GPMeta: a GPU-accelerated method for ultrarapid pathogen identification from metagenomic sequences

Author:

Wang Xuebin12ORCID,Wang Taifu13ORCID,Xie Zhihao12,Zhang Youjin13,Xia Shiqiang13,Sun Ruixue12,He Xinqiu13,Xiang Ruizhi12,Zheng Qiwen13,Liu Zhencheng13,Wang Jin’An13,Wu Honglong12,Jin Xiangqian13,Chen Weijun12,Li Dongfang12,He Zengquan13

Affiliation:

1. BGI Genomics, BGI-Shenzhen , Shenzhen 518083 , China

2. BGI PathoGenesis Pharmaceutical Technology, BGI-Shenzhen , Shenzhen 518083 , China

3. Clinical laboratory of BGI Health, BGI-Shenzhen , Shenzhen 518083 , China

Abstract

AbstractMetagenomic sequencing (mNGS) is a powerful diagnostic tool to detect causative pathogens in clinical microbiological testing owing to its unbiasedness and substantially reduced costs. Rapid and accurate classification of metagenomic sequences is a critical procedure for pathogen identification in dry-lab step of mNGS test. However, clinical practices of the testing technology are hampered by the challenge of classifying sequences within a clinically relevant timeframe. Here, we present GPMeta, a novel GPU-accelerated approach to ultrarapid pathogen identification from complex mNGS data, allowing users to bypass this limitation. Using mock microbial community datasets and public real metagenomic sequencing datasets from clinical samples, we show that GPMeta has not only higher accuracy but also significantly higher speed than existing state-of-the-art tools such as Bowtie2, Bwa, Kraken2 and Centrifuge. Furthermore, GPMeta offers GPMetaC clustering algorithm, a statistical model for clustering and rescoring ambiguous alignments to improve the discrimination of highly homologous sequences from microbial genomes with average nucleotide identity >95%. GPMetaC exhibits higher precision and recall rate than others. GPMeta underlines its key role in the development of the mNGS test in infectious diseases that require rapid turnaround times. Further study will discern how to best and easily integrate GPMeta into routine clinical practices. GPMeta is freely accessible to non-commercial users at https://github.com/Bgi-LUSH/GPMeta.

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. MegIS: High-Performance, Energy-Efficient, and Low-Cost Metagenomic Analysis with In-Storage Processing;2024 ACM/IEEE 51st Annual International Symposium on Computer Architecture (ISCA);2024-06-29

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