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High Throughput Sequencing Methods and Concepts. Cedric Notredame. adapted from S.M Brown. DNA Sequencing. The final essential tool in the molecular biology toolkit is the ability to read the base sequence of DNA molecules
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High Throughput SequencingMethods and Concepts Cedric Notredame adapted from S.M Brown
DNA Sequencing • The final essential tool in the molecular biology toolkit is the ability to read the base sequence of DNA molecules • Fred Sanger developed an elegant method to sequence DNA by using DNA polymerase enzyme • (for which he was awarded the Nobel Prize in 1980) • The Sanger method copies a piece of cloned DNA but some of the copies are halted at each base pair along the sequence.
Sanger Method • DNA polymerase adds free nucleotides to a primer which is complementary DNA template. • Sanger used some modified dideoxynucleotides to stop the replication process if they are incorporated in the growing DNA chain (terminators). • This produces a set of partial DNA copies of the original template sequence, each one stopping at a different base. • Sanger used 4 different reactions that each contained only terminators for one of the bases. • When the partial copies are sorted by size using electrophoresis, all fragment of a distinct size are terminated with the same base.
Automated Sequencing • Sequencing technology was improved in the late 1980s by Leroy Hood who developed fluorescent color labels for the 4 terminator nucleotide bases. • This allowed all 4 bases to be sequenced in a single reaction and sorted in a single gel lane. • Hood also pioneered direct data collection by computer. • Minor improvements in this technology now enable the sequencing of billion base genomes in a year or less.
Automated sequencing machines, particularly those made by PE Applied Biosystems, use 4 colors, so they can read all 4 bases at once.
DNA Sequencing capability has grown exponentially DNA sequences in GenBank Doubling time = 18 months
Next Generation Sequencing • 454 Life Sciences/Roche • Genome Sequencer FLX: currently produces 400-600 million bases per day per machine • Published 1 million bases of Neanderthal DNA in 2006 • May 2007 published complete genome of James Watson (3.2 billion bases ~20x coverage) • Solexa/Illumina • 10 GB per machine/week • May 2008 published complete genomes for 3 hapmap subjects (14x coverage) • ABI SOLID • 20 GB per machine/week
“Paradigm Shift” • Standard ABI “Sanger” sequencing • 96 samples/day • Read length ~650 bp • Total = 450,000 bases of sequence data • 454 was the game changer! • ~400,000 different templates (reads)/day • Read length ~250 bp • Total = 100,000,000 bases of sequence data!!!
Solexa ups the Game • Solexa (Illumina GA) • 60,000,000 different sequence templates (yes that is an insane 60 million reads) • 36 bp read length • 4 billion bases of DNA per run (3 days)
Nanotechnology • Each system works differently, but they are all based on a similar principals: • Shear target DNA into small pieces • bind individual DNA molecules to a solid surface, • amplify each molecule into a cluster • copy one base at a time and detect different signals for A, C, T, & G bases • requires very precise high-resolution imaging of tiny features • (Solexa has 800 images @ 4 megapixels each)
Huge Amount of Image Data • The raw image data is truly huge: 1-2 TB for the Solexa, more for ABI-SOLID, less for 454 • The images are immediately processed into intensity data (spots w/ location and brightness) • Intensity data is then processed into basecalls (A, C, T, or G plus a quality score for each) • Basecall data is on the order of 5-10 GB per run (or a week of runs for 454).
