Discovering the Unknown : Improving Detection of Novel Species and Genera from Short Reads

High-throughput sequencing technologies enable metagenome profiling, simultaneous sequencing of multiple microbial species present within an environmental sample. Since metagenomic data includes sequence fragments (“reads”) from organisms that are absent from any database, new algorithms must be dev...

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Bibliographic Details
Published inBioMed research international Vol. 2011; no. 2011; pp. 1 - 11
Main Authors Rosen, Gail L., Polikar, Robi, Caseiro, Diamantino A., Essinger, Steven D., Sokhansanj, Bahrad A.
Format Journal Article
LanguageEnglish
Published Cairo, Egypt Hindawi Puplishing Corporation 01.01.2011
Hindawi Publishing Corporation
Dar al -Nasr -al-Llktruni
John Wiley & Sons, Inc
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Online AccessGet full text
ISSN1110-7243
2314-6133
1110-7251
2314-6141
1110-7251
2314-6141
DOI10.1155/2011/495849

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Summary:High-throughput sequencing technologies enable metagenome profiling, simultaneous sequencing of multiple microbial species present within an environmental sample. Since metagenomic data includes sequence fragments (“reads”) from organisms that are absent from any database, new algorithms must be developed for the identification and annotation of novel sequence fragments. Homology-based techniques have been modified to detect novel species and genera, but, composition-based methods, have not been adapted. We develop a detection technique that can discriminate between “known” and “unknown” taxa, which can be used with composition-based methods, as well as a hybrid method. Unlike previous studies, we rigorously evaluate all algorithms for their ability to detect novel taxa. First, we show that the integration of a detector with a composition-based method performs significantly better than homology-based methods for the detection of novel species and genera, with best performance at finer taxonomic resolutions. Most importantly, we evaluate all the algorithms by introducing an “unknown” class and show that the modified version of PhymmBL has similar or better overall classification performance than the other modified algorithms, especially for the species-level and ultrashort reads. Finally, we evaluate theperformance of several algorithms on a real acid mine drainage dataset.
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USDOE
SC0004335
Academic Editor: Chiu-Chung Young
ISSN:1110-7243
2314-6133
1110-7251
2314-6141
1110-7251
2314-6141
DOI:10.1155/2011/495849