ENCSR889WQX

ATAC-seq on Mus musculus C57BL/6 frontal cortex adult

Pipeline version: v1.4.2

Report generated at 2019-07-13 18:01:19

Paired-end: []

Pipeline type: ATAC-Seq

Genome: mm10_google.tsv

Peak caller: MACS2

Alignment


Flagstat (raw BAM)

rep1rep2
Total152516265132313411
Total(QC-failed)00
Dupes00
Dupes(QC-failed)00
Mapped140666171131082774
Mapped(QC-failed)00
% Mapped92.230099.0700
Paired00
Paired(QC-failed)00
Read100
Read1(QC-failed)00
Read200
Read2(QC-failed)00
Properly Paired00
Properly Paired(QC-failed)00
% Properly Paired0.00000.0000
With itself00
With itself(QC-failed)00
Singletons00
Singletons(QC-failed)00
% Singleton0.00000.0000
Diff. Chroms00
Diff. Chroms (QC-failed)00

Marking duplicates (filtered BAM)

Filtered out (samtools view -F 1804):


rep1rep2
Unpaired Reads5552578453570813
Paired Reads00
Unmapped Reads00
Unpaired Dupes2559002015110687
Paired Dupes00
Paired Opt. Dupes00
% Dupes/1000.46090.2821

Library complexity (filtered non-mito BAM)

rep1rep2
Total Reads (Pairs)3807264847500660
Distinct Reads (Pairs)3221589240037045
One Read (Pair)3027540335874186
Two Reads (Pairs)15479713134862
NRF = Distinct/Total0.84620.8429
PBC1 = OnePair/Distinct0.93980.8960
PBC2 = OnePair/TwoPair19.558111.4436

Mitochondrial reads are filtered out.

NRF (non redundant fraction)
PBC1 (PCR Bottleneck coefficient 1)
PBC2 (PCR Bottleneck coefficient 2)
PBC1 is the primary measure. Provisionally


Flagstat (filtered/deduped BAM)

Filtered and duplicates removed

rep1rep2
Total2993576438460126
Total(QC-failed)00
Dupes00
Dupes(QC-failed)00
Mapped2993576438460126
Mapped(QC-failed)00
% Mapped100.0000100.0000
Paired00
Paired(QC-failed)00
Read100
Read1(QC-failed)00
Read200
Read2(QC-failed)00
Properly Paired00
Properly Paired(QC-failed)00
% Properly Paired0.00000.0000
With itself00
With itself(QC-failed)00
Singletons00
Singletons(QC-failed)00
% Singleton0.00000.0000
Diff. Chroms00
Diff. Chroms (QC-failed)00

Peak calling


IDR (Irreproducible Discovery Rate) plots

rep1-rep2
rep1-rep2
rep1-pr
rep1-pr
rep2-pr
rep2-pr
ppr
ppr

Reproducibility QC and peak detection statistics

The number of peaks is capped at 300K for peak-caller MACS2


overlapIDR
Nt248245122891
N1214613101268
N2231341101843
Np254595134499
N optimal254595134499
N conservative248245122891
Optimal Setpprppr
Conservative Setrep1-rep2rep1-rep2
Rescue Ratio1.02561.0945
Self Consistency Ratio1.07791.0057
Reproducibilitypasspass

Overlapping peaks


IDR (Irreproducible Discovery Rate) peaks


Enrichment


Strand cross-correlation measures

Performed on subsampled reads (25M)

rep1rep2
Reads2500000025000000
Est. Fragment Len.00
Corr. Est. Fragment Len.0.37730.3807
Phantom Peak4545
Corr. Phantom Peak0.34820.3506
Argmin. Corr.15001500
Min. Corr.0.28060.2865
NSC1.34481.3288
RSC1.42991.4711

NOTE1: For SE datasets, reads from replicates are randomly subsampled.
NOTE2: For PE datasets, the first end of each read-pair is selected and the reads are then randomly subsampled.


