We use cookies to improve your browsing experience and provide meaningful content. Read our cookie policy. Accept
  •  Customer Login
  • Register
  •  View Cart (0)
  •  Customer Login
  • Register
  •  View Cart (0)

Takara Bio
  • Products
  • Services & Support
  • Learning centers
  • APPLICATIONS
  • About
  • Contact Us

Clontech Takara Cellartis

Close

  • ‹ Back to DNA-seq protocols
  • Using UMIs with ThruPLEX Tag-Seq FLEX
  • Targeted capture with Agilent SureSelectQXT
  • Exome capture with Illumina Nextera Rapid Capture
  • Targeted capture with Roche NimbleGen SeqCap EZ
  • Targeted capture with IDT xGen panels
  • Targeted capture with Agilent SureSelectXT
  • Targeted capture with Agilent SureSelectXT2
ThruPLEX Tag-seq and DNA-seq FLEX product page ThruPLEX FLEX product information
ThruPLEX Tag-Seq FLEX tech note View Tag-Seq FLEX data
Home › Learning centers › Next-generation sequencing › DNA-seq protocols › Using UMIs with ThruPLEX Tag-Seq FLEX

Next-generation sequencing

  • Product line overview
  • RNA-seq
    • Automated library prep
    • Technologies and applications
      • SMART technology
      • Single-cell mRNA-seq
      • Total RNA-seq
      • SMART-Seq PLUS solutions
    • Technotes
      • Enabling long-read RNA sequencing from low-input samples
      • Singular for low input total RNA seq
      • All-in-one cDNA synthesis and library prep from single cells
      • Automation-friendly, all-in-one cDNA synthesis and library prep
      • All-in-one cDNA synthesis and library prep from ultra-low RNA inputs
      • 3' mRNA libraries from single cells (SMART-Seq v4 3' DE Kit)
      • Full-length mRNA-seq for target capture
      • Stranded libraries from single cells
      • Stranded libraries from picogram-input total RNA (v3)
      • Stranded libraries from 100 pg-100 ng total RNA
      • Stranded libraries from 100 ng - 1 ug total RNA
      • Stranded libraries from FFPE inputs (v2)
      • Nonstranded libraries from FFPE inputs
      • Singular and Takara Bio library prep
      • Full-length, single-cell, and ultra-low-input RNA-seq with UMIs
    • Webinars
      • Pushing the limits of sensitivity for single-cell applications
      • Capturing biological complexity by high-resolution single-cell genomics
      • Taking single-cell RNA-seq by STORM
      • STORM-seq Q&A
      • Neural multiomics Q&A
      • Liver metabolic function, dissecting one cell at a time
      • Pushing the limits Q&A
      • Total RNA sequencing of liquid biopsies
      • Liver metabolic function Q&A
      • Automating full-length single-cell RNA-seq libraries
      • Single-cell whole transcriptome analysis
      • Sensitivity and scale for neuron multiomics
    • RNA-seq tips
    • RNA-seq FAQs
  • Technical notes
    • DNA-seq
      • NGS library prep with enzymatic fragmentation
      • Comparing ThruPLEX FLEX EF to Kapa and NEBNext
      • Next-gen WGA method for CNV and SNV detection from single cells
      • Low-input whole-exome sequencing
      • DNA-seq from FFPE samples
      • Low cell number ChIP-seq using ThruPLEX DNA-Seq
      • Detection of low-frequency variants using ThruPLEX Tag-Seq FLEX
      • ThruPLEX FLEX outperforms NEBNext Ultra II
      • Streamlined DNA-seq from challenging samples
      • High-resolution CNV detection using PicoPLEX Gold DNA-Seq
      • ThruPLEX FLEX data sheet
      • Low-volume DNA shearing for ThruPLEX library prep
    • Immune Profiling
      • Track B-cell changes in your mouse model
      • Efficient and sensitive profiling of human B-cell receptor repertoire
      • TCRv2 kit validated for rhesus macaque samples
      • Improved TCR repertoire profiling from mouse samples (bulk)
      • TCR repertoire profiling from mouse samples (bulk)
      • BCR repertoire profiling from mouse samples (bulk)
      • Improved TCR repertoire profiling from human samples (bulk)
      • TCR repertoire profiling from human samples (single cells)
      • BCR repertoire profiling from human samples (bulk)
    • Epigenetic sequencing
      • ChIP-seq libraries for transcription factor analysis
      • ChIP-seq libraries from ssDNA
      • Full-length small RNA libraries
      • Methylated DNA-seq with MBD2
    • Reproductive health technologies
      • Embgenix ESM Screen
      • Embgenix PGT-A
  • Technology and application overviews
    • Embgenix GT-omics Oncology Tech Note
    • Sequencing depth for ThruPLEX Tag-seq
    • Whole genome amplification from single cells
  • FAQs and tips
    • Positive and negative controls in scRNA-seq
    • DNA-seq FAQs
    • ChIP-seq FAQs
    • Indexing FAQs
    • TCR-seq methods: Q&A
  • DNA-seq protocols
    • Using UMIs with ThruPLEX Tag-Seq FLEX
    • Targeted capture with Agilent SureSelectQXT
    • Exome capture with Illumina Nextera Rapid Capture
    • Targeted capture with Roche NimbleGen SeqCap EZ
    • Targeted capture with IDT xGen panels
    • Targeted capture with Agilent SureSelectXT
    • Targeted capture with Agilent SureSelectXT2
  • Bioinformatics resources
    • Cogent NGS Analysis Pipeline
      • Cogent NGS Analysis Pipeline notices
    • Cogent NGS Discovery Software
      • Cogent NGS Discovery Software notices
    • Cogent NGS Immune Profiler
      • Cogent NGS Immune Profiler Software notices
    • Cogent NGS Immune Viewer
    • Embgenix Analysis Software
    • SMART-Seq DE3 Demultiplexer
  • Webinars
    • Harnessing the power of full-length transcriptome analysis for biomarker discoveries
    • SMART-Seq Pro kits for biomarker detection
    • Takara Bio Single-Cell Workshop, Spring 2021
    • Single-Cell Workshop at 2020 NextGen Omics Series UK
    • Immunogenomics to accelerate immunotherapy
    • MeD-Seq, a novel method to detect DNA methylation
    • Single-cell DNA-seq
  • Posters
    • Long-read mRNA-seq poster
New products
Need help?
Contact Sales
ThruPLEX Tag-seq and DNA-seq FLEX product page ThruPLEX FLEX product information
ThruPLEX Tag-Seq FLEX tech note View Tag-Seq FLEX data
Protocol

