Local Run Manager Resequencing Analysis Module Workflow Guide (1000000002705 v00)

Local Run Manager Resequencing Analysis Module Workflow Guide For Research Use Only. Not for use in diagnostic procedures. Overview Set Parameters Analysis Methods View Analysis Results Analysis Report Analysis Output Files Custom Analysis Settings Technical Assistance ILLUMINA PROPRIETARY Document # 1000000002705 v00 January 2016 3 4 6 8 9 11 17 19 This document and its contents are proprietary to Illumina, Inc. and its affiliates ("Illumina"), and are intended solely for the contractual use of its customer in connection with the use of the product(s) described herein and for no other purpose. This document and its contents shall not be used or distributed for any other purpose and/or otherwise communicated, disclosed, or reproduced in any way whatsoever without the prior written consent of Illumina. Illumina does not convey any license under its patent, trademark, copyright, or common-law rights nor similar rights of any third parties by this document. 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Illumina, 24sure, BaseSpace, BeadArray, BlueFish, BlueFuse, BlueGnome, cBot, CSPro, CytoChip, DesignStudio, Epicentre, ForenSeq, Genetic Energy, GenomeStudio, GoldenGate, HiScan, HiSeq, HiSeq X, Infinium, iScan, iSelect, MiSeq, MiSeqDx, MiSeq FGx, NeoPrep, NextBio, Nextera, NextSeq, Powered by Illumina, SureMDA, TruGenome, TruSeq, TruSight, Understand Your Genome, UYG, VeraCode, verifi, VeriSeq, the pumpkin orange color, and the streaming bases design are trademarks of Illumina, Inc. and/or its affiliate(s) in the U.S. and/or other countries. All other names, logos, and other trademarks are the property of their respective owners. Overview Overview Intended for whole-genome sequencing of small genomes, the Local Run Manager Resequencing analysis module aligns reads against the specified reference, and then performs variant analysis. Compatible Library Types The Resequencing analysis module is compatible with specific library types represented by library kit categories on the Create Run screen. For a current list of compatible library kits, see the Local Run Manager support page on the Illumina website. Input Requirements In addition to sequencing data files generated during the sequencing run, such as base call files, the Resequencing analysis module requires a reference genome. A reference genome provides the chromosome and start coordinate in the alignment output file. When setting up run and analysis parameters, specify the path to the reference genome associated with each sample to be sequenced. About This Guide This guide provides instructions for setting up run parameters for sequencing and analysis parameters for the Resequencing analysis module. For information about the Local Run Manager dashboard and system settings, see the Local Run Manager Software Guide (document # 1000000002702). Local Run Manager Resequencing Analysis Module Workflow Guide 3 Set Parameters 1 Click Create Run, and select Resequencing. 2 Enter a run name that identifies the run from sequencing through analysis. Use alphanumeric characters, spaces, underscores, or dashes. 3 [Optional] Enter a run description to help identify the run. Use alphanumeric characters. Specify Run Settings 1 From the Library Kit drop-down list, select from the following library kit categories. Library Kit Nextera Nextera XT Nextera XT V2 Nextera Mate Pair Read Type Paired End or Single Read Number of Index Reads Possible number of index reads is none, 1, or 2 reads of 8 cycles each. Paired End only TruSeq HT Paired End or Single Read Paired End or Single Read Possible number of index reads is none or 1 read of 6 cycles. Possible number of index reads is none, 1, or 2 reads of 8 cycles each. Possible number of index reads is none or 1 read of 6 cycles. TruSeq LT 2 Specify the number of index reads. } 0 for a run with no indexing } 1 for a single-indexed run } 2 for a dual-indexed run 3 Specify a read type: Single Read or Paired End, if a change is possible. 4 Enter the number of cycles for the run. 5 [Optional] Specify any custom primers to be used for the run. Specify Module-Specific Settings 4 1 Expand the Aligner drop-down list and select an alignment method. } BWA-MEM—(Default) Optimized for Illumina sequencing data and reads ≥ 70 bp. } BWA-Backtrack Legacy—Use with legacy data or reads < 70 bp. 2 Expand the Variant Caller drop-down list and select a variant calling method. } Starling—(Default) Calls SNPs and small indels, and summarizes depth and probabilities for every site in the genome. } GATK—Calls raw variants for each sample, analyzes variants against known variants, and then calculates a false discovery rate for each variant. 