Using a Big Data Database to Identify Pathogens in Protein Data Space
Databases
2015-01-23 v1 Quantitative Methods
Abstract
Current metagenomic analysis algorithms require significant computing resources, can report excessive false positives (type I errors), may miss organisms (type II errors / false negatives), or scale poorly on large datasets. This paper explores using big data database technologies to characterize very large metagenomic DNA sequences in protein space, with the ultimate goal of rapid pathogen identification in patient samples. Our approach uses the abilities of a big data databases to hold large sparse associative array representations of genetic data to extract statistical patterns about the data that can be used in a variety of ways to improve identification algorithms.
Cite
@article{arxiv.1501.05546,
title = {Using a Big Data Database to Identify Pathogens in Protein Data Space},
author = {Ashley Mae Conard and Stephanie Dodson and Jeremy Kepner and Darrell Ricke},
journal= {arXiv preprint arXiv:1501.05546},
year = {2015}
}
Comments
2 pages, 3 figures