greater consistency and reproducibility for basic research, translational or clinical settings.

Keywords:High throughput sequencing  bioinformatics pipelines  bioinformatics best practices  RNAseq  ExomeSeq  variant calling  reproducible computational research  genomic data management  analysis provenance
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