Statistical Binning for Barcoded Reads Improves Downstream Analyses.

Cell Syst
Authors
Keywords
Abstract

Sequencing technologies are capturing longer-range genomic information at lower error rates, enabling alignment to genomic regions that are inaccessible with short reads. However, many methods are unable to align reads to much of the genome, recognized as important in disease, and thus report erroneous results in downstream analyses. We introduce EMA, a novel two-tiered statistical binning model for barcoded read alignment, that first probabilistically maps reads to potentially multiple "read clouds" and then within clouds by newly exploiting the non-uniform read densities characteristic of barcoded read sequencing. EMA substantially improves downstream accuracy over existing methods, including phasing and genotyping on 10x data, with fewer false variant calls in nearly half the time. EMA effectively resolves particularly challenging alignments in genomic regions that contain nearby homologous elements, uncovering variants in the pharmacogenomically important CYP2D region, and clinically important genes C4 (schizophrenia) and AMY1A (obesity), which go undetected by existing methods. Our work provides a framework for future generation sequencing.

Year of Publication
2018
Journal
Cell Syst
Volume
7
Issue
2
Pages
219-226.e5
Date Published
2018 08 22
ISSN
2405-4712
DOI
10.1016/j.cels.2018.07.005
PubMed ID
30138581
PubMed Central ID
PMC6214366
Links
Grant list
R01 GM108348 / GM / NIGMS NIH HHS / United States