rep1
rep1
rep2
rep2

Fraction of reads in overlapping peaks

rep1-rep2rep1-prrep2-prppr
Fraction of Reads in Peak0.25990.24070.24700.2639


Fraction of reads in IDR peaks

rep1-rep2rep1-prrep2-prppr
Fraction of Reads in Peak0.16920.15370.14750.1796


ATAQC


Summary table

rep1rep2
Genomemm10_no_alt_analysis_set_ENCODE.fasta.gzmm10_no_alt_analysis_set_ENCODE.fasta.gz
Paired/single-endedSingle-endedSingle-ended
Read length5050
Read count from sequencer7993757467703560
Read count successfully aligned6808748066472923
Read count after filtering for mapping quality5374088857563146
Read count after removing duplicate reads2815086842452459
Read count after removing mitochondrial reads (final read count)2993576438460126
Bowtie stats7993757467703560
Mapping quality > q30 (out of total)53740888, 0.6722857013457563146, 0.850223326513
Duplicates (after filtering)25590020, 0.46086715110687, 0.282069
Mitochondrial reads (out of total)23427891, 0.1665495750228174600, 0.062362122425
Duplicates that are mitochondrial (out of all dups)17422142, 0.6808178344536041008, 0.399783808638
Final reads (after all filters)29935764, 0.37448927334238460126, 0.568066524124
NRF = Distinct/Total0.846169, OK0.842873, OK
PBC1 = OnePair/Distinct0.939766, OK0.896025, OK
PBC2 = OnePair/TwoPair19.55812, OK11.443625, OK
Naive overlap peaks254595, OK254595, OK
Idr peaks134499, OK134499, OK
Naive peak stats: min size73.000073.0000
Naive peak stats: 25 percentile276.0000276.0000
Naive peak stats: 50 percentile (median)448.0000448.0000
Naive peak stats: 75 percentile703.0000703.0000
Naive peak stats: max size2215.00002215.0000
Naive peak stats: mean529.8238529.8238
Idr peak stats: min size73.000073.0000
Idr peak stats: 25 percentile432.0000432.0000
Idr peak stats: 50 percentile (median)635.0000635.0000
Idr peak stats: 75 percentile898.0000898.0000
Idr peak stats: max size2215.00002215.0000
Idr peak stats: mean691.0279691.0279
Tss enrichment13.415110.6782
Fraction of reads in universal dhs regions16521561, 0.55247243165621943761, 0.570991435269
Fraction of reads in blacklist regions10652, 0.00035619735580612261, 0.000319039474949
Fraction of reads in promoter regions3230216, 0.108016747834713232, 0.122641469912
Fraction of reads in enhancer regions13299834, 0.44473955158317254753, 0.448980290147
Fraction of reads in called peak regions4595313, 0.1536648835625668071, 0.147487023555

Replicate 1

Sample Information

Sample
Genome mm10_no_alt_analysis_set_ENCODE.fasta.gz
Paired/Single-ended Single-ended
Read length 50

Summary

Read count from sequencer 79,937,574
Read count successfully aligned 68,087,480
Read count after filtering for mapping quality 53,740,888
Read count after removing duplicate reads 28,150,868
Read count after removing mitochondrial reads (final read count) 29,935,764
Note that all these read counts are determined using 'samtools view' - as such,
these are all reads found in the file, whether one end of a pair or a single
end read. In other words, if your file is paired end, then you should divide
these counts by two. Each step follows the previous step; for example, the
duplicate reads were removed after reads were removed for low mapping quality.
This bar chart also shows the filtering process and where the reads were lost
over the process. Note that each step is sequential - as such, there may
have been more mitochondrial reads which were already filtered because of
high duplication or low mapping quality. Note that all these read counts are
determined using 'samtools view' - as such, these are all reads found in
the file, whether one end of a pair or a single end read. In other words,
if your file is paired end, then you should divide these counts by two.

Alignment statistics

Bowtie alignment log

79937574 reads; of these:
  79937574 (100.00%) were unpaired; of these:
    11850094 (14.82%) aligned 0 times
    36902583 (46.16%) aligned exactly 1 time
    31184897 (39.01%) aligned >1 times
85.18% overall alignment rate

  

Samtools flagstat

152516265 + 0 in total (QC-passed reads + QC-failed reads)
72578691 + 0 secondary
0 + 0 supplementary
0 + 0 duplicates
140666171 + 0 mapped (92.23%:-nan%)
0 + 0 paired in sequencing
0 + 0 read1
0 + 0 read2
0 + 0 properly paired (-nan%:-nan%)
0 + 0 with itself and mate mapped
0 + 0 singletons (-nan%:-nan%)
0 + 0 with mate mapped to a different chr
0 + 0 with mate mapped to a different chr (mapQ>=5)

  
Note that the flagstat command counts alignments, not reads. please 
use the read counts table to get accurate counts of reads at each
stage of the pipeline.

Filtering statistics

Mapping quality > q30 (out of total) 53,740,888 0.672
Duplicates (after filtering) 25,590,020 0.461
Mitochondrial reads (out of total) 23,427,891 0.167
Duplicates that are mitochondrial (out of all dups) 17,422,142 0.681
Final reads (after all filters) 29,935,764 0.374
Mapping quality refers to the quality of the read being aligned to that
particular location in the genome. A standard quality score is > 30.
Duplications are often due to PCR duplication rather than two unique reads
mapping to the same location. High duplication is an indication of poor
libraries. Mitochondrial reads are often high in chromatin accessibility
assays because the mitochondrial genome is very open. A high mitochondrial
fraction is an indication of poor libraries. Based on prior experience, a
final read fraction above 0.70 is a good library.
  

