| Literature DB >> 27694208 |
Luis Marenco1, Rixin Wang2, Robert McDougal1, Tsviya Olender3, Michal Twik3, Elspeth Bruford4, Xinyi Liu5, Jian Zhang5, Doron Lancet3, Gordon Shepherd1, Chiquito Crasto6.
Abstract
We present here an exploration of the evolution of three well-established, web-based resources dedicated to the dissemination of information related to olfactory receptors (ORs) and their functional ligands, odorants. These resources are: the Olfactory Receptor Database (ORDB), the Human Olfactory Data Explorer (HORDE) and ODORactor. ORDB is a repository of genomic and proteomic information related to ORs and other chemosensory receptors, such as taste and pheromone receptors. Three companion databases closely integrated with ORDB are OdorDB, ORModelDB and OdorMapDB; these resources are part of the SenseLab suite of databases (http://senselab.med.yale.edu). HORDE (http://genome.weizmann.ac.il/horde/) is a semi-automatically populated database of the OR repertoires of human and several mammals. ODORactor (http://mdl.shsmu.edu.cn/ODORactor/) provides information related to OR-odorant interactions from the perspective of the odorant. All three resources are connected to each other via web-links.Database URL: http://senselab.med.yale.edu; http://genome.weizmann.ac.il/horde/; http://mdl.shsmu.edu.cn/ODORactor/.Entities:
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Year: 2016 PMID: 27694208 PMCID: PMC5045865 DOI: 10.1093/database/baw132
Source DB: PubMed Journal: Database (Oxford) ISSN: 1758-0463 Impact factor: 3.451
The table depicts a summary of the four olfaction-related databases in SenseLab
| Database | ORDB | OdorDB | OdorMapDB | ORModelDB |
|---|---|---|---|---|
| Entries | 18 717 | 257 | 48 | 8 |
| Description | Description | Description | Description | |
| Receptor Type | Chem. Abstract. | Speciesa | GenBank Linkb | |
| Organisma | Number | Strain | Speciesa | |
| Source Tissue | Molecular. | Sex | PubMedb | |
| Chromosome | Formula | Age | ||
| GenBank Linkb | Functional Group | Weight | ||
| PubMed Linkc | Cyclical Nature | Brain Region | Functional Anal. Refb | |
| Strain | Hydrocarbon | Sub Region | Modeling Refb. | |
| Common Name | Feature | Side | Model 3-D structure | |
| Gene Source | 2D Model | View | PDB-formatted Link | |
| Sequence Lab. | Glomerular | Serial Number | ||
| Length | Activity Map | Odor | ||
| Odorant Blend | ||||
| Nucleotide Sequence | Concentration | |||
| Amino Acid Sequence | Exposure Time | |||
| Sequence Type | Exposure Frequency | |||
| EXPASY Link | Method | |||
| Note | ||||
| Functional Anal. | Authors | |||
| Lab | PubMed Linkb | |||
| Functional Anal. Ref.b | Map Picture | |||
| Microarray | Scan Number Control | |||
| Experiment. | Scan Number | |||
| Stimulate | ||||
| Subject Count | ||||
| Image Size | ||||
| Primary Data | ||||
| Behavioral Studyb |
The table shows the number of entries for each information as well as a list of the attributes or descriptors for each entry in each database. The EAV/CR data-base architecture also allows the storage of information available in different databases stored in common tables in the databases. ‘a’ depicts Organism or Species Name; ‘b’ depicts a link to an entry in GenBank; ‘c’ depicts a link to the biomedical literature in PubMed. The underlined attributes for each database are linked to one or more of the other four databases.
Figure 1The figure illustrates the integration between the four olfaction databases in SenseLab: ORDB, OdorDB, OdorMapDB and ORModelDB. The scans of entries in each of the databases are highlighted. The double-headed arrows show the integration among the resources. The ‘Ligand’ attribute (see Table 1 for attributes) in ORDB ‘octanal’ can be accessed in OdorDB, as can the ‘Ligand’ attribute in ORModelDB, as well as the ‘Odor’ attribute in OdorMapDB. The ‘Chemosensory Receptor’ attribute in ORModelDB can be accessed through ORDB. The EAV/CR architecture allows the storage of information without the need for replication. Similarly, the OR name can be accessed from OdorDB as well as ORModelDB.
Figure 2The nomenclature symbol assignment process applied to mouse OR genes. Using the MMS algorithm we compared the mouse OR repertoire to human, dog and opossum and performed a hierarchical symbol assignment as described in the text. Identical: genes identified as mutual-best-hit; similar: genes identified as additional ortholog candidates (second-, third-best, etc.). Red numerals indicate the count of gene symbols assigned to genes in each of the pipeline steps.
Figure 3ODORactor results that demonstrate probabilities for interaction between an organic molecule queried (using the SMILES input format) and mouse ORs. The figure shows that there are six possible receptors that are likely to bind the organic molecule with probabilities ranging from 85 to 51%. Links to the receptors in GenBank, UniProt and other olfactory databases are also indicated.