Phase II year
2009
(last award dollars: 2010)
Phase II Amount
$1,165,367
The first wave of Next Generation ("Next Gen") sequencing technologies combines molecular resolution with extremely high throughput to dramatically reduce sequencing costs and increase assay sensitivity and specificity. These technologies will provide large numbers of laboratories with "Genome Center" levels of throughput to make discoveries and develop new assays never before imagined. However, widespread adoption of Next Gen will be hindered because current bioinformatics programs do not scale; they are inefficient in data storage, processing, and memory utilization. The most popular programs typically copy and recopy data to new files many times during processing, require that all data be maintained in random access memory (RAM) when running, and cannot incrementally process data. To overcome these issues, fundamental changes in data management and processing are needed. Geospiza and The HDF Group are collaborating to develop portable, scalable, bioinformatics technologies based on HDF5 (Hierarchical Data Format http://www.hdfgroup.org ). We call these extensible domain-specific data technologies "BioHDF." BioHDF will implement a data model that supports primary DNA sequence information (reads, quality values, and meta data) and results from sequence assembly and variation detection algorithms. BioHDF will extend HDF5 data structures and library routines with new features (indexes, additional compression, and graph layouts) to support the high performance data storage and computation requirements of Next Gen Sequencing. BioHDF will include APIs, software tools, and a viewer based on HDFView to enable its use in the bioinformatics and research communities. Using BioHDF, researchers will be able perform whole genome shotgun sequencing (WGS), "tag and count" experiments (EST analysis, promoter mapping, DNA methylation, functional mapping), and variation analysis; they will also be able to export datasets in formats accepted by the key databases to publish their work. As a programming environment, BioHDF can be easily extended to accept data from new data collection platforms, and format data for interchange with many databases. Core BioHDF tools will be delivered to the research community as an open source technology. Geospiza will use BioHDF in its Finch. line of products to deliver software systems and applications to support clinical research, diagnostics, and other relevant activities that rely on genetic data.
Public Health Relevance: The overall goal of the BioHDF Phase II project is to make it possible for medical research and clinical communities to take full advantage of the latest DNA sequencing platforms in their efforts to improve public health. Geospiza and The HDF Group will build on their expertise in Laboratory Information Management Systems and high- volume, high-complexity scientific data management systems to create and deliver bioinformatics software systems that can handle the massive amounts of data produced by the latest sequencing instruments. The integrated systems will keep track of collected samples, sequence data, DNA tests, and other laboratory records and biological data associated with the entire sequencing and analysis process, and make it easy for clinicians to use the technology to do their work.
Project Terms: API; Address; Adoption; Algorithms; Analysis, Data; Assay; Basic Research; Basic Science; Bio-Informatics; Bioassay; Bioinformatics; Biologic Assays; Biological; Biological Assay; Clinical; Clinical Research; Clinical Study; Communities; Computer Programs; Computer Software Tools; Computer software; Consensus; DNA; DNA Methylation; DNA Sequence; Data; Data Analyses; Data Banks; Data Bases; Data Collection; Data Set; Data Storage and Retrieval; Databank, Electronic; Databanks; Database, Electronic; Databases; Dataset; Deoxyribonucleic Acid; Detection; Development; Diagnostic; ESTs; Environment; Expressed Sequence Tags; Finches; Future Generations; Genetic; Genome; Goals; Graph; Heart; Infrastructure; Investigators; Laboratories; Libraries; MAPI; Management Information Systems; Maps; Medical Research; Memory; Methods; Molecular; Performance; Phase; Process; Programs (PT); Programs [Publication Type]; Promoter; Promoters (Genetics); Promotor; Promotor (Genetics); Public Health; Publishing; Reading; Records; Research; Research Infrastructure; Research Personnel; Researchers; Resolution; Running; SEQ-AN; STTR; Sampling; Science; Secure; Sensitivity and Specificity; Sequence Analyses; Sequence Analysis; Small Business Technology Transfer Research; Software; Software Tools; Solutions; Structure; System; System, LOINC Axis 4; Technology; Testing; Time; Tools, Software; Variant; Variation; Whole-Genome Shotgun Sequencing; Work; alkaline protease inhibitor; base; clinical data repository; clinical data warehouse; computer program/software; computerized data processing; cost; data format; data management; data modeling; data processing; data repository; data retrieval; data storage; experience; experiment; experimental research; experimental study; file format; improved; indexing; instrument; memory process; microbial alkaline proteinase inhibitor; next generation; open source; programs; public health medicine (field); public health relevance; relational database; research study; signal processing; software systems; tool; usability