Library complexity statistics

ENCODE library complexity metrics

Metric Result
NRF 0.846169 - OK
PBC1 0.939766 - OK
PBC2 19.55812 - OK
The non-redundant fraction (NRF) is the fraction of non-redundant mapped reads
in a dataset; it is the ratio between the number of positions in the genome
that uniquely mapped reads map to and the total number of uniquely mappable
reads. The NRF should be > 0.8. The PBC1 is the ratio of genomic locations
with EXACTLY one read pair over the genomic locations with AT LEAST one read
pair. PBC1 is the primary measure, and the PBC1 should be close to 1.
Provisionally 0-0.5 is severe bottlenecking, 0.5-0.8 is moderate bottlenecking,
0.8-0.9 is mild bottlenecking, and 0.9-1.0 is no bottlenecking. The PBC2 is
the ratio of genomic locations with EXACTLY one read pair over the genomic
locations with EXACTLY two read pairs. The PBC2 should be significantly
greater than 1.

Yield prediction

Preseq performs a yield prediction by subsampling the reads, calculating the
number of distinct reads, and then extrapolating out to see where the
expected number of distinct reads no longer increases. The confidence interval
gives a gauge as to the validity of the yield predictions.

Peak statistics

Metric Result
Naive overlap peaks 254595 - OK
IDR peaks 134499 - OK

Naive overlap peak file statistics

Min size 73.0
25 percentile 276.0
50 percentile (median) 448.0
75 percentile 703.0
Max size 2215.0
Mean 529.823759304

IDR peak file statistics

Min size 73.0
25 percentile 432.0
50 percentile (median) 635.0
75 percentile 898.0
Max size 2215.0
Mean 691.027896118
For a good ATAC-seq experiment in human, you expect to get 100k-200k peaks
for a specific cell type.

Sequence quality metrics

GC bias

Open chromatin assays are known to have significant GC bias. Please take this
into consideration as necessary.

Annotation-based quality metrics

Enrichment plots (TSS)

Open chromatin assays should show enrichment in open chromatin sites, such as
TSS's. An average TSS enrichment in human (hg19) is above 6. A strong TSS enrichment is
above 10. For other references please see https://www.encodeproject.org/atac-seq/
  

Annotated genomic region enrichments

Fraction of reads in universal DHS regions 16,521,561 0.552
Fraction of reads in blacklist regions 10,652 0.000
Fraction of reads in promoter regions 3,230,216 0.108
Fraction of reads in enhancer regions 13,299,834 0.445
Fraction of reads in called peak regions 4,595,313 0.154
Signal to noise can be assessed by considering whether reads are falling into
known open regions (such as DHS regions) or not. A high fraction of reads
should fall into the universal (across cell type) DHS set. A small fraction
should fall into the blacklist regions. A high set (though not all) should
fall into the promoter regions. A high set (though not all) should fall into
the enhancer regions. The promoter regions should not take up all reads, as
it is known that there is a bias for promoters in open chromatin assays.

Comparison to Roadmap DNase

This bar chart shows the correlation between the Roadmap DNase samples to
your sample, when the signal in the universal DNase peak region sets are
compared. The closer the sample is in signal distribution in the regions
to your sample, the higher the correlation.

Replicate 2

Sample Information

Sample
Genome mm10_no_alt_analysis_set_ENCODE.fasta.gz
Paired/Single-ended Single-ended
Read length 50

Summary

Read count from sequencer 67,703,560
Read count successfully aligned 66,472,923
Read count after filtering for mapping quality 57,563,146
Read count after removing duplicate reads 42,452,459
Read count after removing mitochondrial reads (final read count) 38,460,126
Note that all these read counts are determined using 'samtools view' - as such,
these are all reads found in the file, whether one end of a pair or a single
end read. In other words, if your file is paired end, then you should divide
these counts by two. Each step follows the previous step; for example, the
duplicate reads were removed after reads were removed for low mapping quality.
This bar chart also shows the filtering process and where the reads were lost
over the process. Note that each step is sequential - as such, there may
have been more mitochondrial reads which were already filtered because of
high duplication or low mapping quality. Note that all these read counts are
determined using 'samtools view' - as such, these are all reads found in
the file, whether one end of a pair or a single end read. In other words,
if your file is paired end, then you should divide these counts by two.

