| Literature DB >> 30275963 |
Julian Brandl1, Maria Victoria Aguilar-Pontes2, Paul Schäpe3, Anders Noerregaard1, Mikko Arvas4,5, Arthur F J Ram6, Vera Meyer3, Adrian Tsang7, Ronald P de Vries2, Mikael R Andersen1.
Abstract
BACKGROUND: Aspergillus niger is an important fungus used in industrial applications for enzyme and acid production. To enable rational metabolic engineering of the species, available information can be collected and integrated in a genome-scale model to devise strategies for improving its performance as a host organism.Entities:
Keywords: Aspergillus niger; Genome-scale model; Primary metabolism; Secondary metabolism
Year: 2018 PMID: 30275963 PMCID: PMC6158834 DOI: 10.1186/s40694-018-0060-7
Source DB: PubMed Journal: Fungal Biol Biotechnol ISSN: 2054-3085
Fig. 1Types of experimental evidence included in the current version of the model. Panel A) depicts the concept of model test cases included in iJB1325. The test cases consist of a set of active input reactions, inactive genes as well as conditions for the test to pass. Inputs therefore refer to metabolites present in the growth medium or the knockout of a specific gene. Test conditions can be the ability to produce biomass or other compounds. Panel B) shows the different pieces of evidence stored in the model for genes and reactions while Panel C) depicts the information stored about metabolites
Newly introduced pathways
| Degradation | Biosynthesis | Secondary metabolites |
|---|---|---|
| Agmatine degradation | CoQ biosynthesis | Azanigerones |
| Amide degradation | Coprogen biosynthesis | Malformins |
| Aromatics degradation | Storage compounds | Nigragillin |
| Peroxisomal beta oxidation | Ferrichrome | Kotanin |
| Cyanide degradation | Iron assimilation | Funalenone |
| Galacturonic acid degradation | Lipoic acid biosynthesis | Pyranonigrin |
| Detoxification of compounds | Metabolite repair | Aurasperone |
| Glucuronate degradation | NAD biosynthesis | Tetraacetic acid lactone |
| Isoleucine degradation | Thiamin biosynthesis | |
| Leucine degradation | Vitamin metabolism | |
| Lipid degradation | Molybdenum cofactor | |
| Plant biomass degradation | Riboflavin biosynthesis | |
| Purine degradation | ||
| Valine degradation | ||
Table depicting key statistics of the different models
| Model | iMA873 | iJB1325 | CoReCo | iHL1210 |
|---|---|---|---|---|
|
| ||||
| Total | 1380 | 2320 | 4917 | 1764 |
| Transport | 189 | 447 | 0 | 285 |
| Boundary | 0 | 385 | 148 | 189 |
| Unbalanced | 40 | 68 | 148 | – |
| Annotated | 1013 | 1239 | 0 | – |
| No genes | 340 | 604 | 3049 | – |
| Evidence for presence | – | 767 | – | – |
| Known gene | – | 654 | – | – |
|
| ||||
| Total | 1084 | 1818 | 4025 | 1254 |
| Annotated | 0 | 1533 | 0 | |
| Dead-End | 270 | 295 | 1739 | |
|
| ||||
| Total | 871 | 1325 | 4533 | 1210 |
| Verified location | – | 296 | – | – |
| Predicted location | – | 107 | ||
| Known function | – | 707 | – | – |
|
| ||||
| Total | – | 3482 | – | – |
| Gene-reaction | – | 1677 | – | – |
| Metabolite presence | – | 333 | – | – |
| Reaction presence | – | 539 | – | – |
| Gene-compartment | – | 907 | – | – |
|
| ||||
| Total | – | 471 | – | 99 |
| Passing | – | 373 | – | 83 |
| Failing | – | 98 | – | 16 |
|
| ||||
| Total | 371 | 876 | – | – |
Fig. 2Experimental support for individual reactions. a Depicts the strongest experimental support for the presence of individual reactions in the model. The categories according to decreasing experimental support are: “Characterized enzyme”, “Measured, but unknown enzyme”, “Strong similarity to characterized enzyme”, “Other” and “No experimental evidence”. b Shows the evidence codes associated with the individual reaction gene assignments
Fig. 3Experimental support for individual metabolites
Fig. 4Change in transcription level of the genes assigned to metabolic pathways under different conditions. Violin plots showing the change of expression of genes involved in different metabolic pathways depending on the carbon source used