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setriq: pairwise sequence distances

CircleCI codecov CodeFactor License: MIT

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A Python package written in C++ for computing pairwise distances between (immunoglobulin) sequences.

Documentation

Install

This package is available on PyPI

pip install setriq

Quickstart

setriq inherits from the torch philosophy of callable objects. Each Metric subclass is a callable upon initialisation, taking a list of objects (usually str) and returning a list of float values.

import setriq
metric = setriq.CdrDist()

sequences = [
    'CASSLKPNTEAFF',
    'CASSAHIANYGYTF',
    'CASRGATETQYF'
]
distances = metric(sequences)

The returned list is flat and contains N * (N - 1) / 2 elements, i.e. the lower (or upper) triangle of the distance matrix. To get the square form of the matrix, use scipy.spatial.distance.squareform on the returned distances.

About

As the header suggests, setriq is a no-frills Python package for fast computation of pairwise sequence distances, with a focus on immunoglobulins. It is a declarative framework and borrows many concepts from the popular torch library. It has been optimized for parallel compute on CPU architectures.

Available distance functions:

  • CDRdist
  • Levenshtein
  • TCRdist
  • Hamming
  • Jaro
  • Jaro-Winkler
  • Longest Common Substring
  • Optimal String Alignment

These distance functions are available either through the object-based API (as seen above), which provides the CPU-based parallelism, or the functional API in setriq.single_dispatch. Unlike the object-based API, the functional API does a single comparison between two sequences for every call, i.e. it exposes the C++ distance functions without the parallelism wrapper. This can be useful for integration of setriq with other tools such as PySpark. For example:

from pyspark.sql import SparkSession
from pyspark.sql.functions import udf
from pyspark.sql.types import DoubleType

from setriq import single_dispatch as sd

spark = SparkSession \
   .builder \
   .appName("setriq-spark") \
   .getOrCreate()

df = spark.createDataFrame([('CASSLKPNTEAFF',), ('CASSAHIANYGYTF',), ('CASRGATETQYF',)], ['sequence'])
df = df.withColumnRenamed('sequence', 'a').crossJoin(df.withColumnRenamed('sequence', 'b'))

lev_udf = udf(sd.levenshtein, returnType=DoubleType())  # single dispatch levenshtein distance
df = df.withColumn('distance', lev_udf('a', 'b'))
df.show()

It is important to note, that for setriq.single_dispatch the returned value is always a single float value.

Requirements

A Python version of 3.7 or above is required, as well as a C++ compiler equipped with OpenMP. The package has been tested on Linux and macOS. To get the required OpenMP resources, run:

On Linux:

sudo apt install libomp-dev && sudo apt show libomp-dev

On macOS:

brew install libomp llvm

References

  1. Dash, P., Fiore-Gartland, A.J., Hertz, T., Wang, G.C., Sharma, S., Souquette, A., Crawford, J.C., Clemens, E.B., Nguyen, T.H., Kedzierska, K. and La Gruta, N.L., 2017. Quantifiable predictive features define epitope-specific T cell receptor repertoires. Nature, 547(7661), pp.89-93. (https://doi.org/10.1038/nature22383)
  2. Jaro, M.A., 1989. Advances in record-linkage methodology as applied to matching the 1985 census of Tampa, Florida. Journal of the American Statistical Association, 84(406), pp.414-420.
  3. Levenshtein, V.I., 1966, February. Binary codes capable of correcting deletions, insertions, and reversals. In Soviet physics doklady (Vol. 10, No. 8, pp. 707-710).
  4. python-Levenshtein (https://github.com/ztane/python-Levenshtein)
  5. Thakkar, N. and Bailey-Kellogg, C., 2019. Balancing sensitivity and specificity in distinguishing TCR groups by CDR sequence similarity. BMC bioinformatics, 20(1), pp.1-14. (https://doi.org/10.1186/s12859-019-2864-8)
  6. Van der Loo, M.P., 2014. The stringdist package for approximate string matching. R J., 6(1), p.111.
  7. Winkler, W.E., 1990. String comparator metrics and enhanced decision rules in the Fellegi-Sunter model of record linkage.