Using UMIs with ThruPLEX Tag-Seq FLEX

Note: The protocols and QC procedures for ThruPLEX HV kits have been updated to accommodate lower inputs and compatibility with the Unique Dual Index Kit sets. While product naming has been revised accordingly (ThruPLEX FLEX), reagent formulations remain unchanged.

ThruPLEX Tag-Seq FLEX adapters have been designed to include discrete unique molecular tags (UMIs) that can be analyzed using publicly available tools. Below is an example of a step-by-step pipeline for finding and using the molecular tags in your sequencing data using a command-line environment such as Linux.

Before you begin

  • Additional software dependencies*
    • Linux x86_64
    • Java 10.0.1 or later
    • Trimmomatic 0.36
    • Tools suite from fgbio 0.6.1
    • Picard 2.18.27
    • SAMtools 1.8
    • Bowtie 2 2.3.4.1
    *For information on system requirements and installation instructions, please consult the software documentation.
  • Download the following input files from our site
    • FASTA file containing the sequences needed for adapter trimming (Step A)
    • TEXT file containing the sequences needed for read grouping (Step D)

Adapter trimming Unmapped BAM Read alignment Read grouping Final alignment

Adapter trimming  

Step A. Trim adapters and reverse complement UMIs

The UMIs are read during the first seven cycles of Read1 and Read2. However, if long reads are performed or if the inserts are short, it is possible to read the reverse complement of the UMI (rcUMI) after the insert and before the Illumina adapters (see figure below). To remove the artificial sequence before alignment to the genome assembly, the reverse complement of the UMI is added to the Illumina adapter during the trimming step. The FASTA files containing the sequences are available here and from Takara Bio technical support.

java -jar trimmomatic-0.36.jar PE <read1.fastq.gz> <read2.fastq.gz> <paired_output1.fq.gz> <unpaired_output1.fq.gz> <paired_output2.fq.gz> <unpaired_output2.fq.gz> ILLUMINACLIP:TruSeq3-PE-2with_rcUMI.fa:1:10:5:9:true MINLEN:20

where:

  • <read1.fastq.gz> is the input Illumina sequencing file for Read 1
  • <read2.fastq.gz> is the input Illumina sequencing file for Read 2
  • <paired_output1.fq.gz> is the output file containing paired forward reads
  • <unpaired_output1.fq.gz> is the output file containing unpaired forward reads
  • <paired_output2.fq.gz> is the is the output file containing paired reverse reads
  • <unpaired_output2.fq.gz> is the output file containing unpaired reverse reads
  • TruSeq3-PE-2with_rcUMI.fa is the downloaded FASTA file containing the rcUMI sequences

E.g.,

java -jar trimmomatic-0.36.jar PE read1_R1_001.fastq.gz read2_R2_001.fastq.gz trimmed_R1.fq.gz UnPaired_R1_001.fq.gz trimmed_R2.fq.gz UnPaired_R2_001.fq.gz ILLUMINACLIP:TruSeq3-PE-2with_rcUMI.fa:1:10:5:9:true MINLEN:20

Unmapped BAM  

Step B. Generate unmapped BAM with UMI in RX tag

This step involves converting your trimmed FASTQ files from Step A to an unmapped BAM format, moving the UMI information from the read itself to the RX tag of each read, then creating FASTQ format files with the UMI sequence removed that can be used for alignment. Both the FASTQ file without the UMI and the intermediate BAM file that has the UMI information will be used later in the pipeline.

  1. Add your tag or UMI to an RX tag in the BAM file using fgbio's FastqToBam tool:

    java -jar fgbio-0.6.1.jar FastqToBam -i <paired_output1.fq.gz> <paired_output2.fq.gz> -r 7M1S+T 7M1S+T -o <unmapped_output.bam> -s true

    where:

    • <paired_output1.fq.gz> is the output file containing the paired forward reads from Step A
    • <paired_output2.fq.gz> is the is the output file containing paired reverse reads from Step A
    • <unmapped_output.bam> is the output file

    E.g.,

    java -jar fgbio-0.6.1.jar FastqToBam -i trimmed_R1.fq.gz trimmed_R2.fq.gz -r 7M1S+T 7M1S+T -o unmapped.bam -s true

    ArgumentsExplanation
    -i Input FASTQ files corresponding to each sequencing read
    -r

    Read structure:

    T identifies a template read (to be aligned later)
    B identifies a sample barcode read (not found in this part of the read, so not used)
    M identifies a unique molecular index read (seven bases for ThruPLEX Tag-Seq HV)
    S identifies a set of bases that should be skipped or ignored (skip the first base for a better alignment)

    -o Output file, in this example, named ummapped bam
    -s  If true, queryname sort bam
  2. Generate FASTQ output files from the unmapped BAM using Picard's SamToFastq tool:

    java -jar picard.jar SamToFastq INPUT=<unmapped_output.bam> FASTQ=<unmapped_output1.fastq> SECOND_END_FASTQ=<unmapped_output2.fastq>

    where:

    • <unmapped_output.bam> is the unmapped output file from Step B.1
    • <unmapped_output1.fastq> is the FASTQ output file for first end (Read1) of the pair FASTQ
    • <unmapped_output2.fastq> is the FASTQ output file for second end (Read2) of the pair FASTQ

    E.g.,

    java -jar picard.jar SamToFastq INPUT=unmapped.bam FASTQ=read1_minusUMI_R1.fastq SECOND_END_FASTQ=read2_minusUMI_R2.fastq

Now you have generated FASTQ files with the UMI sequences removed from the read, and a BAM file that contains the UMI information.