3 Click the On/Off toggle to enable or disable the following analysis settings. } Export gVCF—Off by default. When enabled, analysis includes gVCF files that contain information about all sites within the region of interest. } Flag PCR Duplicates—On by default. When enabled, PCR duplicates are flagged in the BAM files and not used for variant calling. PCR duplicates are defined as 2 clusters from a paired-end run where both clusters have the exact same alignment position for each read. Document # 1000000002705 v00 Specify Samples for the Run Specify samples for the run using the following options: } Enter samples manually—Use the blank table on the Create Run screen. } Import samples—Navigate to an external file in a comma-separated values (*.csv) format. A template is available for download on the Create Run screen. After you have populated the samples table, you can export the sample information to an external file, and use the file as a reference when preparing libraries or import the file for another run. Enter Samples Manually 1 Adjust the samples table to an appropriate number of rows. } Click the + icon to add a row. } Use the up/down arrows to add multiple rows. Click the + icon. } Click the x icon to delete a row. } Right-click on a row in the table and use the commands in the drop-down menu. 2 Enter a unique sample ID in the Sample ID field. Use alphanumeric characters, dashes, or underscores. 3 [Optional] Enter a sample description in the Sample Description field. Use alphanumeric characters, dashes, underscores, or spaces. 4 Expand the Index 1 (i7) drop-down list and select an Index 1 adapter. 5 Expand the Index 2 (i5) drop-down list and select an Index 2 adapter. 6 Expand the Genome Folder drop-down list and select a reference genome. 7 [Optional] Click the Export 8 When finished, click Save Run. icon to export sample information in *.csv format. Import Samples 1 Click Template. The template file contains the correct column headings for import. 2 Enter the sample information in each column for the samples in the run, and then save the file. 3 Click Import Samples and browse to the location of the sample information file. 4 When finished, click Save Run. Local Run Manager Resequencing Analysis Module Workflow Guide 5 Set Parameters } Indel Realignment—On by default. When enabled, regions containing indels are locally realigned to minimize the number of mismatches. Analysis Methods The Resequencing analysis module performs the following analysis steps and then writes analysis output files to the Alignment folder. } Demultiplexes index reads } Generates FASTQ files } Aligns to a reference } Identifies variants Demultiplexing Demultiplexing compares each Index Read sequence to the index sequences specified for the run. No quality values are considered in this step. Index reads are identified using the following steps: } Samples are numbered starting from 1 based on the order they are listed for the run. } Sample number 0 is reserved for clusters that were not assigned to a sample. } Clusters are assigned to a sample when the index sequence matches exactly or when there is up to a single mismatch per Index Read. FASTQ File Generation After demultiplexing, the software generates intermediate analysis files in the FASTQ format, which is a text format used to represent sequences. FASTQ files contain reads for each sample and the associated quality scores. Any controls used for the run and clusters that did not pass filter are excluded. Each FASTQ file contains reads for only 1 sample, and the name of that sample is included in the FASTQ file name. FASTQ files are the primary input for alignment. Adapter Trimming The Resequencing analysis module performs adapter trimming by default. During longer runs, clusters can sequence beyond the sample DNA and read bases from a sequencing adapter. To prevent sequencing into the adapter, the adapter sequence is trimmed before the sequence is written to the FASTQ file. Trimming the adapter sequence avoids reporting false mismatches with the reference sequence and improves alignment accuracy and performance. Adapter Sequences When using the Resequencing analysis module, the following adapter sequences are trimmed depending on the selected library prep method: } Nextera, Nextera XT, Nextera v2 CTGTCTCTTATACACATCT } Nextera Mate Pair CTGTCTCTTATACACATCT+AGATGTGTATAAGAGACAG } TruSeq HT or