Published June 9, 2021 | Version v1
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Data from: Motifier: an IgOme profiler based on peptide-motifs using machine learning

  • 1. Tel Aviv University

Description

Antibodies provide a comprehensive record of the encounters with threats and insults to the immune system. The ability to examine the repertoire of antibodies in serum and discover those that best represent "discriminating features" characteristic of various clinical situations, is potentially very useful. Recently, phage display technologies combined with Next-Generation Sequencing (NGS) produced a powerful experimental methodology, coined "Deep-Panning", in which the spectrum of serum antibodies is probed. In order to extract meaningful biological insights from the tens of millions of affinity-selected peptides generated by Deep-Panning, advanced bioinformatics algorithms are a must. In this study, we describe Motifier, a computational pipeline comprised of a set of algorithms that systematically generates discriminatory peptide motifs based on the affinity-selected peptides identified by Deep-Panning. These motifs are shown to effectively characterize antibody binding activities and through the implementation of machine-learning protocols are shown to accurately classify complex antibody mixtures representing various biological conditions.

Notes

The file called Exp12.fastq contains the NGS data obtained from the mAbs experiment.

The file called Exp22.fastq contains the NGS data obtained from the HIV experiment.

Funding provided by: United States Israel Binational Agricultural Research and Development Fund
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100006031

Funding provided by: National Institutes of Health
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000002

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