Read alignment  

Step C. Align the new FASTQ files (with removed UMIs) with Bowtie 2

  1. Align the processed FASTQ files from Step B.2 to the appropriate genome assembly with Bowtie 2:

    bowtie2 -x /REFERENCES/HG19/bowtie2hg19 -1 <unmapped_output1.fastq> -2 <unmapped_output2.fastq> -p 4 -S <bowtie2_ouput.sam>

    where:

    • <unmapped_output1.fastq> is the FASTQ output file for first end (Read1) of the pair FASTQ from Step B.2
    • <unmapped_output2.fastq> is the FASTQ output file for second end (Read2) of the pair FASTQ from Step B.2
    • <bowtie2_output.sam> is the output file

    E.g.,

    bowtie2 -x /REFERENCES/HG19/bowtie2hg19 -1 read1_minusUMI_R1.fastq -2 read2_minusUMI_R2.fastq -p 4 -S bowtie2.sam

  2. Sort by queryname with Picard's SortSAM tool:

    java -jar picard.jar SortSam INPUT=<bowtie2_output.sam> OUTPUT=<sorted_bowtie2_output.sam> SORT_ORDER=queryname

    where:

    • <bowtie2_output.sam> is the Bowtie2 output file from Step C.1
    • <sorted_bowtie2_output.sam> is the output file

    E.g.,

    java -jar picard.jar SortSam INPUT=bowtie2.sam OUTPUT=sorted.sam SORT_ORDER=queryname

  3. Generate sorted BAM file with SAMtools:

    samtools view -S -b <sorted_bowtie2_output.sam> > <sorted_bowtie2_output.bam>

    where:

    • <sorted_bowtie2_output.sam> is the sorted SAM file from Step C.2
    • <sorted_bowtie2_output.bam> is the output file

    E.g.,

    samtools view -S -b sorted.sam > sorted.bam

  4. Use the unmapped BAM generated in Step B.1 and the sorted BAM file from Step B.3 to generate a mapped BAM file that includes the UMI in the RX tag using Picard's MergeBamAlignment tool:

    java -jar picard.jar MergeBamAlignment ALIGNED=<sorted_bowtie2_output.bam> UNMAPPED=<unmapped_output.bam> OUTPUT=<aligned_output.bam> REFERENCE_SEQUENCE=hg19.fa SORT_ORDER=coordinate ALIGNER_PROPER_PAIR_FLAGS=true ALIGNED_READS_ONLY=true CREATE_INDEX=true VALIDATION_STRINGENCY=SILENT EXPECTED_ORIENTATIONS=FR MAX_INSERTIONS_OR_DELETIONS=-1

    where:

    • <sorted_bowtie2_output.bam> is the sorted BAM file from Step C.3
    • <unmapped_output.bam> is the unmapped output file from Step B.1
    • <aligned_output.bam> is the output file

    E.g.,

    java -jar picard.jar MergeBamAlignment ALIGNED=sorted.bam UNMAPPED=unmapped.bam OUTPUT=umi.bam REFERENCE_SEQUENCE=hg19.fa SORT_ORDER=coordinate ALIGNER_PROPER_PAIR_FLAGS=true ALIGNED_READS_ONLY=true CREATE_INDEX=true VALIDATION_STRINGENCY=SILENT EXPECTED_ORIENTATIONS=FR MAX_INSERTIONS_OR_DELETIONS=-1

Additional analysis

Now you have an aligned BAM file (<ouput.bam>) that contains the UMI information. This can be used by a variety of different downstream analysis programs. Below, we describe a method to group and filter the reads using the UMI.

Read grouping  

Step D. Group reads per UMI and filter

This step provides instructions to group the UMIs for secondary analysis, such as identifying false positives from sequencing errors or collapsing PCR duplicates. At the end of this process, you will have an unmapped BAM format file with filtered consensus reads.

  1. Correct the UMIs stored in BAM files when a set of fixed UMIs is in use, as is the case with ThruPLEX Tag-Seq FLEX, using fgbio's CorrectUmis. The UMI sequences are available here and via Takara Bio technical support.

    java -jar fgbio-0.6.1.jar CorrectUmis -i <aligned_ouput.bam> -o <corrected_output.bam> -M <metrics_output.txt> -m 2 -d 2 -U <expectedUMI.txt>

    where:

    • <aligned_output.bam> is the output file from Step C.4
    • <corrected_output.bam> is the corrected output file
    • <metrics_output.txt> is the output metrics file
    • <expectedUMI.txt> is the downloaded text file containing the UMI sequence information

    E.g.,

    java -jar fgbio-0.6.1.jar CorrectUmis -i umi.bam -o corrected_umi.bam -M metrics.txt -m 2 -d 2 -U expectedUMI.txt

    Argument Explanation
    -m Maximum number of mismatches between a UMI and an expected UMI
    -d Minimum distance (in mismatches) to next best UMI
  2. Group the reads together that appear to have come from the same original molecule using fgbio's GroupReadsByUmi. Reads are grouped by template, and then templates are sorted by the 5'-mapping positions of the reads from the template, from earliest mapping position to latest. Reads that have the same end positions are then subgrouped by UMI sequence.

    java -jar fgbio-0.6.1.jar GroupReadsByUmi -i <corrected_output.bam> -o <grouped_ouput.bam> -s paired -m 20

    where:

    • <corrected_output.bam> is the output file from Step D.1
    • <grouped_output.bam> is the output file

    E.g.,

    java -jar fgbio-0.6.1.jar GroupReadsByUmi -i corrected_umi.bam -o grouped.bam -s paired -m 20