TruSeq LT } Read 1: AGATCGGAAGAGCACACGTCTGAACTCCAGTCA } Read 2: AGATCGGAAGAGCGTCGTGTAGGGAAAGAGTGT 6 Document # 1000000002705 v00 During the alignment step, reads are aligned against the entire reference genome using the Burrows-Wheeler Aligner (BWA), which aligns relatively short nucleotide sequences against a long reference sequence. BWA automatically adjusts parameters based on read lengths and error rates, and then estimates insert size distribution. The Resequencing analysis module provides the option of using BWA-MEM or BWABacktrack Legacy for the alignment step. BWA-MEM BWA-MEM is the most recent version of the Burrows-Wheeler Alignment algorithm. Optimized for longer read lengths of ≥ 70 bp, BWA-MEM has a significant positive impact on detection of variants, especially insertions and deletions. BWA-Backtrack BWA-Backtrack is an earlier version of the Burrows-Wheeler Aligner algorithm that aligns sequencing read lengths in < 70 bp segments. Use this version for very short reads, or when consistency is required with previous study data. Variant Calling Variant calling records single nucleotide polymorphisms (SNPs), insertions/deletions (indels), and other structural variants in a standardized variant call format (VCF). For each SNP or indel called, the probability of an error is provided as a variant quality score. Reads are realigned around candidate indels to improve the quality of the calls and site coverage summaries. The Resequencing analysis module provides the option of using Starling or GATK for variant calling. Starling Starling calls both SNPs and small indels, and summarizes depth and probabilities for every site in the genome. Starling produces a VCF file for each sample that contains variants. Starling treats each insertion or deletion as a single mismatch. Base calls with more than 2 mismatches to the reference sequence within 20 bases of the call are ignored. If the call occurs within the first or last 20 bases of a read, the mismatch limit is increased to 41 bases. GATK The Genome Analysis Toolkit (GATK) calls raw variants for each sample, analyzes variants against known variants, and then calculates a false discovery rate for each variant. Variants are flagged as homozygous (1/1) or heterozygous (0/1) in the VCF file sample column. For more information, see www.broadinstitute.org/gatk. Local Run Manager Resequencing Analysis Module Workflow Guide 7 Analysis Methods Alignment View Analysis Results 8 1 From the Local Run Manager dashboard, click the run name. 2 From the Run Overview tab, review the sequencing run metrics. 3 [Optional] Click the Copy to Clipboard 4 Click the Sequencing Information tab to review run parameters and consumables information. 5 Click the Samples and Results tab to view the analysis report. } If analysis was repeated, expand the Select Analysis drop-down and select the appropriate analysis. } From the left navigation bar, select a sample name to view the report for another sample. 6 [Optional] Click the Copy to Clipboard icon for access to the output run folder. icon for access to the Analysis folder. Document # 1000000002705 v00 Analysis results are summarized on the Samples and Results tab. The report is also available in a PDF file format for each sample and as an aggregate report in the Analysis folder. Sample Information Table 1 Sample Information Table Column Heading Description Sample ID The sample ID provided when the run was created. Sample Name The sample name provided when the run was created. Run Folder The name of the run folder. Total PF Reads The total number of reads passing filter. Percent Q30 Bases The percentage of bases called with a quality score ≥ Q30. Read Level Statistics Table 2 Read Level Statistics Table Column Heading Description Total Aligned Reads The total number of reads that aligned to the reference for each read (Read 1 and Read 2). Percent Aligned Reads The percentage of reads that aligned to the reference for each read (Read 1 and Read 2). Base Level Statistics Table 3 Base Level Statistics Table Column Heading Description Total Aligned Bases The total number of bases that aligned to the reference for each read (Read 1 and Read 2). Percent Aligned Bases The percentage of aligned bases averaged over cycles per read (Read 1 and Read 2). Mismatch Rate The percentage of bases that did not align to the reference averaged over cycles per read (Read 1 and Read 2). Coverage Histogram The coverage histogram shows the depth of sequencing coverage across the number of bases covered. The depth of coverage is calculated by the number