AI Article Synopsis

  • Researchers used long read sequencing data from the Knightia excelsa tree, which is important culturally and commercially in New Zealand, to investigate how data type and workflows affect genome assembly accuracy.
  • They found that longer read lengths with lower coverage tended to yield better assemblies compared to shorter reads with higher coverage, highlighting the need for tailored assembly workflows.
  • Their study emphasized the significance of quality metrics in genome assembly and indicated that problems in initial assemblies could not always be fixed by additional data, underscoring the importance of high-quality initial contigs.

Article Abstract

We used long read sequencing data generated from Knightia excelsa, a nectar-producing Proteaceae tree endemic to Aotearoa (New Zealand), to explore how sequencing data type, volume and workflows can impact final assembly accuracy and chromosome reconstruction. Establishing a high-quality genome for this species has specific cultural importance to Māori and commercial importance to honey producers in Aotearoa. Assemblies were produced by five long read assemblers using data subsampled based on read lengths, two polishing strategies and two Hi-C mapping methods. Our results from subsampling the data by read length showed that each assembler tested performed differently depending on the coverage and the read length of the data. Subsampling highlighted that input data with longer read lengths but perhaps lower coverage constructed more contiguous, kmers and gene-complete assemblies than short read length input data with higher coverage. The final genome assembly was constructed into 14 pseudochromosomes using an initial flye long read assembly, a racon/medaka/pilon combined polishing strategy, salsa2 and allhic scaffolding, juicebox curation, and Macadamia linkage map validation. We highlighted the importance of developing assembly workflows based on the volume and read length of sequencing data and established a robust set of quality metrics for generating high-quality assemblies. Scaffolding analyses highlighted that problems found in the initial assemblies could not be resolved accurately by Hi-C data and that assembly scaffolding was more successful when the underlying contig assembly was of higher accuracy. These findings provide insight into how quality assessment tools can be implemented throughout genome assembly pipelines to inform the de novo reconstruction of a high-quality genome assembly for nonmodel organisms.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8362059PMC
http://dx.doi.org/10.1111/1755-0998.13406DOI Listing

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