    Argument Explanation
    -s 
    Specifies the grouping strategy.
    paired Option for the grouping strategy arugment. It is similar to adjacency but for methods that produce a template with a pair of UMIs such that a read with A-B is related to but not identical to a read with B-A. Expects the pair of UMIs to be stored in a single tag, separated by a hyphen (e.g., ACGT-CCGG).
    -m Minimum mapping quality.
  3. Call consensus sequences from reads with the same unique molecular tag using fgbio's CallMolecularConsensusReads tool. This step generates unmapped consensus reads from the output of GroupReadsByUmi.

    java -jar fgbio-0.6.1.jar CallMolecularConsensusReads -I <grouped_output.bam> -o <consensus_output.bam> --error-rate-post-umi=25 --min-read=2

    where:

    • <grouped_output.bam> is the grouped output file from Step D.2
    • <consensus_output.bam> is the output file

    E.g.,

    java -jar fgbio-0.6.1.jar CallMolecularConsensusReads -I grouped.bam -o consensus_unmapped.bam --error-rate-post-umi=25 --min-read=2

    Argument Explanation
    --error-rate-post-umi The Phred-scaled error rate for an error post when the UMIs have been integrated.
    --min-read Particular attention should be paid to setting the --min-reads parameter, as this can have a dramatic effect on both results and runtime. For libraries with low duplication rates (e.g., 100–300X exome libraries) in which it is desirable to retain singleton reads while making consensus reads from sets of duplicates, --min-reads=1 is appropriate. For libraries with high duplication rates where it is desirable to only produce consensus reads supported by 2+ reads to allow error correction, --min-reads=2 or higher is appropriate.
  4. Filter consensus reads generated by CallMolecularConsensusReads using fgbio's FilterConsensusReads tool.

    java -jar fgbio-0.6.1.jar FilterConsensusReads -i <consensus_output.bam> -o <filtered_output.bam> -r hg19.fa -M 1 -E 0.05 -e 0.1 -N 30 -n 0.1

    where:

    • <consensus_output.bam> is the consensus reads output file from Step D.3
    • <filtered_output.bam> is the output file

    E.g.,

    java -jar fgbio-0.6.1.jar FilterConsensusReads -i consensus_unmapped.bam -o filtered_unmapped.bam -r hg19.fa -M 1 -E 0.05 -e 0.1 -N 30 -n 0.1

    Argument Explanation
    -r Reference FASTA file
    -M The minimum number of reads supporting a consensus base/read
    -E The maximum raw-read error rate across the entire consensus read
    -e The maximum error rate for a single consensus base
    -N Mask (make N) consensus bases with quality less than this threshold
    -n Maximum fraction of no-calls in the read after filtering
    -o Output file

    These filters depend on the quality of the run and the number of cycles performed for Read1 and Read2. For best results, stringency can be increased when using short reads (e.g., PE 75 x 75 cycles) and relaxed when using long reads (e.g., PE 150 x 150 cycles).

Final alignment  

Step E. Align grouped and filtered reads with Bowtie 2

In this part, the final alignment is performed with the filtered consensus read files (duplicates removed) from Step D.4. This process results in an aligned BAM file that can be visualized and used for downstream variant calling.

  1. Sort the reads per queryname with Picard's SortSAM tool:

    java -jar picard.jar SortSam INPUT=<filtered_output.bam> OUTPUT=<sorted_filtered_output.bam> SORT_ORDER=queryname

    where:

    • <filtered_output.bam> is the filtered consensus reads output file from Step D.4
    • <sorted_filtered_output.bam> is the output file

    E.g.,

    java -jar picard.jar SortSam INPUT=filtered_unmapped.bam OUTPUT=filtered_unmapped_sorted.bam SORT_ORDER=queryname

  2. Create new FASTQ files from the unmapped reads using Picards' SamToFastq tool:

    java -jar picard.jar SamToFastq INPUT=<sorted_filtered_output.bam> FASTQ=<sorted_filtered_output1.fastq> SECOND_END_FASTQ=<sorted_filtered_output2.fastq>

    where:

    • <sorted_filtered_output.bam> is the sorted output file from Step E.1
    • <sorted_filtered_output1.fastq> is the filtered FASTQ output file for first end (Read1) of the pair FASTQ
    • <sorted_filtered_output2.fastq> is the filtered FASTQ output file for second end (Read2) of the pair FASTQ

    E.g.,

    java -jar picard.jar SamToFastq INPUT=filtered_unmapped_sorted.bam FASTQ=filtered_R1.fastq SECOND_END_FASTQ=filtered_R2.fastq

  3. Align the new FASTQ files with Bowtie 2:

    bowtie2 -x /REFERENCES/HG19/bowtie2hg19 -1 <sorted_filtered_output1.fastq> -2 <sorted_filtered_output2.fastq> -p 4 -S <aligned_filtered_output.sam>

    where:

    • <sorted_filtered_output1.fastq> is the filtered FASTQ output file for first end (Read1) of the pair FASTQ from Step E.2
    • <sorted_filtered_output2.fastq> is the filtered FASTQ output file for second end (Read2) of the pair FASTQ from Step E.2
    • <aligned_filtered_ouput.sam> is the output file

    E.g.,

    bowtie2 -x /REFERENCES/HG19/bowtie2hg19 -1 filtered_R1.fastq -2 filtered_R2.fastq -p 4 -S filtered.sam

  4. Sort by queryname with Picard's SortSAM tool:

    java -jar picard.jar SortSam INPUT=<aligned_filtered_ouput.sam> OUTPUT=<aligned_filtered_sorted_output.sam> SORT_ORDER=queryname

    where:

    • <aligned_filtered_ouput.sam > is the aligned filtered output file from Step E.3
    • <aligned_filtered_sorted_output.sam> is the output file