of bases aligned to a given reference position averaged over all positions. Local Run Manager Resequencing Analysis Module Workflow Guide 9 Analysis Report Analysis Report Figure 1 Coverage Histogram (Example) Small Variants Summary Table 4 Small Variants Summary Table Row Heading Description Total Passing The total number of variants passing filter for single nucleotide variations (SNVs), insertions, and deletions. Percent Found in dbSNP The percentage of variants called by the variant caller that are also present in dbSNP. Het/Hom Ratio The ratio of the number of heterozygous SNPs and number of homozygous SNPs detected for the sample. Ts/Tv Ratio The ratio of transitions and transversions in SNPs. • Transitions are variants of the same nucleotide type (pyrimidine to pyrimidine, C and T; or purine to purine, A and G). • Transversions are variants of a different nucleotide type (pyrimidine to purine, or purine to pyrimidine). Fragment Length Summary The fragment length summary section lists the average length of the sequenced fragment for the selected sample, the minimum fragment length, the maximum fragment length, and the range of variability listed as standard deviation. To account for potential outliers, the minimum and maximum are calculated from values within ~ 3 standard deviations, excluding the lower and upper 0.15% of the data. Duplicate Information The duplicate information section lists the percentage of clusters for a paired-end sequencing run that are considered to be PCR duplicates. PCR duplicates are defined as 2 clusters from a paired-end run where both clusters have the exact same alignment positions for each read. 10 Document # 1000000002705 v00 The following analysis output files are generated for the Resequencing analysis module and provide analysis results for alignment and variant calling. Analysis output files are located in the Alignment folder. File Name Description Demultiplexing (*.demux) Intermediate files containing demultiplexing results. FASTQ (*.fastq.gz) Intermediate files containing quality scored base calls. FASTQ files are the primary input for the alignment step. Alignment files in the BAM format (*.bam) Contains aligned reads for a given sample. Variant call files in the VCF format (*.vcf) Contains information about variants found at specific positions in a reference genome. Variant call files in the genome VCF format (*.genome.vcf) Contains the genotype for each position, whether called as a variant or called as a reference. Demultiplexing File Format The process of demultiplexing reads the index sequence attached to each cluster to determine from which sample the cluster originated. The mapping between clusters and sample number are written to 1 demultiplexing (*.demux) file for each tile of the flow cell. The demultiplexing file naming format is s_1_X.demux, where X is the tile number. Demultiplexing files start with a header: } Version (4 byte integer), currently 1 } Cluster count (4 byte integer) The remainder of the file consists of sample numbers for each cluster from the tile. When the demultiplexing step is complete, the software generates a demultiplexing file named DemultiplexSummaryF1L1.txt. } In the file name, F1 represents the flow cell number. } In the file name, L1 represents the lane number. } Demultiplexing results in a table with 1 row per tile and 1 column per sample, including sample 0. } The most commonly occurring sequences in index reads. FASTQ File Format FASTQ file is a text-based file format that contains base calls and quality values per read. Each record contains 4 lines: } The identifier } The sequence } A plus sign (+) } The quality scores in an ASCII encoded format The identifier is formatted as: Local Run Manager Resequencing Analysis Module Workflow Guide 11 Analysis Output Files Analysis Output Files @Instrument:RunID:FlowCellID:Lane:Tile:X:Y ReadNum:FilterFlag:0:SampleNumber Example: @SIM:1:FCX:1:15:6329:1045 1:N:0:2 TCGCACTCAACGCCCTGCATATGACAAGACAGAATC + <>;##=><9=AAAAAAAAAA9#:<#<;<<<????