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Assemblathon 1: a competitive assessment of de novo short read assembly methods
Authors:Earl Dent  Bradnam Keith  St John John  Darling Aaron  Lin Dawei  Fass Joseph  Yu Hung On Ken  Buffalo Vince  Zerbino Daniel R  Diekhans Mark  Nguyen Ngan  Ariyaratne Pramila Nuwantha  Sung Wing-Kin  Ning Zemin  Haimel Matthias  Simpson Jared T  Fonseca Nuno A  Birol İnanç  Docking T Roderick  Ho Isaac Y  Rokhsar Daniel S  Chikhi Rayan  Lavenier Dominique  Chapuis Guillaume  Naquin Delphine  Maillet Nicolas  Schatz Michael C  Kelley David R  Phillippy Adam M  Koren Sergey  Yang Shiaw-Pyng  Wu Wei  Chou Wen-Chi  Srivastava Anuj  Shaw Timothy I  Ruby J Graham  Skewes-Cox Peter  Betegon Miguel  Dimon Michelle T  Solovyev Victor
Affiliation:Center for Biomolecular Science and Engineering, University of California, Santa Cruz, California 95064, USA.
Abstract:
Low-cost short read sequencing technology has revolutionized genomics, though it is only just becoming practical for the high-quality de novo assembly of a novel large genome. We describe the Assemblathon 1 competition, which aimed to comprehensively assess the state of the art in de novo assembly methods when applied to current sequencing technologies. In a collaborative effort, teams were asked to assemble a simulated Illumina HiSeq data set of an unknown, simulated diploid genome. A total of 41 assemblies from 17 different groups were received. Novel haplotype aware assessments of coverage, contiguity, structure, base calling, and copy number were made. We establish that within this benchmark: (1) It is possible to assemble the genome to a high level of coverage and accuracy, and that (2) large differences exist between the assemblies, suggesting room for further improvements in current methods. The simulated benchmark, including the correct answer, the assemblies, and the code that was used to evaluate the assemblies is now public and freely available from http://www.assemblathon.org/.
Keywords:
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