Aggregatibacter aphrophilus CCUG 34290 is a microaerophile, mesophilic prokaryote of the family Pasteurellaceae.
microaerophile mesophilic genome sequence 16S sequence| @ref 20215 |
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| Domain Pseudomonadati |
| Phylum Pseudomonadota |
| Class Gammaproteobacteria |
| Order Pasteurellales |
| Family Pasteurellaceae |
| Genus Aggregatibacter |
| Species Aggregatibacter aphrophilus |
| Full scientific name Aggregatibacter aphrophilus (Khairat 1940) Nørskov-Lauritsen and Kilian 2006 |
| Synonyms (2) |
| @ref | Growth | Type | Temperature (°C) | Range | |
|---|---|---|---|---|---|
| 52035 | positive | growth | 37 | mesophilic |
| @ref | Chebi-ID | Metabolite | Utilization activity | Kind of utilization tested | |
|---|---|---|---|---|---|
| 68377 | 15824 ChEBI | D-fructose | + | builds acid from | from API NH |
| 68377 | 17634 ChEBI | D-glucose | + | builds acid from | from API NH |
| 68377 | 17306 ChEBI | maltose | + | builds acid from | from API NH |
| 68377 | 18257 ChEBI | ornithine | - | degradation | from API NH |
| 68377 | 17992 ChEBI | sucrose | + | builds acid from | from API NH |
| 68377 | 27897 ChEBI | tryptophan | - | energy source | from API NH |
| 68377 | 16199 ChEBI | urea | - | hydrolysis | from API NH |
| @ref | Value | Activity | Ec | |
|---|---|---|---|---|
| 68382 | acid phosphatase | + | 3.1.3.2 | from API zym |
| 68377 | alkaline phosphatase | + | 3.1.3.1 | from API NH |
| 68382 | alkaline phosphatase | + | 3.1.3.1 | from API zym |
| 68382 | alpha-chymotrypsin | - | 3.4.21.1 | from API zym |
| 68382 | alpha-fucosidase | - | 3.2.1.51 | from API zym |
| 68382 | alpha-galactosidase | - | 3.2.1.22 | from API zym |
| 68382 | alpha-glucosidase | - | 3.2.1.20 | from API zym |
| 68382 | alpha-mannosidase | - | 3.2.1.24 | from API zym |
| 68382 | beta-galactosidase | - | 3.2.1.23 | from API zym |
| 68377 | beta-galactosidase | - | 3.2.1.23 | from API NH |
| 68382 | beta-glucosidase | - | 3.2.1.21 | from API zym |
| 68382 | beta-glucuronidase | - | 3.2.1.31 | from API zym |
| 68377 | beta-lactamase | - | 3.5.2.6 | from API NH |
| 68382 | cystine arylamidase | - | 3.4.11.3 | from API zym |
| 68382 | esterase (C 4) | - | from API zym | |
| 68382 | esterase lipase (C 8) | - | from API zym | |
| 68377 | gamma-glutamyltransferase | - | 2.3.2.2 | from API NH |
| 68382 | leucine arylamidase | + | 3.4.11.1 | from API zym |
| 68377 | lipase | - | from API NH | |
| 68382 | lipase (C 14) | - | from API zym | |
| 68382 | N-acetyl-beta-glucosaminidase | - | 3.2.1.52 | from API zym |
| 68382 | naphthol-AS-BI-phosphohydrolase | + | from API zym | |
| 68377 | ornithine decarboxylase | - | 4.1.1.17 | from API NH |
| 68377 | proline-arylamidase | - | 3.4.11.5 | from API NH |
| 68382 | trypsin | - | 3.4.21.4 | from API zym |
| 68377 | tryptophan deaminase | - | 4.1.99.1 | from API NH |
| 68377 | urease | - | 3.5.1.5 | from API NH |
| 68382 | valine arylamidase | - | from API zym |
| @ref | Description | Assembly level | INSDC accession | BV-BRC accession | IMG accession | NCBI tax ID | Score | |
|---|---|---|---|---|---|---|---|---|
| 66792 | ASM168080v1 assembly for Aggregatibacter aphrophilus ATCC 7901 | scaffold | 732 | 75.25 |
| @ref | Trait | Model | Prediction | Confidence in % | In training data |
|---|---|---|---|---|---|
| 125439 | spore_formation | BacteriaNetⓘ | no | 99.40 | no |
| 125439 | motility | BacteriaNetⓘ | no | 66.80 | no |
| 125439 | gram_stain | BacteriaNetⓘ | negative | 99.40 | no |
| 125439 | oxygen_tolerance | BacteriaNetⓘ | obligate aerobe | 92.20 | no |
| @ref | Trait | Model | Prediction | Confidence in % | In training data |
|---|---|---|---|---|---|
| 125438 | gram-positive | gram-positiveⓘ | no | 97.94 | no |
| 125438 | anaerobic | anaerobicⓘ | no | 93.20 | no |
| 125438 | aerobic | aerobicⓘ | no | 84.51 | no |
