A Memory Efficient Short Read <i>De Novo</i> Assembly Algorithm
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- Endo Yuki
- Graduate School of Engineering, Utsunomiya University
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- Toyama Fubito
- Graduate School of Engineering, Utsunomiya University
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- Chiba Chikafumi
- Faculty of Life and Environmental Sciences, University of Tsukuba
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- Mori Hiroshi
- Graduate School of Engineering, Utsunomiya University
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- Shoji Kenji
- Graduate School of Engineering, Utsunomiya University
Bibliographic Information
- Other Title
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- A Memory Efficient Short Read De Novo Assembly Algorithm
Description
Sequencing the whole genome of various species has many applications, not only in understanding biological systems, but also in medicine, pharmacy, and agriculture. In recent years, the emergence of high-throughput next generation sequencing technologies has dramatically reduced the time and costs for whole genome sequencing. These new technologies provide ultrahigh throughput with a lower per-unit data cost. However, the data are generated from very short fragments of DNA. Thus, it is very important to develop algorithms for merging these fragments. One method of merging these fragments without using a reference dataset is called de novo assembly. Many algorithms for de novo assembly have been proposed in recent years. Velvet and SOAPdenovo2 are well-known assembly algorithms, which have good performance in terms of memory and time consumption. However, memory consumption increases dramatically when the size of input fragments is larger. Therefore, it is necessary to develop an alternative algorithm with low memory usage. In this paper, we propose an algorithm for de novo assembly with lower memory. In our experiments using E.coli K-12 strain MG 1655 and human chromosome 14, the memory consumption of our proposed algorithm was less than that of other popular assemblers.
Journal
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- IPSJ Transactions on Bioinformatics
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IPSJ Transactions on Bioinformatics 8 (0), 2-8, 2015
Information Processing Society of Japan
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Details 詳細情報について
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- CRID
- 1390282680271372800
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- NII Article ID
- 130004952389
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- ISSN
- 18826679
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- Text Lang
- en
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- Data Source
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- JaLC
- Crossref
- CiNii Articles
- KAKEN
- OpenAIRE
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- Abstract License Flag
- Disallowed