Numeric Lyndon-based feature embedding of sequencing reads for machine learning approaches

02/28/2022
by   Paola Bonizzoni, et al.
0

Feature embedding methods have been proposed in literature to represent sequences as numeric vectors to be used in some bioinformatics investigations, such as family classification and protein structure prediction. Recent theoretical results showed that the well-known Lyndon factorization preserves common factors in overlapping strings. Surprisingly, the fingerprint of a sequencing read, which is the sequence of lengths of consecutive factors in variants of the Lyndon factorization of the read, is effective in preserving sequence similarities, suggesting it as basis for the definition of novels representations of sequencing reads. We propose a novel feature embedding method for Next-Generation Sequencing (NGS) data using the notion of fingerprint. We provide a theoretical and experimental framework to estimate the behaviour of fingerprints and of the k-mers extracted from it, called k-fingers, as possible feature embeddings for sequencing reads. As a case study to assess the effectiveness of such embeddings, we use fingerprints to represent RNA-Seq reads and to assign them to the most likely gene from which they were originated as fragments of transcripts of the gene. We provide an implementation of the proposed method in the tool lyn2vec, which produces Lyndon-based feature embeddings of sequencing reads.

READ FULL TEXT
research
01/30/2018

A novel methodology on distributed representations of proteins using their interacting ligands

The effective representation of proteins is a crucial task that directly...
research
07/17/2023

Benchmarking fixed-length Fingerprint Representations across different Embedding Sizes and Sensor Types

Traditional minutiae-based fingerprint representations consist of a vari...
research
03/27/2023

AmorProt: Amino Acid Molecular Fingerprints Repurposing based Protein Fingerprint

As protein therapeutics play an important role in almost all medical fie...
research
11/03/2019

Attributed Sequence Embedding

Mining tasks over sequential data, such as clickstreams and gene sequenc...
research
10/23/2020

Adversarial Learning of Feature-based Meta-Embeddings

Certain embedding types outperform others in different scenarios, e.g., ...
research
05/14/2018

A La Carte Embedding: Cheap but Effective Induction of Semantic Feature Vectors

Motivations like domain adaptation, transfer learning, and feature learn...

Please sign up or login with your details

Forgot password? Click here to reset