#= BAM File Format A BAM file (*.bam) is the compressed binary version of a SAM file that is used to represent aligned sequences up to 128 Mb. SAM and BAM formats are described in detail at https://samtools.github.io/hts-specs/SAMv1.pdf. BAM files use the file naming format of SampleName_S#.bam, where # is the sample number determined by the order that samples are listed for the run. BAM files contain a header section and an alignments section: } Header—Contains information about the entire file, such as sample name, sample length, and alignment method. Alignments in the alignments section are associated with specific information in the header section. } Alignments—Contains read name, read sequence, read quality, alignment information, and custom tags. The read name includes the chromosome, start coordinate, alignment quality, and the match descriptor string. The alignments section includes the following information for each or read pair: } RG: Read group, which indicates the number of reads for a specific sample. } BC: Barcode tag, which indicates the demultiplexed sample ID associated with the read. } SM: Single-end alignment quality. } AS: Paired-end alignment quality. } NM: Edit distance tag, which records the Levenshtein distance between the read and the reference. } XN: Amplicon name tag, which records the amplicon tile ID associated with the read. BAM files are suitable for viewing with an external viewer such as IGV or the UCSC Genome Browser. BAM index files (*.bam.bai) provide an index of the corresponding BAM file. VCF File Format VCF is a widely used file format developed by the genomics scientific community that contains information about variants found at specific positions in a reference genome. VCF files use the file naming format SampleName_S#.vcf, where # is the sample number determined by the order that samples are listed for the run. VCF File Header—Includes the VCF file format version and the variant caller version. The header lists the annotations used in the remainder of the file. If MARS is listed, the Illumina internal annotation algorithm annotated the VCF file. The VCF header includes the reference genome file and BAM file. The last line in the header contains the column headings for the data lines. VCF File Data Lines—Each data line contains information about a single variant. 12 Document # 1000000002705 v00 Analysis Output Files VCF File Headings Heading Description CHROM The chromosome of the reference genome. Chromosomes appear in the same order as the reference FASTA file. POS The single-base position of the variant in the reference chromosome. For SNPs, this position is the reference base with the variant; for indels or deletions, this position is the reference base immediately before the variant. ID The rs number for the SNP obtained from dbSNP.txt, if applicable. If there are multiple rs numbers at this location, the list is semicolon delimited. If no dbSNP entry exists at this position, a missing value marker ('.') is used. REF The reference genotype. For example, a deletion of a single T is represented as reference TT and alternate T. An A to T single nucleotide variant is represented as reference A and alternate T. ALT The alleles that differ from the reference read. For example, an insertion of a single T is represented as reference A and alternate AT. An A to T single nucleotide variant is represented as reference A and alternate T. QUAL A Phred-scaled quality score assigned by the variant caller. Higher scores indicate higher confidence in the variant and lower probability of errors. For a quality score of Q, the estimated probability of an error is 10-(Q/10). For example, the set of Q30 calls has a 0.1% error rate. Many variant callers assign quality scores based on their statistical models, which are high in relation to the error rate observed. VCF File Annotations Heading Description FILTER If all filters are passed, PASS is written in the filter column. • LowDP—Applied to sites with depth of coverage below a cutoff. • LowGQ—The genotyping quality (GQ) is below a cutoff. • LowQual—The variant quality (QUAL) is below a cutoff. • LowVariantFreq—The variant frequency is less than the given threshold. • R8—For an indel, the number of adjacent repeats (1-base or 2-base) in the reference is greater than 8. • SB—The strand bias is more than the given threshold. Used with the Somatic Variant Caller and GATK. Local Run Manager Resequencing Analysis Module Workflow Guide 13 Heading Description INFO Possible entries in the INFO column include: • AC—Allele count in genotypes for each ALT allele, in the same order as listed. • AF—Allele Frequency for each ALT allele, in the same order as listed. • AN—The total number of alleles in called genotypes. • CD—A flag indicating that the SNP occurs within the coding region of at least 1 RefGene entry. • DP—The depth (number of base calls aligned to a position and used in variant calling). • Exon—A comma-separated list of exon regions read from RefGene. • FC—Functional Consequence. • GI—A comma-separated list of gene IDs read from RefGene. • QD—Variant Confidence/Quality by Depth. • TI—A comma-separated list of transcript IDs read from RefGene. FORMAT The format column lists fields separated by colons. For example, GT:GQ. The list of fields provided depends on the variant caller used. Available fields include: • AD—Entry of the form X,Y, where X is the number of reference calls, and Y is the number of alternate calls. • DP—Approximate read depth; reads with MQ=255 or with bad mates are filtered. • GQ—Genotype quality. • GQX—Genotype quality. GQX is the minimum of the GQ value and the QUAL column. In general, these values are similar; taking the minimum makes GQX the more conservative measure of genotype quality. • GT—Genotype. 