| URL: | http://bioinformatics.czc.hokudai.ac.jp/ELM |
| Full name: | enhanced lowest-common-ancestor based method |
| Description: | An enhanced lowest-common-ancestor based method (ELM) to effectively identify viruses from massive sequence data. |
| Year founded: | 2014 |
| Last update: | |
| Version: | |
| Accessibility: |
Unaccessible
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| Country/Region: | Japan |
| Data type: | |
| Data object: | |
| Database category: | |
| Major species: |
NA
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| Keywords: |
| University/Institution: | Hokkaido University |
| Address: | Division of Bioinformatics, Research Center for Zoonosis Control, Hokkaido University, Sapporo, Hokkaido, 001-0020 Japan |
| City: | Hokkaido |
| Province/State: | |
| Country/Region: | Japan |
| Contact name (PI/Team): | Keisuke Ueno |
| Contact email (PI/Helpdesk): | ueno@hokudai.ca.jp |
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ELM: enhanced lowest common ancestor based method for detecting a pathogenic virus from a large sequence dataset. [PMID: 25069839]
BACKGROUND: Emerging viral diseases, most of which are caused by the transmission of viruses from animals to humans, pose a threat to public health. Discovering pathogenic viruses through surveillance is the key to preparedness for this potential threat. Next generation sequencing (NGS) helps us to identify viruses without the design of a specific PCR primer. The major task in NGS data analysis is taxonomic identification for vast numbers of sequences. However, taxonomic identification via a BLAST search against all the known sequences is a computational bottleneck. |