Schema for Problematic Regions - Problematic Regions for NGS or Sanger sequencing or very variable regions
  Database: hg19    Primary Table: filterConflicting Data last updated: 2019-11-18
Big Bed File Download: /gbdb/hg19/bbi/problematic/filterConflicting.bb
Item Count: 1,443,677
The data is stored in the binary BigBed format.

Format description: Browser Extensible Data
fieldexampledescription
chromchr1Reference sequence chromosome or scaffold
chromStart166173872Start position in chromosome
chromEnd166173873End position in chromosome

Sample Rows
 
chromchromStartchromEnd
chr1166173872166173873
chr1166179790166179791
chr1166181220166181221
chr1166181314166181315
chr1166181467166181468
chr1166195600166195601
chr1166195623166195624
chr1166196094166196095
chr1166196115166196116
chr1166196118166196119

Problematic Regions (problematic) Track Description
 

Description

This track helps call out sections of the genome that often cause problems for bioinformaticians. The 12 subtracks identify genomic regions known to cause analysis artifacts for common sequencing downstream computations, such as alignment, variant calling, or peak calling. The underlying data was imported from the NCBI GeT-RM, the Genome-in-a-Bottle, and Anshul Kundaje's ENCODE Blacklist projects.

The only exception is the UCSC Unusual Regions subtrack, which contains annotations of a few special gene clusters (IGH, IGL, PAR1/2, TCRA, TCRB, etc) and fixed sequences, alternate haplotypes, unplaced contigs, pseudo-autosomal regions, and mitochondria. These loci can yield alignments with low-quality mapping scores and discordant read pairs. This data set was manually curated, based on the Genome Browser's assembly description, the FAQs about assembly, and the NCBI RefSeq "other" annotations track data.

The ENCODE Blacklist subtrack contains a comprehensive set of regions which are troublesome for high-throughput Next-Generation Sequencing (NGS) aligners. These regions tend to have a very high ratio of multi-mapping to unique mapping reads and high variance in mappability due to repetitive elements such as satellite, centromeric and telomeric repeats.

The Genome-In-A-Bottle (GIAB) track set contains defined regions where it is difficult to make a confident call, due to low coverage, systematic sequencing errors, and local alignment problems. These regions were identified from sequencing data generated by multiple technologies.

The NCBI GeT-RM, Genetic Testing Reference Materials, track set contains highly homologous gene- and exon-level regions difficult or impossible to analyze with standard Sanger or short-read NGS approaches and are relevant to current clinical testing.

Display Conventions and Configuration

Each track contains a set of regions of varying length with no special configuration options. The UCSC Unusual Regions track has a mouse-over description, all other tracks have at most a name field, which can be shown in pack mode. The tracks are usually kept in dense mode.

The Hide empty subtracks control hides subtracks with no data in the browser window. Changing the browser window by zooming or scrolling may result in the display of a different selection of tracks.

Data access

The raw data can be explored interactively with the Table Browser or the Data Integrator.

For automated download and analysis, the genome annotation is stored in bigBed files that can be downloaded from our download server. Individual regions or the whole genome annotation can be obtained using our tool bigBedToBed which can be compiled from the source code or downloaded as a precompiled binary for your system. Instructions for downloading source code and binaries can be found here. The tool can also be used to obtain only features within a given range, e.g. bigBedToBed http://hgdownload.soe.ucsc.edu/gbdb/hg19/bbi/problematic/deadZone.bb -chrom=chr21 -start=0 -end=100000000 stdout

Methods

Files were downloaded from the respective databases and converted to bigBed format. The procedure is documented in our hg19 makeDoc file (search problematic).

Credits

Thanks to Anna Benet-Pages, Max Haeussler, Angie Hinrichs, and Daniel Schmelter at the UCSC Genome Browser for planning, building, and testing these tracks. The underlying data comes from the ENCODE Blacklist, the GeT-RM, and the Genome-in-a-Bottle projects.

References

Amemiya HM, Kundaje A, Boyle AP. The ENCODE Blacklist: Identification of Problematic Regions of the Genome. Sci Rep. 2019 Jun 27;9(1):9354. PMID: 31249361; PMC: PMC6597582

Zook JM, Chapman B, Wang J, Mittelman D, Hofmann O, Hide W, Salit M. Integrating human sequence data sets provides a resource of benchmark SNP and indel genotype calls. Nat Biotechnol. 2014 Mar;32(3):246-51. PMID: 24531798

Mandelker D, Schmidt RJ, Ankala A, McDonald Gibson K, Bowser M, Sharma H, Duffy E, Hegde M, Santani A, Lebo M et al. Navigating highly homologous genes in a molecular diagnostic setting: a resource for clinical next- generation sequencing. Genet Med. 2016 Dec;18(12):1282-1289. PMID: 27228465