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PORTIA: Fast and Accurate Inference of Gene Regulatory Networks through Robust Precision Matrix Estimation

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PORTIA

Lightning-fast Gene Regulatory Network (GRN) inference tool.

PORTIA builds on power transforms and covariance matrix inversion to approximate GRNs, and is orders of magnitude faster than other existing tools (as of August 2021).


How to use it

Install the dependencies:

pip3 -r requirements.txt

For using the end-to-end inference algorithm, install dependencies from requirements-etel.txt instead.

Install the package:

python3 setup.py install

In Python, create an empty dataset:

import portia as pt

dataset = pt.GeneExpressionDataset()

Microarray experiments can be added with the GeneExpressionDataset.add method. data must be an iterable (list, NumPy array, etc).

for exp_id, data in enumerate(your_data):
    dataset.add(pt.Experiment(exp_id, data))

Gene knock-out experiments can be encoded using the knockout optional parameter.

dataset.add(pt.Experiment(exp_id, data, knockout=[gene_idx]))

where gene_idx is the (0-based) index of the gene being knocked out. Dual/multiple knock-out experiments are supported, but won't help in the inference process in any way.

Run PORTIA on your dataset:

M_bar = pt.run(dataset, method='fast')

The output M_bar is a matrix, where each element M_bar[i, j] is a score in the range [0, 1] reflecting the confidence about gene i being a regulator for target gene j. A whitelist of putative transcription factors can be specified with the tf_idx argument. tf_idx must be a (0-based) list of gene indices.

M_bar = pt.run(dataset, tf_idx=tf_idx, method='fast')

Finally, rank and store the results in a text file. gene_names is the list of your genes, provided in the correct order.

with open('your_destination/results.txt', 'w') as f:
    for gene_a, gene_b, score in pt.rank_scores(M_bar, gene_names, limit=10000):
        f.write(f'{gene_a}\t{gene_b}\t{score}\n')

Real examples on the DREAM datasets are provided in the scripts/ folder.

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