Skip to main content

Identification of allele-specific events in sequencing experiments.

Project description

MixALime: Mixture models for Allelic Imbalance Estimation

Python 3.10+ as of now is not supported due to the fact that datatable package does not support it either. This will change as soon as datatable is released to 1.1.0.

MixALime is a tool for the identification of allele-specific events in high-throughput sequencing data. It works by modelling counts data as a mixture of two Negative Binomial or Beta Negative Binomial distributions (where the latter is more applicable in case of noisy data at a cost of loss of sensitivity).

The package is almost easy to use and we advise everyone to just jump straight to installing MixALime and invoking the help command in a command line:

> pip3 install mixalime
> mixalime --help

We believe that the help section of MixALime covers its functionality well enough. Furthermore, the package arrives with a small demo dataset included and an easy-to-follow instruction in the abovementioned help section. So do not waste your time looking for how-to-clues or tutorials here, just use --help.

Actually this README.md will probably be more complete and detailed one day than it is now, the README-writing person was just too tired at the moment.

For the sake of following the social norms that impose a requirement of README files to be useful, in the next section you'll find the excerpt from --help command:

Demo

A typical MixALime session consists of sequential runs of create, fit, test, combine and, finally, export all, plot commands. For instance, we provide a demo dataset that consists of a bunch of BED-like files with allele counts at SNVs (just for the record, MixALime can work with most vcf and BED-like file formats):

> mixalime export demo

A scorefiles folder should appear now in a working directory with a plenty of BED-like files. First, we'd like to parse those files into a MixALime-friendly and efficient data structures for further usage, as well as perform some
basic filtering if necessary:

> mixalime create myprojectname scorefiles

Then we fit model parameters to the data with Negative Binomial distribution:

> mixalime fit myprojectname NB

Next we obtain raw p-values:

> mixalime test myprojectname

Usually we'd want to combine p-values across samples and apply a FDR correction:

> mixalime combine myprojectname

Finally, we obtain fancy plots fir diagnostic purposes and easy-to-work with tabular data:

> mixalime export all myprojectname results_folder
> mixalime plot myprojectname results_folder

You'll find everything of interest in results_folder.

Combination of p-values across groups

Note: a popular synonym for "combination" in this context is aggregation.

One important feature that is not covered by the glorified --help in a very obvious fashion is a combination of p-values across separate groups (e.g. one group can be a treatment and the other is a control). The combine command with default options combines all the p-values. This can be changed by supplying the --group option followed by either a list of filenames that make up that group or a file that contains a list (newline-separated) of those files (the most convenient approach, probably), e.g.:

> mixalime combine --subname treatment -g vcfs/file1.vcf.gz -g vfcfs/file2.vfc.gz -g vcfs/file3.vcf.gz myproject
> mixalime combine --subname control -g vcfs/file4.vcf.gz -g vfcfs/file5.vfc.gz -g vcfs/file6.vcf.gz myproject

or

> mixalime combine --subname treatment -g group_treatment.tsv combine myproject
> mixalime combine --subname control -g group_control.tsv combine myproject

The --subname option is necessary if you wish to avoid different combine invocations overriding each other.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

mixalime-2.2.16.tar.gz (3.1 MB view hashes)

Uploaded Source

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page