Treffer: ARK: Aggregation of Reads by K-Means for Estimation of Bacterial Community Composition.

Title:
ARK: Aggregation of Reads by K-Means for Estimation of Bacterial Community Composition.
Publisher Information:
Public Library of Science
Publication Year:
2015
Collection:
London School of Hygiene & Tropical Medicine: LSHTM Research Online
Document Type:
Fachzeitschrift article in journal/newspaper
File Description:
text
Language:
English
Relation:
https://researchonline.lshtm.ac.uk/id/eprint/2338123/1/pone.0140644.pdf; Koslicki, David; Chatterjee, Saikat; Shahrivar, Damon; Walker, Alan W; Francis, Suzanna C ; Fraser, Louise J; Vehkaperä, Mikko; Lan, Yueheng; Corander, Jukka; (2015) ARK: Aggregation of Reads by K-Means for Estimation of Bacterial Community Composition. PloS one, 10 (10). e0140644-. ISSN 1932-6203 DOI: https://doi.org/10.1371/journal.pone.0140644
Rights:
cc_by
Accession Number:
edsbas.E019C01D
Database:
BASE

Weitere Informationen

MOTIVATION: Estimation of bacterial community composition from high-throughput sequenced 16S rRNA gene amplicons is a key task in microbial ecology. Since the sequence data from each sample typically consist of a large number of reads and are adversely impacted by different levels of biological and technical noise, accurate analysis of such large datasets is challenging. RESULTS: There has been a recent surge of interest in using compressed sensing inspired and convex-optimization based methods to solve the estimation problem for bacterial community composition. These methods typically rely on summarizing the sequence data by frequencies of low-order k-mers and matching this information statistically with a taxonomically structured database. Here we show that the accuracy of the resulting community composition estimates can be substantially improved by aggregating the reads from a sample with an unsupervised machine learning approach prior to the estimation phase. The aggregation of reads is a pre-processing approach where we use a standard K-means clustering algorithm that partitions a large set of reads into subsets with reasonable computational cost to provide several vectors of first order statistics instead of only single statistical summarization in terms of k-mer frequencies. The output of the clustering is then processed further to obtain the final estimate for each sample. The resulting method is called Aggregation of Reads by K-means (ARK), and it is based on a statistical argument via mixture density formulation. ARK is found to improve the fidelity and robustness of several recently introduced methods, with only a modest increase in computational complexity. AVAILABILITY: An open source, platform-independent implementation of the method in the Julia programming language is freely available at https://github.com/dkoslicki/ARK. A Matlab implementation is available at http://www.ee.kth.se/ctsoftware.