| 125438 | spore-forming | spore-formingⓘ | no | 90.56 | no |
| 125438 | thermophilic | thermophileⓘ | no | 98.00 | yes |
| 125438 | flagellated | motile2+ⓘ | no | 90.99 | no |
| Topic | Title | Authors | Journal | DOI | Year | |
|---|---|---|---|---|---|---|
| Bacterial symbionts in oral niche use type VI secretion nanomachinery for fitness increase against pathobionts. | Oscarsson J, Bao K, Shiratsuchi A, Grossmann J, Wolski W, Aung KM, Lindholm M, Johansson A, Mowsumi FR, Wai SN, Belibasakis GN, Bostanci N. | iScience | 10.1016/j.isci.2024.109650 | 2024 | ||
| Role of OmpA1 and OmpA2 in Aggregatibacter actinomycetemcomitans and Aggregatibacter aphrophilus serum resistance. | Lindholm M, Min Aung K, Nyunt Wai S, Oscarsson J. | J Oral Microbiol | 10.1080/20002297.2018.1536192 | 2019 | ||
| Enzymology | Duplex Quantitative PCR Assay for Detection of Haemophilus influenzae That Distinguishes Fucose- and Protein D-Negative Strains. | de Gier C, Pickering JL, Richmond PC, Thornton RB, Kirkham LA. | J Clin Microbiol | 10.1128/jcm.00982-16 | 2016 | |
| Osteoarticular Infection in Three Young Thoroughbred Horses Caused by a Novel Gram Negative Cocco-Bacillus. | Hudson BJ, Chicken C, Blishen A, Todhunter KH, Begg AP, Chan L, Karagiannis T, Raymond B, Bogema D, Adkins AR, O'Sullivan CB, O'Rourke BA, Roy Chowdhury P, Djordjevic SP, Charles IG, Edgar A, Mitsakos K. | Case Rep Vet Med | 10.1155/2020/9785861 | 2020 | ||
| Phylogeny | Classification, identification, and clinical significance of Haemophilus and Aggregatibacter species with host specificity for humans. | Norskov-Lauritsen N. | Clin Microbiol Rev | 10.1128/cmr.00103-13 | 2014 | |
| Phylogeny | Analysis of mixed sequencing chromatograms and its application in direct 16S rRNA gene sequencing of polymicrobial samples. | Kommedal O, Karlsen B, Saebo O. | J Clin Microbiol | 10.1128/jcm.00213-08 | 2008 | |
| Enzymology | A loop-mediated isothermal amplification procedure targeting the sodA gene for rapid and specific identification of Gallibacterium anatis. | Stepien-Pysniak D, Kosikowska U, Hauschild T, Burzynski A, Wilczynski J, Kolinska A, Nowaczek A, Marek A | Poult Sci | 10.3382/ps/pex420 | 2018 | |
| Phylogeny | Relationships among isolates of oral haemophili as determined by DNA-DNA hybridization. | Potts TV, Mitra T, O'Keefe T, Zambon JJ, Genco RJ | Arch Microbiol | 10.1007/BF00446770 | 1986 |
| #20215 | Parte, A.C., Sardà Carbasse, J., Meier-Kolthoff, J.P., Reimer, L.C. and Göker, M.: List of Prokaryotic names with Standing in Nomenclature (LPSN) moves to the DSMZ. IJSEM ( DOI 10.1099/ijsem.0.004332 ) |
| #52035 | Culture Collection University of Gothenburg (CCUG) ; Curators of the CCUG; CCUG 34290 |
| #66792 | Julia Koblitz, Joaquim Sardà, Lorenz Christian Reimer, Boyke Bunk, Jörg Overmann: Automatically annotated for the DiASPora project (Digital Approaches for the Synthesis of Poorly Accessible Biodiversity Information) . |
| #68377 | Automatically annotated from API NH . |
| #68382 | Automatically annotated from API zym . |
| #124043 | Isabel Schober, Julia Koblitz: Data extracted from sequence databases, automatically matched based on designation and taxonomy . |
| #125438 | Julia Koblitz, Lorenz Christian Reimer, Rüdiger Pukall, Jörg Overmann: Predicting bacterial phenotypic traits through improved machine learning using high-quality, curated datasets. 2024 ( DOI 10.1101/2024.08.12.607695 ) |
| #125439 | Philipp Münch, René Mreches, Martin Binder, Hüseyin Anil Gündüz, Xiao-Yin To, Alice McHardy: deepG: Deep Learning for Genome Sequence Data. R package version 0.3.1 . |
| #126262 | A. Lissin, I. Schober, J. F. Witte, H. Lüken, A. Podstawka, J. Koblitz, B. Bunk, P. Dawyndt, P. Vandamme, P. de Vos, J. Overmann, L. C. Reimer: StrainInfo—the central database for linked microbial strain identifiers. ( DOI 10.1093/database/baaf059 ) |
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