454 • First high-throughput DNA sequencer, commercially available in 2004 • Now (10/08) produces ~500 MB reads of 500 bp • Run of 8 samples in 10 hours, so can do multiple runs/week • Uses pyrosquencing, beads, and a microtiter plate • Low error rate, but insert/delete problems with homopolymers (stretches of a single base)
Illumina Genome Analyzer • Originally developed by Solexa, now subsidiary of Illumina. • Commercially available in 2006 • Now produces 8-12 million reads per sample of 36 bp length = 10 GB/week. • Run takes 3 days for 7 samples. • Low error rate, mostly base changes, few indels
Illumina sequencing technology in 12 steps Source: http://www.illumina.com/downloads/SS_DNAsequencing.pdf
1. Prepare genomic DNA 2. Attach DNA to surface 3. Bridge amplification 4. Fragments become double stranded 5. Denature the double- stranded molecules 6. Complete amplification DNA adapters Randomly fragment genomic DNA and ligate adapters to both ends of the fragments
adapter DNA fragment 1. Prepare genomic DNA 2. Attach DNA to surface 3. Bridge amplification 4. Fragments become double stranded 5. Denature the double- stranded molecules 6. Complete amplification dense lawn of primers adapter Bind single-stranded fragments randomly to the inside surface of the flow cell channels
1. Prepare genomic DNA 2. Attach DNA to surface 3. Bridge amplification 4. Fragments become double stranded 5. Denature the double- stranded molecules 6. Complete amplification Add unlabeled nucleotides and enzyme to initiate solid-phase bridge amplification
1. Prepare genomic DNA 2. Attach DNA to surface 3. Bridge amplification 4. Fragments become double stranded 5. Denature the double- stranded molecules 6. Complete amplification Attached terminus free Attached terminus terminus The enzyme incorporates nucleotides to build double-stranded bridges on the solid-phase substrate
1. Prepare genomic DNA 2. Attach DNA to surface 3. Bridge amplification 4. Fragments become double stranded 5. Denature the double- stranded molecules 6. Complete amplification Attached Attached Denaturation leaves single-stranded templates anchored to the substrate
1. Prepare genomic DNA 2. Attach DNA to surface 3. Bridge amplification 4. Fragments become double stranded 5. Denature the double- stranded molecules 6. Complete amplification Clusters Several million dense clusters of double-stranded DNA are generated in each channel of the flow cell
7. Determine first base 8. Image first base 9. Determine second base 10. Image second chemistry cycle 11. Sequencing over multiple chemistry cycles 12. Align data Laser The first sequencing cycle begins by adding four labeled reversible terminators, primers, and DNA polymerase
7. Determine first base 8. Image first base 9. Determine second base 10. Image second chemistry cycle 11. Sequencing over multiple chemistry cycles 12. Align data After laser excitation, the emitted fluorescence from each cluster is captured and the first base is identified
7. Determine first base 8. Image first base 9. Determine second base 10. Image second chemistry cycle 11. Sequencing over multiple chemistry cycles 12. Align data Laser The next cycle repeats the incorporation of four labeled reversible terminators, primers, and DNA polymerase
7. Determine first base 8. Image first base 9. Determine second base 10. Image second chemistry cycle 11. Sequencing over multiple chemistry cycles 12. Align data After laser excitation the image is captured as before, and the identity of the second base is recorded.
7. Determine first base 8. Image first base 9. Determine second base 10. Image second chemistry cycle 11. Sequencing over multiple chemistry cycles 12. Align data The sequencing cycles are repeated to determine the sequence of bases in a fragment, one base at a time.
Reference sequence 7. Determine first base 8. Image first base 9. Determine second base 10. Image second chemistry cycle 11. Sequencing over multiple chemistry cycles 12. Align data Unknown variant identified and called Known SNP called The data are aligned and compared to a reference, and sequencing differences are identified.
Illumina Genome Analyzer Richard K. Wilson
Paired-End Sequencing Nature Methods 5, May 2008
OH OH OH Resynthesis of P5 Strand (15Cycles) Denaturation and De-Protection Sequencing First Read OH Denaturation and Hybridization Sequencing Second Read Block with ddNTPs P7 Linearization Sequencing Denaturation and Hybridization
ABI-SOLID • First commercially available in late 2007 • Currently capable of producing 20 GB of data per run (week) • Most users generate 6 GB/run • Reads ~30 bp long • Uses unique sequence-by-ligation method • “color-space” data • Very low error rate
Short Reads • Short reads from Nex-Gen machines are a challenge (Solexa = 36 bp) • Very hard to assemble whole genomes • Difficult to get any information on repeat regions • Requires many-fold coverage • New algorithms needed for many traditional bioinformatics operations • Reads are getting longer – another moving target