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Human mitochondrial variants annotation using HmtVar.

Project description

HmtNote

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Human mitochondrial variants annotation using HmtVar.

Features

HmtNote is a bioinformatics Python module and command line interface that can be used to annotate human mitochondrial variants from a VCF file, using data available on HmtVar.

Annotations are grouped into basic, cross-reference, variability and predictions, depending on the type of information they provide. It is possible to either use all of them to fully annotate a VCF file, or choose specific annotations of interest.

HmtNote works by pulling the required data from HmtVar on the fly, but if you’re planning to annotate VCF files offline, it is possible to download the annotation database so that HmtNote can use it when no internet connection is available.

For more information, please refer to the Usage section of the documentation.

Installation

PLEASE NOTE: HmtNote only supports Python 3!

The preferred installation method for HmtNote is using pip in a conda environment:

$ conda install requests pandas
$ conda install -c bioconda cyvcf2
$ pip install hmtnote

For more information, please refer to the Installation section of the documentation.

Usage

Command Line Interface

HmtNote can be used as a command line tool, using the annotate command and providing the input VCF file name and the file name or path where the annotated VCF will be saved:

hmtnote annotate input.vcf annotated.vcf

By default, HmtNote will annotate the VCF file using all four groups of annotations (basic, cross-reference, variability and predictions). If desired, you can select which specific annotation you want, using respectively --basic, --crossref, --variab and --predict (or -b, -c, -v, -p), or any combination of these options:

hmtnote annotate input.vcf annotated_basic.vcf --basic
hmtnote annotate input.vcf annotated_crossreferences.vcf --crossref
hmtnote annotate input.vcf annotated_variability.vcf --variab
hmtnote annotate input.vcf annotated_predictions.vcf --predict
hmtnote annotate input.vcf annotate_basic_variability.vcf --basic --variab

By default, HmtNote works by pulling the required data from HmtVar on the fly, but if you’re planning to annotate VCF files offline, first download the annotation database using the dump command:

hmtnote dump

After that, HmtNote is capable of working even when no internet connection is available; this can be achieved using the --offline option after the usual annotation command:

hmtnote annotate input.vcf annotated.vcf --offline
hmtnote annotate input.vcf annotated_variability.vcf --variab --offline

For more information, please refer to the Usage section of the documentation.

Python Module

HmtNote can also be imported in a Python script and its function annotate_vcf() can be used to annotate a given VCF:

from hmtnote import annotate_vcf
annotate_vcf("input.vcf", "annotated.vcf")

By default, annotate_vcf() will annotate the VCF using all four groups of annotations (basic, cross-reference, variability and predictions). If desired, you can specify which kind of annotation you want, using respectively the basic=True, crossref=True, variab=True, predict=True arguments, or any combination of them:

annotate_vcf("input.vcf", "annotated_basic.vcf", basic=True)
annotate_vcf("input.vcf", "annotated_crossreferences.vcf", crossref=True)
annotate_vcf("input.vcf", "annotated_variability.vcf", variab=True)
annotate_vcf("input.vcf", "annotated_predictions.vcf", predict=True)

It is also possible to download the annotation database using the dump() function, and perform offline annotation of VCF files by simply adding the offline=True argument to annotate_vcf():

from hmtnote import dump
dump()
annotate_vcf("input.vcf", "annotated.vcf", offline=True)

For more information, please refer to the Usage section of the documentation.

Credits

This package was created with Cookiecutter and the cc-pypackage project template.

History

0.1.0 (2019-03-03)

  • First release on PyPI.

0.1.1 (2019-03-04)

  • Clean installation requirements for conda;

  • Update documentation.

0.1.2 (2019-03-15)

  • Classes and methods are protected where needed;

  • Code style is clean.

0.1.3 (2019-03-17)

  • Fix issue with –predict annotation, which didn’t retrieve the correct field from HmtVar.

0.1.4 (2019-03-19)

  • Fix issue that prevented importing annotate_vcf() into Python scripts.

0.1.5 (2019-03-20)

  • Add HmtVar ID of the variant in basic and full annotation;

  • Change Disease Score annotation to DiseaseScore.

0.2.0 (2019-03-25)

  • Add warnings to hmtnote command to be compliant with future versions;

  • Check internet connection before trying to annotate variants.

0.3.0 (2019-03-27)

  • Add options to download the annotation database locally;

  • Use local database to annotate variants (instead of calling HmtVar’s API);

  • Fallback to using local database when no internet connection is available;

  • Check if local database actually exists before performing offline annotation;

  • Databases are downloaded asynchronously.

0.3.1 (2019-03-29)

  • Update installation requirements and documentation.

0.4.0 (2019-04-03)

  • Add support for insertion and deletion annotations;

  • Add test suite and files for indels.

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