0 corresponds to the reference base, 1 corresponds to the first entry in the ALT column, and so on. The forward slash (/) indicates that no phasing information is available. • NL—Noise level; an estimate of base calling noise at this position. • PL—Normalized, Phred-scaled likelihoods for genotypes. • SB—Strand bias at this position. Larger negative values indicate less bias; values near 0 indicate more bias. Used with the Somatic Variant Caller and GATK. • VF—Variant frequency; the percentage of reads supporting the alternate allele. SAMPLE The sample column gives the values specified in the FORMAT column. Genome VCF Files Genome VCF (gVCF) files are VCF v4.1 files that follow a set of conventions for representing all sites within the genome in a reasonably compact format. The gVCF files include all sites within the region of interest in a single file for each sample. The gVCF file shows no-calls at positions with low coverage, or where a low-frequency variant (< 3%) occurs often enough (> 1%) that the position cannot be called to the reference. A genotype (GT) tag of ./. indicates a no-call. For more information, see sites.google.com/site/gvcftools/home/about-gvcf. 14 Document # 1000000002705 v00 The following output files provide supplementary information, or summarize run results and analysis errors. Although, these files are not required for assessing analysis results, they can be used for troubleshooting purposes. All files are located in the Alignment folder unless otherwise specified. File Name Description AdapterTrimming.txt Lists the number of trimmed bases and percentage of bases for each tile. This file is present only if adapter trimming was specified for the run. AnalysisLog.txt Processing log that describes every step that occurred during analysis of the current run folder. This file does not contain error messages. Located in the root level of the run folder. AnalysisError.txt Processing log that lists any errors that occurred during analysis. This file is present only if errors occurred. Located in the root level of the run folder. CompletedJobInfo.xml Written after analysis is complete, contains information about the run, such as date, flow cell ID, software version, and other parameters. Located in the root level of the run folder. DemultiplexSummaryF1L1.txt Reports demultiplexing results in a table with 1 row per tile and 1 column per sample. ErrorsAndNoCallsByLaneTile ReadCycle.csv A comma-separated values file that contains the percentage of errors and no-calls for each tile, read, and cycle. Mismatch.htm Contains histograms of mismatches per cycle and nocalls per cycle for each tile. ResequencingRunStatistics.xml Contains summary statistics specific to the run. Located in the root level of the run folder. Summary.xml Contains a summary of mismatch rates and other base calling results. Summary.htm Contains a summary web page generated from Summary.xml. Analysis Folder The analysis folder holds the files generated by the Local Run Manager software. The relationship between the output folder and analysis folder is summarized as follows: } During sequencing, Real-Time Analysis (RTA) populates the output folder with files generated during image analysis, base calling, and quality scoring. } RTA copies files to the analysis folder in real time. After RTA assigns a quality score to each base for each cycle, the software writes the file RTAComplete.xml to both folders. } When the file RTAComplete.xml is present, analysis begins. Local Run Manager Resequencing Analysis Module Workflow Guide 15 Analysis Output Files Supplementary Output Files } As analysis continues, Local Run Manager writes output files to the analysis folder, and then copies the files back to the output folder. Folder Structure Data Intensities BaseCalls Alignment—Contains *.bam and *.vcf files, and files specific to the analysis module. L001—Contains one subfolder