    E.g.,

    java -jar picard.jar SortSam INPUT=filtered.sam OUTPUT=sorted_filtered.sam SORT_ORDER=queryname

  5. Create BAM file with SAMtools:

    samtools view -S -b <aligned_filtered_ sorted_output.sam> > <aligned_filtered_ sorted_output.bam>

    where:

    • <aligned_filtered_sorted_output.sam> is the sorted output file from Step E.4
    • <aligned_filtered_sorted_output.bam> is output file

    E.g.,

    samtools view -S -b sorted_filtered.sam > sorted_filtered.bam

  6. Use the unmapped BAM generated in Step E.1 and the aligned bam from Step E.5 to generate a mapped BAM that includes the UMI in the RX tag using Picard's MergeBamAlignment tool:

    java -jar picard.jar MergeBamAlignment ALIGNED=<aligned_filtered_sorted_output.bam> UNMAPPED=<sorted_filtered_output.bam> OUTPUT=<consensus_filtered_output.bam> REFERENCE_SEQUENCE=hg19.fa SORT_ORDER=coordinate ALIGNER_PROPER_PAIR_FLAGS=true ALIGNED_READS_ONLY=true CREATE_INDEX=true VALIDATION_STRINGENCY=SILENT EXPECTED_ORIENTATIONS=FR MAX_INSERTIONS_OR_DELETIONS=-1

    where:

    • <aligned_filtered_sorted_output.bam> is the sorted BAM file from Step E.5
    • <sorted_filtered_output.bam> is the unmapped output file from Step E.1
    • <consensus_filtered_output.bam> is the output file

    E.g.,

    java -jar picard.jar MergeBamAlignment ALIGNED=sorted_filtered.bam UNMAPPED=filtered_unmapped_sorted.bam OUTPUT=consensus.bam REFERENCE_SEQUENCE=hg19.fa SORT_ORDER=coordinate ALIGNER_PROPER_PAIR_FLAGS=true ALIGNED_READS_ONLY=true CREATE_INDEX=true VALIDATION_STRINGENCY=SILENT EXPECTED_ORIENTATIONS=FR MAX_INSERTIONS_OR_DELETIONS=-1

Related Products

Cat. # Product Size Price License Quantity Details
R400734 ThruPLEX® Tag-Seq FLEX 24 Rxns USD $1059.00

License Statement

ID Number  
384 This product is protected by U.S. Patents 7,803,550, 8,399,199; 9,598,727, 10,196,686, 10,208,337, and 10,155,942 and corresponding foreign patents. Additional patents are pending. For further license information, please contact a Takara Bio USA licensing representative by email at licensing@takarabio.com.
438 This Product is protected by one or more patents from the family comprising:US10155942, AU2013337280, CA2889862, People's Republic of China Patent: ZL201380069090.3, US10961529, DE602013026292.6, EP2914745, UK2914745, HK1089485, JP6454281 and any corresponding patents, divisionals, continuations, patent application and foreign filings sharing priority with the same family.
448 This product is sold under license from Becton Dickinson and Company and is covered by one or more of the following US Patent Nos. 8,835,358; 9,290,808; 9,290,809; 9,315,857; 9,708,659; 9,816,137; 9,845,502; 10,047,394; 10,059,991; 10,202,646; 10,392,661; 10,619,203; and pending U.S. patent applications 16/551,638 and 16/846,133.

ThruPLEX Tag-Seq FLEX uses a simple, three-step workflow to generate high-complexity DNA libraries with unique molecular tags from standard or challenging samples such as FFPE and cell-free DNA. Unique dual index (UDI) kits are available for purchase separately. This product contains reagents for 24 reactions.

Notice to purchaser

Our products are to be used for Research Use Only. They may not be used for any other purpose, including, but not limited to, use in humans, therapeutic or diagnostic use, or commercial use of any kind. Our products may not be transferred to third parties, resold, modified for resale, or used to manufacture commercial products or to provide a service to third parties without our prior written approval.

Documents Components Image Data

Back

R400734: ThruPLEX Tag-Seq HV Core Components

R400734: ThruPLEX Tag-Seq HV Core Components
R400735 ThruPLEX® Tag-Seq FLEX 96 Rxns USD $3740.00

License Statement

ID Number  
384 This product is protected by U.S. Patents 7,803,550, 8,399,199; 9,598,727, 10,196,686, 10,208,337, and 10,155,942 and corresponding foreign patents. Additional patents are pending. For further license information, please contact a Takara Bio USA licensing representative by email at licensing@takarabio.com.
438 This Product is protected by one or more patents from the family comprising:US10155942, AU2013337280, CA2889862, People's Republic of China Patent: ZL201380069090.3, US10961529, DE602013026292.6, EP2914745, UK2914745, HK1089485, JP6454281 and any corresponding patents, divisionals, continuations, patent application and foreign filings sharing priority with the same family.
448 This product is sold under license from Becton Dickinson and Company and is covered by one or more of the following US Patent Nos. 8,835,358; 9,290,808; 9,290,809; 9,315,857; 9,708,659; 9,816,137; 9,845,502; 10,047,394; 10,059,991; 10,202,646; 10,392,661; 10,619,203; and pending U.S. patent applications 16/551,638 and 16/846,133.

ThruPLEX Tag-Seq FLEX uses a simple, three-step workflow to generate high-complexity DNA libraries with unique molecular tags from standard or challenging samples such as FFPE and cell-free DNA. Unique dual index (UDI) kits are available for purchase separately. This product contains reagents for 96 reactions.

Notice to purchaser

Our products are to be used for Research Use Only. They may not be used for any other purpose, including, but not limited to, use in humans, therapeutic or diagnostic use, or commercial use of any kind. Our products may not be transferred to third parties, resold, modified for resale, or used to manufacture commercial products or to provide a service to third parties without our prior written approval.

