2023
DOI: 10.1186/s40168-023-01557-3
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Comparing genomes recovered from time-series metagenomes using long- and short-read sequencing technologies

Abstract: Background Over the past years, sequencing technologies have expanded our ability to examine novel microbial metabolisms and diversity previously obscured by isolation approaches. Long-read sequencing promises to revolutionize the metagenomic field and recover less fragmented genomes from environmental samples. Nonetheless, how to best benefit from long-read sequencing and whether long-read sequencing can provide recovered genomes of similar characteristics as short-read approaches remains uncl… Show more

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Cited by 15 publications
(9 citation statements)
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“…As Aiding Lake sediment samples only contained SRS, we further supplemented nine datasets, including four datasets with both SRS and LRS, and five PacBio High-Fidelity (HiFi) datasets, to assess the performance of BASALT on real samples. The four SRS + LRS datasets comprised a subset dataset from human gut microbiome (ten Illumina SRS samples, 204 GB in total, ten Oxford Nanopore (ONT) LRS samples, 113.6 GB in total) 42 , a subset dataset from marine plankton microbiome (four Illumina SRS samples, 263.8 GB in total, and four Pacbio LRS samples, 91.6 GB in total) 43 , a dataset from activated sludge microbiome (two Illumina SRS samples, 245.6 GB in total, and three ONT samples, 105.8 GB in total) 44 , and a dataset from Antarctic soil microbiome (one Illumina sample 67.2 GB, one ONT sample 83.5 GB) 45 . The five PacBio HiFi datasets comprised a human gut microbiome (five samples, 182.6 GB in total) 46 , a sheep gut microbiome (one sample, 92.1 GB) 47 , a chicken gut microbiome (three samples, 366.8 GB in total) 48 , a hot spring sediment microbiome (one sample 53.2 GB) 49 , and an anaerobic digester microbiome (one sample 28.6 GB) 50 .…”
Section: Resultsmentioning
confidence: 99%
“…As Aiding Lake sediment samples only contained SRS, we further supplemented nine datasets, including four datasets with both SRS and LRS, and five PacBio High-Fidelity (HiFi) datasets, to assess the performance of BASALT on real samples. The four SRS + LRS datasets comprised a subset dataset from human gut microbiome (ten Illumina SRS samples, 204 GB in total, ten Oxford Nanopore (ONT) LRS samples, 113.6 GB in total) 42 , a subset dataset from marine plankton microbiome (four Illumina SRS samples, 263.8 GB in total, and four Pacbio LRS samples, 91.6 GB in total) 43 , a dataset from activated sludge microbiome (two Illumina SRS samples, 245.6 GB in total, and three ONT samples, 105.8 GB in total) 44 , and a dataset from Antarctic soil microbiome (one Illumina sample 67.2 GB, one ONT sample 83.5 GB) 45 . The five PacBio HiFi datasets comprised a human gut microbiome (five samples, 182.6 GB in total) 46 , a sheep gut microbiome (one sample, 92.1 GB) 47 , a chicken gut microbiome (three samples, 366.8 GB in total) 48 , a hot spring sediment microbiome (one sample 53.2 GB) 49 , and an anaerobic digester microbiome (one sample 28.6 GB) 50 .…”
Section: Resultsmentioning
confidence: 99%
“…It is challenging to construct multiple species-resolved MAGs from complex prokaryotic populations because most contigs are unassigned and discarded in the binning process [88] . The use of long-read sequencing technologies, such as PacBio [121] , [122] , [123] and Oxford Nanopore Technologies [124] , [125] , [126] , [127] , can help overcome these issues. Future developments in binning algorithms that leverage machine learning [23] , [128] and Hi-C metagenomics [121] , [129] , [130] may help address these challenges.…”
Section: Discussionmentioning
confidence: 99%
“…However, the drawback of long-read sequencing is the occurrence of errors [ 105 , 106 ]. A great comparison can be found in a recently published metagenomic study, in which the authors emphasize the advantages and disadvantages of these two approaches [ 109 ].…”
Section: Intergenerational Evolution Of Sequencing Readsmentioning
confidence: 99%