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Treffer: SKiM: Accurately Classifying Metagenomic ONT Reads in Limited Memory

Title:
SKiM: Accurately Classifying Metagenomic ONT Reads in Limited Memory
Publisher Information:
Cold Spring Harbor Laboratory, 2025.
Publication Year:
2025
Document Type:
Fachzeitschrift Article
DOI:
10.1101/2025.05.13.653326
Rights:
CC BY NC ND
Accession Number:
edsair.doi...........af0a810d1ee2f5f9e23519ebd1fb22d9
Database:
OpenAIRE

Weitere Informationen

MotivationOxford Nanopore Technologies’ devices, such as MinION, permit affordable, real-time DNA sequencing, and come with targeted sequencing capabilities. Such capabilities create new challenges for metagenomic classifiers that must be computationally efficient yet robust enough to handle potentially erroneous DNA reads, while ideally inspecting only a few hundred bases of a read. Currently available DNA classifiers leave room for improvement with respect to classification accuracy, memory usage, and the ability to operate in targeted sequencing scenarios.ResultsWe present SKiM: Short K-mers in Metagenomics, a new lightweight metagenomic classifier designed for ONT reads. Compared to state-of-the-art classifiers, SKiM requires only a fraction of memory to run, and can classify DNA reads with higher accuracy after inspecting only their first few hundred bases. To achieve this, SKiM introduces new data compression techniques to maintain a reference database built from shortk-mers, and treats classification as a statistical testing problem.AvailabilitySKiM source code, documentation and test data are available from:https://gitlab.com/SCoRe-Group/skim.Contacttcschneg@buffalo.edu