Documents Components Image Data

Back

R400735: ThruPLEX Tag-Seq HV Core Components

R400735: ThruPLEX Tag-Seq HV Core Components

Takara Bio USA, Inc.
United States/Canada: +1.800.662.2566 • Asia Pacific: +1.650.919.7300 • Europe: +33.(0)1.3904.6880 • Japan: +81.(0)77.565.6999
FOR RESEARCH USE ONLY. NOT FOR USE IN DIAGNOSTIC PROCEDURES. © 2025 Takara Bio Inc. All Rights Reserved. All trademarks are the property of Takara Bio Inc. or its affiliate(s) in the U.S. and/or other countries or their respective owners. Certain trademarks may not be registered in all jurisdictions. Additional product, intellectual property, and restricted use information is available at takarabio.com.

Takara Bio

Takara Bio USA, Inc. provides kits, reagents, instruments, and services that help researchers explore questions about gene discovery, regulation, and function. As a member of the Takara Bio Group, Takara Bio USA is part of a company that holds a leadership position in the global market and is committed to improving the human condition through biotechnology. Our mission is to develop high-quality innovative tools and services to accelerate discovery.

FOR RESEARCH USE ONLY. NOT FOR USE IN DIAGNOSTIC PROCEDURES (EXCEPT AS SPECIFICALLY NOTED).

Support
  • Contact us
  • Technical support
  • Customer service
  • Shipping & delivery
  • Sales
  • Feedback
Products
  • New products
  • Special offers
  • Instrument & reagent services
Learning centers
  • NGS
  • Gene function
  • Stem cell research
  • Protein research
  • PCR
  • Cloning
  • Nucleic acid purification
About
  • Our brands
  • Careers
  • Events
  • Blog
  • Need help?
  • Announcements
  • Quality and compliance
  • That's Good Science!
Facebook Twitter  LinkedIn

logo strip white

©2025 Takara Bio Inc. All Rights Reserved.

Region - North America Privacy Policy Terms and Conditions Terms of Use

Top



  • COVID-19 research
  • Viral detection with qPCR
  • SARS-CoV-2 pseudovirus
  • Human ACE2 stable cell line
  • Viral RNA isolation
  • Viral and host sequencing
  • Vaccine development
  • CRISPR screening
  • Drug discovery
  • Immune profiling
  • Publications
  • Next-generation sequencing
  • Spatial omics
  • RNA-seq
  • DNA-seq
  • Single-cell NGS automation
  • Reproductive health
  • Bioinformatics tools
  • Immune profiling
  • Real-time PCR
  • Great value master mixes
  • Signature enzymes
  • High-throughput real-time PCR solutions
  • Detection assays
  • References, standards, and buffers
  • Stem cell research
  • Media, differentiation kits, and matrices
  • Stem cells and stem cell-derived cells
  • mRNA and cDNA synthesis
  • In vitro transcription
  • cDNA synthesis kits
  • Reverse transcriptases
  • RACE kits
  • Purified cDNA & genomic DNA
  • Purified total RNA and mRNA
  • PCR
  • Most popular polymerases
  • High-yield PCR
  • High-fidelity PCR
  • GC rich PCR
  • PCR master mixes
  • Cloning
  • In-Fusion seamless cloning
  • Competent cells
  • Ligation kits
  • Restriction enzymes
  • Nucleic acid purification
  • Automated platforms
  • Plasmid purification kits
  • Genomic DNA purification kits
  • DNA cleanup kits
  • RNA purification kits
  • Gene function
  • Gene editing
  • Viral transduction
  • Fluorescent proteins
  • T-cell transduction and culture
  • Tet-inducible expression systems
  • Transfection reagents
  • Cell biology assays
  • Protein research
  • Purification products
  • Two-hybrid and one-hybrid systems
  • Mass spectrometry reagents
  • Antibodies and ELISAs
  • Primary antibodies and ELISAs by research area
  • Fluorescent protein antibodies
  • New products
  • Special offers
  • OEM
  • Portfolio
  • Process
  • Facilities
  • Request samples
  • FAQs
  • Instrument services
  • Apollo services
  • ICELL8 services
  • SmartChip ND system services
  • Gene and cell therapy manufacturing services
  • Services
  • Facilities
  • Our process
  • Resources
  • Customer service
  • Sales
  • Make an appointment with your sales rep
  • Shipping & delivery
  • Technical support
  • Feedback
  • Online tools
  • GoStix Plus FAQs
  • Partnering & Licensing
  • Vector information
  • Vector document overview
  • Vector document finder
Takara Bio's award-winning GMP-compliant manufacturing facility in Kusatsu, Shiga, Japan.

Partner with Takara Bio!

Takara Bio is proud to offer GMP-grade manufacturing capabilities at our award-winning facility in Kusatsu, Shiga, Japan.

