To Petabytes and beyond: recent advances in probabilistic and signal processing algorithms and their application to metagenomics

Author:

Elworth R A Leo1,Wang Qi2,Kota Pavan K3,Barberan C J4,Coleman Benjamin4,Balaji Advait1,Gupta Gaurav4,Baraniuk Richard G4,Shrivastava Anshumali14,Treangen Todd J12ORCID

Affiliation:

1. Department of Computer Science, Houston, TX 77005, USA

2. Systems, Synthetic, and Physical Biology (SSPB) Graduate Program, Houston, TX 77005, USA

3. Department of Bioengineering, Houston, TX 77005, USA

4. Department of Electrical and Computer Engineering, Rice University, Houston, TX 77005, USA

Abstract

AbstractAs computational biologists continue to be inundated by ever increasing amounts of metagenomic data, the need for data analysis approaches that keep up with the pace of sequence archives has remained a challenge. In recent years, the accelerated pace of genomic data availability has been accompanied by the application of a wide array of highly efficient approaches from other fields to the field of metagenomics. For instance, sketching algorithms such as MinHash have seen a rapid and widespread adoption. These techniques handle increasingly large datasets with minimal sacrifices in quality for tasks such as sequence similarity calculations. Here, we briefly review the fundamentals of the most impactful probabilistic and signal processing algorithms. We also highlight more recent advances to augment previous reviews in these areas that have taken a broader approach. We then explore the application of these techniques to metagenomics, discuss their pros and cons, and speculate on their future directions.

Funder

Office of the Director of National Intelligence

Intelligence Advanced Research Projects Activity

Army Research Office

Rice University

National Institute of Neurological Disorders and Stroke

National Institutes of Health

NSF

ONR

AFOSR

DARPA

NLM

Vannevar Bush Faculty Fellowship

Amazon Research Award

Publisher

Oxford University Press (OUP)

Subject

Genetics

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