A command line tool for predicting the compounds produced by microbes and the host.
It is recommended to install AMON in a conda environment. The environment can be created by first downloading the environment file.
wget https://raw.githubusercontent.com/shafferm/AMON/master/environment.yaml
Then create a new conda environment. Using the environment file and activate it.
conda env create -f environment.yaml -n AMON
conda activate AMON
Then it can be installed via pip.
pip install AMON-bio
Alternatively AMON can be installed from pip directly.
pip install AMON-bio
AMON includes two scripts. extract_ko_genome_from_organism.py
takes a KEGG organism flat file and makes a list of KOs present in that file. AMON.py
predicts the metabolites that could be produced by the KOs used as input. This can be compared to the KOs present in the host or from some other gene set as well as to as set of KEGG metabolites.
A simple script. Takes a download of an organism file from KEGG or a KEGG organism ID and outputs a new line separate list of KOs present in that file.
extract_ko_genome_from_organism.py --help
usage: extract_ko_genome_from_organism.py [-h] -i INPUT -o OUTPUT
[--from_flat_file]
optional arguments:
-h, --help show this help message and exit
-i INPUT, --input INPUT
KEGG organism identifier or KEGG organism flat file
(default: None)
-o OUTPUT, --output OUTPUT
Output file of new line separated list of KOs from
genome (default: None)
--from_flat_file Indicates that input is a flat flile to be parsered
directly (default: False)
The full script to preform an analysis of possible metabolites originating from the list of KOs. From this as well as optional lists of compounds detected via metabolomics and lists of KOs present in a host or other environment a table of possible origin of compounds can be generated. From the list of compounds that could possibly be generated a pathway enrichment is also done with the hypergeometric test. Also if either of the other lists are included a Venn diagram will be generated representing the compounds which can be produced or where measured between the lists. If both the bacterial and host KOs are given a heatmap of pathway enrichments will be generated as well and in the enrichment test only compounds which are predicted to be uniquely generated by the bacteria or the host will be used.
The gene_set
parameter is a list that can be in the form of a plain text file that is a white space separated list of KO ids, a tsv or csv where the column labels are KO ids or a biom formatted file where the observation ids are KO ids. These are the KOs that will be used to determine the compounds that could be generated by the bacterial community. This and the output directory where all results will be written are the only required requirements. There are two other optional inputs: detected_compounds
and other_gene_set
. detected_compounds
is a set of compounds that where detected in metabolomics of the sample and can come in any of the forms available for the input. other_gene_set
is a set of KO ids that are encoded by the host or another set of genes that can be expressed as KO ids. This can also take any of the forms available to the input parameter.
Two flags are available that will affect the Venn diagram made and the enrichment analysis that is done. detected_only
will only include compounds that were detected as the background set of compounds for the hypergeometric test. This flag requires the compound_detected
variable to be used. The rn_compound_only
flag makes it so that only detected compounds which have a reaction associated with them in KEGG will be used for both the Venn diagram and the hypergeometric test.
Finally a set of locations for KEGG FTP downloaded files is avaliable. These inputs are optional and if they are not provided the KEGG API will be used to retrieve the records necessary. It is much faster to run with the KEGG FTP downloaded files if you have access to them.
NOTE: the KEGG API has limits. For small datasets, (< 100 KOs/COs), data can be pulled quickly and in parallel. However, pulling all data for a reasonably sized dataset from the KEGG API will be rate-limited by KEGG and cannot be done in parallel. Sometimes, KEGG will even deny the connection for this synchronous download if you have hit the request rate limit. If this happens, you may have to wait 30-60 minutes before trying again. If you have any suggestions for how to work within these limits please create an issue or pull request with a fix. Otherwise, paying for a subscription to the KEGG FTP will avoid this issue entirely.
All outputs are written to the output
directory. If only the input
parameter is given then two files will be generated called origin_table.tsv, kegg_mapper.tsv and bacteria_enrichment.tsv. The origin_table.tsv has rows as the compounds that could be generated and the first column is true or false indicating if the bacterial KOs provided could generate this KO. If the other_gene_set
input is provided an additional column will be generated in this table with true/false values indicating if this set of KOs could generate these compounds. If the detected_compounds
parameter is given then an additional column with true/false values indicating whether or not this compound was generated is added.
To visualize the compounds predicted to be produced by microbiome as well as optionally the host and measured compounds the kegg_mapper.tsv file can used. This file can be used as input here. This will color the detected compounds. Blue compounds are generated only by the microbiome and yellow are generated only by the host. Yellow compounds could have been generated by both. Compounds that were detected have an orange outline, with a light orange fill if that compound was not predicted to be produced by microbiome or host.
The bacteria_enrichment.tsv file, and the host_enrichment.tsv file if the other_gene_set
parameter is given, gives the results of the pathway enrichment analysis from the compounds able to be produced by the KOs provided. When the other_gene_set
parameter is given a heatmap is made to compare the significant pathways present from the bacteria and host KO lists.
When the other_gene_set
and/or detected_compounds
parameters are given a venn diagram will be made to see overlap in compounds possibly generated or detected.
amon.py --help
usage: amon.py [-h] -i GENE_SET -o OUTPUT_DIR
[--detected_compounds DETECTED_COMPOUNDS]
[--other_gene_set OTHER_GENE_SET] [--detected_only]
[--rn_compound_only] [--ko_file_loc KO_FILE_LOC]
[--rn_file_loc RN_FILE_LOC] [--co_file_loc CO_FILE_LOC]
[--pathway_file_loc PATHWAY_FILE_LOC] [--save_entries]
[--verbose]
optional arguments:
-h, --help show this help message and exit
-i GENE_SET, --gene_set GENE_SET
KEGG KO's from bacterial community or organism of
interest in the form of a white space separated list,
a tsv or csv with KO ids as column names or a biom
file with KO ids as observations (default: None)
-o OUTPUT_DIR, --output_dir OUTPUT_DIR
directory to store output (default: None)
--detected_compounds DETECTED_COMPOUNDS
list of compounds detected via metabolomics (default:
None)
--other_gene_set OTHER_GENE_SET
white space separated list of KEGG KO's from the host,
another organism or other environment (default: None)
--detected_only only use detected compounds in enrichment analysis
(default: False)
--rn_compound_only only use compounds with associated reactions (default:
False)
--ko_file_loc KO_FILE_LOC
Location of ko file from KEGG FTP download (default:
None)
--rn_file_loc RN_FILE_LOC
Location of reaction file from KEGG FTP download
(default: None)
--co_file_loc CO_FILE_LOC
Location of compound file from KEGG FTP download
(default: None)
--pathway_file_loc PATHWAY_FILE_LOC
Location of pathway file from KEGG FTP download
(default: None)
--save_entries Save json file of KEGG entries at all levels used in
analysis for deeper analysis (default: False)
--verbose verbose output (default: False)