considerations for analyzing targeted ngs data introduction

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Considerations for Analyzing Targeted NGS Data Introduction. Tim Hague , CTO. Introduction. Many mapping, alignment and variant calling algorithms Most of these have been developed for whole genome sequencing and to some extent population genetic studi es. Premise. - PowerPoint PPT Presentation

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Considerations for Analyzing Targeted NGS Data

Introduction

Tim Hague, CTO

Introduction

Many mapping, alignment and variant calling algorithms

Most of these have been developed for whole genome sequencing and to some extent population genetic studies.

Premise

In contrast, NGS based diagnostics deals with particular genes or mutations of an individual.

Different diagnostic targets present specific challenges.

Goal

Present analysis issues related to differences in:

Sequencing technologiesTargeting technologiesTarget specifics Pseudogenes and segmental duplication

NGS Sequencers Illumina Ion Torrent Roche 454 (SOLiD)

Roche 454Illumina IonTorrentt

Moore B, Hu H, Singleton M, De La Vega, FM, Reese MG, Yandell M. Genet Med. 2011 Mar;13(3):210-7.

Sequencing TechnologyDifferences:Homopolymer error ratesG/C content errorsRead length Sequencing protocols (single vs paired reads)

Targeting Methods PCR primers (e.g. amplicons) Hybridization probes (e.g. exome kits)

Targeting TechnologyDifferences:Exact matching regions vs regions with SNPs.

Results in:Need for mapping against whole chromosomes to avoid false positives.

Analysis Targets

Differences:Rate of polymorphismRepetitive structuresMutation profilesG/C contentSingle genes vs multi gene complexes

BRCA1/2 HLA CFTR1/2000 1/29 1/2000

Distributions of insertions and deletionsDistribution of repeat elements

Segmental Duplications Sometimes called Low Copy Repeats (LCRs) Highly homologous, >95% sequence identity Rare in most mammals Comprise a large portion of the human genome

(and other primate genomes)

Important for understanding HLA

Segmental Duplications

Many LCRs are concentrated in "hotspots"

Recombinations in these regions are responsible for a wide range of disorders, including:

Charcot-Marie-Tooth syndrome type 1AHereditary neuropathy with liability to pressure palsiesSmith-Magenis syndromePotocki-Lupski syndrome

Data Analysis Tools

Differences:Detection rates of complex variants (sensitivity)False positive rates (accuracy)SpeedEase of use

Data analysis shouldn’t be like this!

“Depending upon which tool you use, you can see pretty big differences between even the same genome called with different tools—nearly as big as the two Life Tech/Illumina genomes.”

Mark Yandel in BioIT-World.com, June 8, 2011

Examples Missing variants SNPs, a DNP and deletions

Identify more valid variants

Find homopolymer indels

Examples Coverage differences

Four times exon coverage

[0-432]

[0-96]

Higher exome coverage

[0-24]

[0-10]

First conclusion

Read accuracy is not the limiting factor in accurate variant analysis.

Example Dense region of SNPs

www.omixon.com

Second conclusion

As variant density increases the performance of most tools goes down.

Variant Calling

TThere are few popular variant callers: GATK, SAMtools mpileup, VarScanThe most comprehensive (GATK) has a whole pipeline, including a quality recalibration step and an indel realignment stepThese recalibration and realignment steps are highly recommended to be run before any variant callDeduplication and removing non-primary alignments may also be required

There are few popular variant callers: GATK, SAMtools mpileup, The most comprehensive (GATK) has a whole pipeline, including a quality recalibration step and an indel realignment stepThese recalibration and realignment steps are highly recommended to be run before any variant callDeduplication and removing non-primary alignments may also be required

There are few popular variant callers: GATK, SAMtools mpileup, VarScan

The most comprehensive (GATK) has a whole pipeline, including a quality recalibration step and an indel realignment step

These recalibration and realignment steps are highly recommended to be run before any variant call

Deduplication and removing non-primary alignments may also be required

Indel realigner problem

Variants that can be hard to find

DNPs TNPs Small indels next to SNPs 30+ bp indels Homopolymer indels Homopolymer indel and SNP together Indels in palindromes Dense regions of variants

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