| Literature DB >> 29902176 |
Vivek Navale1, Philip E Bourne2.
Abstract
Biomedical research has become a digital data-intensive endeavor, relying on secure and scalable computing, storage, and network infrastructure, which has traditionally been purchased, supported, and maintained locally. For certain types of biomedical applications, cloud computing has emerged as an alternative to locally maintained traditional computing approaches. Cloud computing offers users pay-as-you-go access to services such as hardware infrastructure, platforms, and software for solving common biomedical computational problems. Cloud computing services offer secure on-demand storage and analysis and are differentiated from traditional high-performance computing by their rapid availability and scalability of services. As such, cloud services are engineered to address big data problems and enhance the likelihood of data and analytics sharing, reproducibility, and reuse. Here, we provide an introductory perspective on cloud computing to help the reader determine its value to their own research.Entities:
Mesh:
Year: 2018 PMID: 29902176 PMCID: PMC6002019 DOI: 10.1371/journal.pcbi.1006144
Source DB: PubMed Journal: PLoS Comput Biol ISSN: 1553-734X Impact factor: 4.475
Examples of cloud types, service models, workflows, and platforms for biomedical applications.
| Biomedical Use | Cloud Type | Cloud Service Models | Cloud Provider Examples | Additional Notes |
|---|---|---|---|---|
| Sequence alignment | Public cloud | IaaS | AWS, Azure, Google | BLAST |
| Long-sequence mapping | Public cloud | IaaS | AWS | CloudAligner, Elastic MapReduce |
| Short-sequence mapping | Public cloud | IaaS | AWS | CloudBurst |
| High-throughput sequencing analysis | Public cloud | IaaS | AWS | Eoulsan package, |
| Sequence alignment and genotyping | Public cloud | IaaS | AWS | Crossbow, Elastic MapReduce |
| NGS and data analysis | Public cloud | IaaS | AWS | Galaxy, open source applications |
| NGS Analysis | Private cloud | PaaS | Bionimbus Protected Data cloud | OpenStack, software to build cloud platforms |
| NGS for clinical diagnostic work | Public cloud | PaaS | AWS CloudMan | Cloud Biolinux, Cloud BioCentral |
| Mutation pattern study in thousands of whole genome sequences | Hybrid cloud | IaaS | AWS EC2 S3 | University resources combined with public cloud |
| Large scale data analysis (TCGA) | Public cloud | PaaS | Google Elastic Compute | Broad Institute FireCloud |
| Large scale data analysis (TCGA) | Public cloud | PaaS | GCP | Institute for Systems Biology |
| Large scale data analysis (TCGA) | Public Cloud | PaaS, SaaS | AWS | Seven Bridges cancer genomics cloud interfaced with AWS and GCP |
| Genomics data analysis | Public cloud | PaaS | AWS | Knowledge Engine |
| Large scale sequencing, data analysis, and integration of phenotypic and clinical data | Public cloud | PaaS, SaaS | AWS, Microsoft Azure | DNAnexus |
| Workflow applications for genomics | Public cloud | PaaS, SaaS | Google cloud platform | DNAstack |
| Real-time ECG monitoring | Hybrid cloud | IaaS | AWS EC2 | Combined use of on-site resources with public cloud |
| Telemedicine service 12-lead ECG | Public cloud | PaaS | Microsoft Azure | Deployment of secure ECG applications, visualization and data management services with cloud-based database |
| Diagnostic image storage and retrieval | Public cloud | PaaS | AWS, Microsoft Azure, Google Apps Engine | Hosting of Picture Archive Communication System core modules to set up medical data repositories |
| Automated microbial sequence analysis | Public cloud | IaaS | AWS EC2 | cloVR |
| High-performance bioinformatics computing | Public cloud | IaaS | AWS | Cloud Biolinux |
| Biomedical big data | Public cloud | PaaS | AWS, Azure, Google, IBM | Hadoop, MapReduce, BigQuery, Redshift |
Abbreviations: NGS, Next Generation Sequencing; AWS, Amazon Web Services; EC2, Elastic Compute Cloud; S3, Simple Storage Service; TCGA, The Cancer Genome Atlas; GCP, Google Cloud Platform; IaaS, Infrastructure as a Service; PaaS, Platform as a Service; SaaS, Software as a Service
Fig 1Conceptual cloud-based platform with different data types that flow between producers and consumers requiring variable data level needs.