Litcius/Paper detail

NoisET: Noise Learning and Expansion Detection of T-Cell Receptors

Meriem Bensouda Koraichi, Maximilian Puelma Touzel, Andrea Mazzolini, Thierry Mora, Aleksandra M. Walczak

2022The Journal of Physical Chemistry A15 citationsDOI

Abstract

High-throughput sequencing of T- and B-cell receptors makes it possible to track immune repertoires across time, in different tissues, in acute and chronic diseases and in healthy individuals. However, quantitative comparison between repertoires is confounded by variability in the read count of each receptor clonotype due to sampling, library preparation, and expression noise. We review methods for accounting for both biological and experimental noise and present an easy-to-use python package NoisET that implements and generalizes a previously developed Bayesian method. It can be used to learn experimental noise models for repertoire sequencing from replicates, and to detect responding clones following a stimulus. We test the package on different repertoire sequencing technologies and data sets. We review how such approaches have been used to identify responding clonotypes in vaccination and disease data. Availability: NoisET is freely available to use with source code at github.com/statbiophys/NoisET.

Topics & Concepts

Python (programming language)RepertoireComputational biologyComputer scienceBiologyNoise (video)Artificial intelligenceImage (mathematics)PhysicsOperating systemAcousticsT-cell and B-cell ImmunologySingle-cell and spatial transcriptomicsvaccines and immunoinformatics approaches