Long-read sequencing holds great potential for characterizing complex microbial communities, yet taxonomic profiling tools designed specifically for long reads remain lacking. We introduce Melon, a novel marker-based taxonomic profiler that capitalizes on the unique attributes of long reads. Melon employs a two-stage classification scheme to reduce computational time and is equipped with an expectation-maximization-based post-correction module to handle ambiguous reads. Melon achieves superior performance compared to existing tools in both mock and simulated samples. Using wastewater metagenomic samples, we demonstrate the applicability of Melon by showing it provides reliable estimates of overall genome copies, and species-level taxonomic profiles.
CITATION STYLE
Chen, X., Yin, X., Shi, X., Yan, W., Yang, Y., Liu, L., & Zhang, T. (2024). Melon: metagenomic long-read-based taxonomic identification and quantification using marker genes. Genome Biology, 25(1). https://doi.org/10.1186/s13059-024-03363-y
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