| Literature DB >> 25825658 |
Heejoon Chae1, Inuk Jung2, Hyungro Lee1, Suresh Marru3, Seong-Whan Lee4, Sun Kim5.
Abstract
The exponential increase of genomic data brought by the advent of the next or the third generation sequencing (NGS) technologies and the dramatic drop in sequencing cost have driven biological and medical sciences to data-driven sciences. This revolutionary paradigm shift comes with challenges in terms of data transfer, storage, computation, and analysis of big bio/medical data. Cloud computing is a service model sharing a pool of configurable resources, which is a suitable workbench to address these challenges. From the medical or biological perspective, providing computing power and storage is the most attractive feature of cloud computing in handling the ever increasing biological data. As data increases in size, many research organizations start to experience the lack of computing power, which becomes a major hurdle in achieving research goals. In this paper, we review the features of publically available bio and health cloud systems in terms of graphical user interface, external data integration, security and extensibility of features. We then discuss about issues and limitations of current cloud systems and conclude with suggestion of a biological cloud environment concept, which can be defined as a total workbench environment assembling computational tools and databases for analyzing bio/medical big data in particular application domains.Entities:
Keywords: Analysis; Big data; Bioinformatics; Cloud computing; Data integration; Security; User interface; Workflow
Year: 2013 PMID: 25825658 PMCID: PMC4336112 DOI: 10.1186/2047-2501-1-6
Source DB: PubMed Journal: Health Inf Sci Syst ISSN: 2047-2501
Comparison of bio/medical cloud systems
| Cloud application | Graphical UI | External data integration | Security | Extensibility | Cloud Usage |
|---|---|---|---|---|---|
| BioVLab | Xbaya | O | MyProxy, AWS Credential | GFac | Pre-built system |
| Cloudburst | - | - | AWS Credential | - | Parallel processing |
| Cloud Bio Linux | - | - | AWS Credential | - | Pre-built system |
| Cloud RSD | - | - | AWS Credential | - | Parallel processing |
| CloVR | CloVR portal | - | AWS Credential | - | Pre-built system |
| Crossbow | - | - | AWS Credential | - | Parallel processing |
| DNAnexus | DNAnexus Web | O | ISO 27002 | - | Computing resource |
| Galaxy | Galaxy Web | O | AWS Credential | Tool Shed | Pre-built system |
| Myrna | - | - | AWS Credential | - | Parallel processing |
| SeqWare | SeqWare Portal | O | GnuPG | Java Modules | Computing resource |
| Taverna | Taverna Workbench | O | WS-Security | API consumer tool | Interoperability |
This is a comparison table of bio/medical cloud systems in terms on their features.
Figure 1BioVLab-MMIA workflow execution in XBaya.
Figure 2Three-layered architecture of BioVLab system. The first layer is XBaya, graphical workflow composer, the second layer is gateway, and the third layer is cloud environment.