  • Automation systems
  • Shasta Single Cell System introduction
  • SmartChip Real-Time PCR System introduction
  • ICELL8 introduction
  • Next-generation sequencing
  • RNA-seq
  • Technical notes
  • Technology and application overviews
  • FAQs and tips
  • DNA-seq protocols
  • Bioinformatics resources
  • Webinars
  • Spatial biology
  • Real-time PCR
  • Download qPCR resources
  • Overview
  • Reaction size guidelines
  • Guest webinar: extraction-free SARS-CoV-2 detection
  • Technical notes
  • Nucleic acid purification
  • Nucleic acid extraction webinars
  • Product demonstration videos
  • Product finder
  • Plasmid kit selection guide
  • RNA purification kit finder
  • mRNA and cDNA synthesis
  • mRNA synthesis
  • cDNA synthesis
  • PCR
  • Citations
  • PCR selection guide
  • Technical notes
  • FAQ
  • Cloning
  • Automated In-Fusion Cloning
  • In-Fusion Cloning general information
  • Primer design and other tools
  • In‑Fusion Cloning tips and FAQs
  • Applications and technical notes
  • Stem cell research
  • Overview
  • Protocols
  • Technical notes
  • Gene function
  • Gene editing
  • Viral transduction
  • T-cell transduction and culture
  • Inducible systems
  • Cell biology assays
  • Protein research
  • Capturem technology
  • Antibody immunoprecipitation
  • His-tag purification
  • Other tag purification
  • Expression systems
  • Antibodies and ELISA
  • Molecular diagnostics
  • Interview: adapting to change with Takara Bio
  • Applications
  • Solutions
  • Partnering
  • Contact us
  • mRNA and protein therapeutics
  • Characterizing the viral genome and host response
  • Identifying and cloning protein targets
  • Expressing and purifying protein targets
  • Immunizing mice and optimizing vaccines
  • Pathogen detection
  • Sample prep
  • Detection methods
  • Identification and characterization
  • SARS-CoV-2
  • Antibiotic-resistant bacteria
  • Food crop pathogens
  • Waterborne disease outbreaks
  • Viral-induced cancer
  • Immunotherapy research
  • T-cell therapy
  • Antibody therapeutics
  • T-cell receptor profiling
  • TBI initiatives in cancer therapy
  • Cancer research
  • Kickstart your cancer research with long-read sequencing
  • Sample prep from FFPE tissue
  • Sample prep from plasma
  • Cancer biomarker quantification
  • Single cancer cell analysis
  • Cancer transcriptome analysis
  • Cancer genomics and epigenomics
  • HLA typing in cancer
  • Gene editing for cancer therapy/drug discovery
  • Alzheimer's disease research
  • Antibody engineering
  • Sample prep from FFPE tissue
  • Single-cell sequencing
  • Reproductive health technologies
  • Embgenix FAQs
  • Preimplantation genetic testing
  • ESM partnership program
  • ESM Collection Kit forms
  • Infectious diseases
  • Develop vaccines for HIV
Create a web account with us

Log in to enjoy additional benefits

Want to save this information?

An account with takarabio.com entitles you to extra features such as:

•  Creating and saving shopping carts
•  Keeping a list of your products of interest
•  Saving all of your favorite pages on the site*
•  Accessing restricted content

*Save favorites by clicking the star () in the top right corner of each page while you're logged in.

Create an account to get started

  • BioView blog
  • Automation
  • Cancer research
  • Career spotlights
  • Current events
  • Customer stories
  • Gene editing
  • Research news
  • Single-cell analysis
  • Stem cell research
  • Tips and troubleshooting
  • Women in STEM
  • That's Good Support!
  • About our blog
  • That's Good Science!
  • SMART-Seq Pro Biomarker Discovery Contest
  • DNA extraction educational activity
  • That's Good Science Podcast
  • Season one
  • Season two
  • Season three
  • Our brands
  • Our history
  • In the news
  • Events
  • Biomarker discovery events
  • Calendar
  • Conferences
  • Speak with us
  • Careers
  • Company benefits
  • Trademarks
  • License statements
  • Quality statement
  • HQ-grade reagents
  • International Contacts by Region
  • United States and Canada
  • China
  • Japan
  • Korea
  • Europe
  • India
  • Affiliates & distributors
  • Need help?
  • Privacy request
  • Website FAQs

That's GOOD Science!

What does it take to generate good science? Careful planning, dedicated researchers, and the right tools. At Takara Bio, we thoughtfully develop exceptional products to tackle your most challenging research problems, and have an expert team of technical support professionals to help you along the way, all at superior value.

Explore what makes good science possible

 Customer Login
 View Cart (0)
Takara Bio
  • Home
  • Products
  • Services & Support
  • Learning centers
  • APPLICATIONS
  • About
  • Contact Us
  •  Customer Login
  • Register
  •  View Cart (0)

Takara Bio USA, Inc. provides kits, reagents, instruments, and services that help researchers explore questions about gene discovery, regulation, and function. As a member of the Takara Bio Group, Takara Bio USA is part of a company that holds a leadership position in the global market and is committed to improving the human condition through biotechnology. Our mission is to develop high-quality innovative tools and services to accelerate discovery.

FOR RESEARCH USE ONLY. NOT FOR USE IN DIAGNOSTIC PROCEDURES (EXCEPT AS SPECIFICALLY NOTED).