per cycle, each containing *.bcl files. Sample1_S1_L001_R1_001.fastq.gz Sample2_S2_L001_R1_001.fastq.gz Undetermined_S0_L001_R1_001.fastq.gz L001—Contains *.locs files, 1 for each tile. RTA Logs—Contains log files from RTA software analysis. InterOp—Contains binary files used by Sequencing Analysis Viewer (SAV). Logs—Contains log files describing steps performed during sequencing. Queued—A working folder for software; also called the copy folder. AnalysisError.txt AnalysisLog.txt CompletedJobInfo.xml QueuedForAnalysis.txt [WorkflowName]RunStatistics RTAComplete.xml RunInfo.xml runParameters.xml Alignment Folders Each time that analysis is requeued, the Local Run Manager creates an Alignment folder named AlignmentN, where N is a sequential number. 16 Document # 1000000002705 v00 Custom analysis settings are intended for technically advanced users. If settings are applied incorrectly, serious problems can occur. Add a Custom Analysis Setting 1 From the Module-Specific Settings section of the Create Run screen, click Show advanced module settings. 2 Click Add custom setting. 3 In the custom setting field, enter the setting name as listed in the Available Analysis Settings section. 4 In the setting value field, enter the setting value. 5 To remove a setting, click the x icon. Available Analysis Settings } } } } Adapter Trimming—By default, adapter trimming is enabled in the Resequencing analysis module. To specify a different adapter, use the Adapter setting. The same adapter sequence is trimmed for Read 1 and Read 2. } To specify 2 adapter sequences, separate the sequences with a plus (+) sign. } To specify a different adapter sequence for Read 2, use the AdapterRead2 setting. Setting Name Setting Value Adapter Enter the sequence of the adapter to be trimmed. AdapterRead2 Enter the sequence of the adapter to be trimmed. Quality Score Trim—The BWA alignment algorithm automatically trims the 3' ends of non-indexed reads with low quality scores. By default, the value is set to 15. Setting Name Setting Value QualityScoreTrim Enter a value greater than 0. Variant Frequency—Filters variants with a frequency less than the specified threshold. Setting Name Setting Value VariantFrequencyFilterCutoff Enter a threshold value. With GATK or Starling, the default value is 0.20. Indel Repeat Cutoff—Filters insertions and deletions when the reference has a 1base or 2-base motif over 8 times (by default) next to the variant. Local Run Manager Resequencing Analysis Module Workflow Guide 17 Custom Analysis Settings Custom Analysis Settings } } 18 Setting Name Setting Value IndelRepeatFilterCutoff Enter a threshold value. The default value is 8. Variant Genotyping Quality—Filters variants with a genotype quality (GQ) less than the specified threshold. Setting Name Setting Value VariantMinimumGQCutoff Enter a value less than 99. With GATK, the default value is 30. With Starling, the default value is 20. Variant Quality Cutoff—Filters variants with a quality (QUAL) less than the specified threshold. QUAL indicates the confidence of the variant call. Setting Name Setting Value VariantMiniumQualCutoff Enter a threshold value. With GATK, the default value is 30. With Starling, the default value is 20. Document # 1000000002705 v00 For technical assistance, contact Illumina Technical Support. Table 5 Illumina General Contact Information Website Email www.illumina.com [email protected] Table 6 Illumina Customer Support Telephone Numbers Region Contact Number Region North America 1.800.809.4566 Japan Australia 1.800.775.688 Netherlands Austria 0800.296575 New Zealand Belgium 0800.81102 Norway China 400.635.9898 Singapore Denmark 80882346 Spain Finland 0800.918363 Sweden France 0800.911850 Switzerland Germany 0800.180.8994 Taiwan Hong Kong 800960230 United Kingdom Ireland 1.800.812949 Other countries Italy 800.874909 Contact Number 0800.111.5011 0800.0223859 0800.451.650 800.16836 1.800.579.2745 900.812168 020790181 0800.563118 00806651752 0800.917.0041 +44.1799.534000 Safety data sheets (SDSs)—Available on the Illumina website at support.illumina.com/sds.html. Product documentation—Available for download in PDF from the Illumina website. Go to support.illumina.com, select a product, then select Documentation & Literature. Local Run Manager Resequencing Analysis Module Workflow Guide Technical Assistance Technical Assistance Illumina 5200 Illumina Way San Diego, California 92122 U.S.A. +1.800.809.ILMN (4566) +1.858.202.4566 (outside North America) [email protected] www.illumina.com
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