A fast, lock-free approach for efficient parallel counting of occurrences of k-mers
Guillaume Marçais,Carl Kingsford +1 more
TL;DR: This work proposes a new k-mer counting algorithm and associated implementation, called Jellyfish, which is fast and memory efficient, based on a multithreaded, lock-free hash table optimized for counting k-mers up to 31 bases in length.
read more
Abstract: Motivation: Counting the number of occurrences of every k-mer (substring of length k) in a long string is a central subproblem in many applications, including genome assembly, error correction of sequencing reads, fast multiple sequence alignment and repeat detection. Recently, the deep sequence coverage generated by next-generation sequencing technologies has caused the amount of sequence to be processed during a genome project to grow rapidly, and has rendered current k-mer counting tools too slow and memory intensive. At the same time, large multicore computers have become commonplace in research facilities allowing for a new parallel computational paradigm.
Results: We propose a new k-mer counting algorithm and associated implementation, called Jellyfish, which is fast and memory efficient. It is based on a multithreaded, lock-free hash table optimized for counting k-mers up to 31 bases in length. Due to their flexibility, suffix arrays have been the data structure of choice for solving many string problems. For the task of k-mer counting, important in many biological applications, Jellyfish offers a much faster and more memory-efficient solution.
Availability: The Jellyfish software is written in C++ and is GPL licensed. It is available for download at http://www.cbcb.umd.edu/software/jellyfish.
Contact: [email protected]
Supplementary information:Supplementary data are available at Bioinformatics online.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
LEMMI: a continuous benchmarking platform for metagenomics classifiers.
TL;DR: The LEMMI platform offers a novel approach for benchmarking software dedicated to metagenome composition assessments based on read classification that enables the integration of newly published methods in an independent and centralized benchmark designed to be continuously open to new submissions.
Highly accurate long-read HiFi sequencing data for five complex genomes
Ting Hon,Kristin Mars,Greg Young,Yu-Chih Tsai,Joseph W. Karalius,Jane M. Landolin,Nicholas Maurer,David Kudrna,Michael A. Hardigan,Cynthia C. Steiner,Steven J. Knapp,Doreen Ware,Beth Shapiro,Paul Peluso,David R. Rank +14 more
TL;DR: Deep coverage HiFi datasets for five complex samples including the two inbred model genomes Mus musculus and Zea mays, as well as two complex genomes, octoploid Fragaria × ananassa and the diploid anuran Rana muscosa are presented.
GWAS for genetics of complex quantitative traits: Genome to pangenome and SNPs to SVs and k-mers.
TL;DR: The development of improved methods for genome-wide association studies (GWAS) for genetics of quantitative traits has been an active area of research during the last 25 years as mentioned in this paper, with the availability of high throughput next generation sequencing (NGS) technology, development and use of pangenomes and novel markers including structural variations (SVs) and k-mers for GWAS has taken over as a new thrust area for research.
21
Large-scale gene expression alterations introduced by structural variation drive morphotype diversification in Brassica oleracea.
Xing Li,Yong Wang,Chengcheng Cai,Jialei Ji,Fengqing Han,Lei Zhang,Shumin Chen,Lingkui Zhang,Yinqing Yang,Qi Tang,John C. Bucher,Xuelin Wang,Limei Yang,Zhuang Mu,Kang Zhang,Honghao Lv,Guusje Bonnema,Yangyong Zhang,Feng Cheng +18 more
TL;DR: SVs exert bidirectional effects on the expression of numerous genes, either suppressing through DNA methylation or promoting probably by harboring transcription factor-binding elements, driving B. oleracea domestication and diversification.
21
Whole Genome Sequencing and Re-sequencing of the Sable Antelope (Hippotragus niger): A Resource for Monitoring Diversity in ex Situ and in Situ Populations.
Klaus-Peter Koepfli,Klaus-Peter Koepfli,Gaik Tamazian,David E. Wildt,Pavel Dobrynin,Changhoon Kim,Paul B. Frandsen,Raquel Godinho,Raquel Godinho,Andrey A. Yurchenko,Aleksey Komissarov,Ksenia Krasheninnikova,Sergei Kliver,Sofia Kolchanova,Margarida Gonçalves,Miguel Carneiro,Pedro Vaz Pinto,Nuno Ferrand,Nuno Ferrand,Jesús E. Maldonado,Gina M. Ferrie,Leona G. Chemnick,Oliver A. Ryder,Warren E. Johnson,Warren E. Johnson,Pierre Comizzoli,Stephen J. O'Brien,Stephen J. O'Brien,Budhan S. Pukazhenthi +28 more
TL;DR: The draft genome assembly of a male sable antelope constitutes a valuable resource for assessing genome-wide diversity and evolutionary potential, thereby facilitating long-term conservation of this charismatic species.
21
References
MUSCLE: multiple sequence alignment with high accuracy and high throughput
TL;DR: MUSCLE is a new computer program for creating multiple alignments of protein sequences that includes fast distance estimation using kmer counting, progressive alignment using a new profile function the authors call the log-expectation score, and refinement using tree-dependent restricted partitioning.
45.1K
•Book
Introduction to Algorithms
Thomas H. Cormen,Charles E. Leiserson,Ronald L. Rivest +2 more
- 01 Jan 1990
TL;DR: The updated new edition of the classic Introduction to Algorithms is intended primarily for use in undergraduate or graduate courses in algorithms or data structures and presents a rich variety of algorithms and covers them in considerable depth while making their design and analysis accessible to all levels of readers.
24.8K
MapReduce: simplified data processing on large clusters
Jeffrey Dean,Sanjay Ghemawat +1 more
- 06 Dec 2004
TL;DR: This paper presents the implementation of MapReduce, a programming model and an associated implementation for processing and generating large data sets that runs on a large cluster of commodity machines and is highly scalable.
MapReduce: simplified data processing on large clusters
Jeffrey Dean,Sanjay Ghemawat +1 more
TL;DR: This presentation explains how the underlying runtime system automatically parallelizes the computation across large-scale clusters of machines, handles machine failures, and schedules inter-machine communication to make efficient use of the network and disks.
A Whole-Genome Assembly of Drosophila
Eugene W. Myers,Granger G. Sutton,Arthur L. Delcher,Ian M. Dew,Dan P. Fasulo,Michael Flanigan,Saul A. Kravitz,Clark M. Mobarry,Knut Reinert,Karin A. Remington,Eric L. Anson,Randall Bolanos,Hui-Hsien Chou,Catherine Jordan,Aaron L. Halpern,Stefano Lonardi,Ellen M. Beasley,Rhonda C. Brandon,Lin Chen,Patrick J. Dunn,Zhongwu Lai,Yong Liang,Deborah R. Nusskern,Ming Zhan,Qing Zhang,Xiangqun Zheng,Gerald M. Rubin,Mark Raymond Adams,J. Craig Venter +28 more
TL;DR: The quality of a whole-genome assembly of Drosophila melanogaster and the nature of the computer algorithms that accomplished it are reported on and should be of substantial value to the scientific community.
1.6K