Clontech, TaKaRa, cellartis

  • Products
  • COVID-19 research
  • Next-generation sequencing
  • Real-time PCR
  • Stem cell research
  • mRNA and cDNA synthesis
  • PCR
  • Cloning
  • Nucleic acid purification
  • Gene function
  • Protein research
  • Antibodies and ELISA
  • New products
  • Special offers
  • COVID-19 research
  • Viral detection with qPCR
  • SARS-CoV-2 pseudovirus
  • Human ACE2 stable cell line
  • Viral RNA isolation
  • Viral and host sequencing
  • Vaccine development
  • CRISPR screening
  • Drug discovery
  • Immune profiling
  • Publications
  • Next-generation sequencing
  • Spatial omics
  • RNA-seq
  • DNA-seq
  • Single-cell NGS automation
  • Reproductive health
  • Bioinformatics tools
  • Immune profiling
  • Real-time PCR
  • Great value master mixes
  • Signature enzymes
  • High-throughput real-time PCR solutions
  • Detection assays
  • References, standards, and buffers
  • Stem cell research
  • Media, differentiation kits, and matrices
  • Stem cells and stem cell-derived cells
  • mRNA and cDNA synthesis
  • In vitro transcription
  • cDNA synthesis kits
  • Reverse transcriptases
  • RACE kits
  • Purified cDNA & genomic DNA
  • Purified total RNA and mRNA
  • PCR
  • Most popular polymerases
  • High-yield PCR
  • High-fidelity PCR
  • GC rich PCR
  • PCR master mixes
  • Cloning
  • In-Fusion seamless cloning
  • Competent cells
  • Ligation kits
  • Restriction enzymes
  • Nucleic acid purification
  • Automated platforms
  • Plasmid purification kits
  • Genomic DNA purification kits
  • DNA cleanup kits
  • RNA purification kits
  • Gene function
  • Gene editing
  • Viral transduction
  • Fluorescent proteins
  • T-cell transduction and culture
  • Tet-inducible expression systems
  • Transfection reagents
  • Cell biology assays
  • Protein research
  • Purification products
  • Two-hybrid and one-hybrid systems
  • Mass spectrometry reagents
  • Antibodies and ELISA
  • Primary antibodies and ELISAs by research area
  • Fluorescent protein antibodies
  • Services & Support
  • OEM
  • Instrument services
  • Gene and cell therapy manufacturing
  • Customer service
  • Sales
  • Shipping & delivery
  • Technical support
  • Feedback
  • Online tools
  • Partnering & Licensing
  • Vector information
  • OEM
  • Portfolio
  • Process
  • Facilities
  • Request samples
  • FAQs
  • Instrument services
  • Apollo services
  • ICELL8 services
  • SmartChip ND system services
  • Gene and cell therapy manufacturing
  • Services
  • Facilities
  • Our process
  • Resources
  • Sales
  • Make an appointment with your sales rep
  • Online tools
  • GoStix Plus FAQs
  • Vector information
  • Vector document overview
  • Vector document finder
  • Learning centers
  • Automation systems
  • Next-generation sequencing
  • Spatial biology
  • Real-time PCR
  • Nucleic acid purification
  • mRNA and cDNA synthesis
  • PCR
  • Cloning
  • Stem cell research
  • Gene function
  • Protein research
  • Antibodies and ELISA
  • Automation systems
  • Shasta Single Cell System introduction
  • SmartChip Real-Time PCR System introduction
  • ICELL8 introduction
  • Next-generation sequencing
  • RNA-seq
  • Technical notes
  • Technology and application overviews
  • FAQs and tips
  • DNA-seq protocols
  • Bioinformatics resources
  • Webinars
  • Real-time PCR
  • Download qPCR resources
  • Overview
  • Reaction size guidelines
  • Guest webinar: extraction-free SARS-CoV-2 detection
  • Technical notes
  • Nucleic acid purification
  • Nucleic acid extraction webinars
  • Product demonstration videos
  • Product finder
  • Plasmid kit selection guide
  • RNA purification kit finder
  • mRNA and cDNA synthesis
  • mRNA synthesis
  • cDNA synthesis
  • PCR
  • Citations
  • PCR selection guide
  • Technical notes
  • FAQ
  • Cloning
  • Automated In-Fusion Cloning
  • In-Fusion Cloning general information
  • Primer design and other tools
  • In‑Fusion Cloning tips and FAQs
  • Applications and technical notes
  • Stem cell research
  • Overview
  • Protocols
  • Technical notes
  • Gene function
  • Gene editing
  • Viral transduction
  • T-cell transduction and culture
  • Inducible systems
  • Cell biology assays
  • Protein research
  • Capturem technology
  • Antibody immunoprecipitation
  • His-tag purification
  • Other tag purification
  • Expression systems
  • APPLICATIONS
  • Molecular diagnostics
  • mRNA and protein therapeutics
  • Pathogen detection
  • Immunotherapy research
  • Cancer research
  • Alzheimer's disease research
  • Reproductive health technologies
  • Infectious diseases
  • Molecular diagnostics
  • Interview: adapting to change with Takara Bio
  • Applications
  • Solutions
  • Partnering
  • Contact us
  • mRNA and protein therapeutics
  • Characterizing the viral genome and host response
  • Identifying and cloning protein targets
  • Expressing and purifying protein targets
  • Immunizing mice and optimizing vaccines
  • Pathogen detection
  • Sample prep
  • Detection methods
  • Identification and characterization
  • SARS-CoV-2
  • Antibiotic-resistant bacteria
  • Food crop pathogens
  • Waterborne disease outbreaks
  • Viral-induced cancer
  • Immunotherapy research
  • T-cell therapy
  • Antibody therapeutics
  • T-cell receptor profiling
  • TBI initiatives in cancer therapy
  • Cancer research
  • Kickstart your cancer research with long-read sequencing
  • Sample prep from FFPE tissue
  • Sample prep from plasma
  • Cancer biomarker quantification
  • Single cancer cell analysis
  • Cancer transcriptome analysis
  • Cancer genomics and epigenomics
  • HLA typing in cancer
  • Gene editing for cancer therapy/drug discovery
  • Alzheimer's disease research
  • Antibody engineering
  • Sample prep from FFPE tissue
  • Single-cell sequencing
  • Reproductive health technologies
  • Embgenix FAQs
  • Preimplantation genetic testing
  • ESM partnership program
  • ESM Collection Kit forms
  • Infectious diseases
  • Develop vaccines for HIV
  • About
  • BioView blog
  • That's Good Science!
  • Our brands
  • Our history
  • In the news
  • Events
  • Careers
  • Trademarks
  • License statements
  • Quality and compliance
  • HQ-grade reagents
  • International Contacts by Region
  • Need help?
  • Website FAQs
  • BioView blog
  • Automation
  • Cancer research
  • Career spotlights
  • Current events
  • Customer stories
  • Gene editing
  • Research news
  • Single-cell analysis
  • Stem cell research
  • Tips and troubleshooting
  • Women in STEM
  • That's Good Support!
  • About our blog
  • That's Good Science!
  • SMART-Seq Pro Biomarker Discovery Contest
  • DNA extraction educational activity
  • That's Good Science Podcast
  • Season one
  • Season two
  • Season three
  • Events
  • Biomarker discovery events
  • Calendar
  • Conferences
  • Speak with us
  • Careers
  • Company benefits
  • International Contacts by Region
  • United States and Canada
  • China
  • Japan
  • Korea
  • Europe
  • India
  • Affiliates & distributors
  • Need help?
  • Privacy request
Takara Bio
  • Products
  • Services & Support
  • Learning centers
  • APPLICATIONS
  • About
  • Contact Us