Alignment statistics

Bowtie alignment log

67703560 reads; of these:
  67703560 (100.00%) were unpaired; of these:
    1230637 (1.82%) aligned 0 times
    42326108 (62.52%) aligned exactly 1 time
    24146815 (35.67%) aligned >1 times
98.18% overall alignment rate

  

Samtools flagstat

132313411 + 0 in total (QC-passed reads + QC-failed reads)
64609851 + 0 secondary
0 + 0 supplementary
0 + 0 duplicates
131082774 + 0 mapped (99.07%:-nan%)
0 + 0 paired in sequencing
0 + 0 read1
0 + 0 read2
0 + 0 properly paired (-nan%:-nan%)
0 + 0 with itself and mate mapped
0 + 0 singletons (-nan%:-nan%)
0 + 0 with mate mapped to a different chr
0 + 0 with mate mapped to a different chr (mapQ>=5)

  
Note that the flagstat command counts alignments, not reads. please 
use the read counts table to get accurate counts of reads at each
stage of the pipeline.

Filtering statistics

Mapping quality > q30 (out of total) 57,563,146 0.850
Duplicates (after filtering) 15,110,687 0.282
Mitochondrial reads (out of total) 8,174,600 0.062
Duplicates that are mitochondrial (out of all dups) 6,041,008 0.400
Final reads (after all filters) 38,460,126 0.568
Mapping quality refers to the quality of the read being aligned to that
particular location in the genome. A standard quality score is > 30.
Duplications are often due to PCR duplication rather than two unique reads
mapping to the same location. High duplication is an indication of poor
libraries. Mitochondrial reads are often high in chromatin accessibility
assays because the mitochondrial genome is very open. A high mitochondrial
fraction is an indication of poor libraries. Based on prior experience, a
final read fraction above 0.70 is a good library.
  

Library complexity statistics

ENCODE library complexity metrics

Metric Result
NRF 0.842873 - OK
PBC1 0.896025 - OK
PBC2 11.443625 - OK
The non-redundant fraction (NRF) is the fraction of non-redundant mapped reads
in a dataset; it is the ratio between the number of positions in the genome
that uniquely mapped reads map to and the total number of uniquely mappable
reads. The NRF should be > 0.8. The PBC1 is the ratio of genomic locations
with EXACTLY one read pair over the genomic locations with AT LEAST one read
pair. PBC1 is the primary measure, and the PBC1 should be close to 1.
Provisionally 0-0.5 is severe bottlenecking, 0.5-0.8 is moderate bottlenecking,
0.8-0.9 is mild bottlenecking, and 0.9-1.0 is no bottlenecking. The PBC2 is
the ratio of genomic locations with EXACTLY one read pair over the genomic
locations with EXACTLY two read pairs. The PBC2 should be significantly
greater than 1.

Yield prediction

Preseq performs a yield prediction by subsampling the reads, calculating the
number of distinct reads, and then extrapolating out to see where the
expected number of distinct reads no longer increases. The confidence interval
gives a gauge as to the validity of the yield predictions.

Peak statistics

Metric Result
Naive overlap peaks 254595 - OK
IDR peaks 134499 - OK

Naive overlap peak file statistics

Min size 73.0
25 percentile 276.0
50 percentile (median) 448.0
75 percentile 703.0
Max size 2215.0
Mean 529.823759304

IDR peak file statistics

Min size 73.0
25 percentile 432.0
50 percentile (median) 635.0
75 percentile 898.0
Max size 2215.0
Mean 691.027896118
For a good ATAC-seq experiment in human, you expect to get 100k-200k peaks
for a specific cell type.

Sequence quality metrics

GC bias

Open chromatin assays are known to have significant GC bias. Please take this
into consideration as necessary.

Annotation-based quality metrics

Enrichment plots (TSS)

Open chromatin assays should show enrichment in open chromatin sites, such as
TSS's. An average TSS enrichment in human (hg19) is above 6. A strong TSS enrichment is
above 10. For other references please see https://www.encodeproject.org/atac-seq/
  

Annotated genomic region enrichments

Fraction of reads in universal DHS regions 21,943,761 0.571
Fraction of reads in blacklist regions 12,261 0.000
Fraction of reads in promoter regions 4,713,232 0.123
Fraction of reads in enhancer regions 17,254,753 0.449
Fraction of reads in called peak regions 5,668,071 0.147
Signal to noise can be assessed by considering whether reads are falling into
known open regions (such as DHS regions) or not. A high fraction of reads
should fall into the universal (across cell type) DHS set. A small fraction
should fall into the blacklist regions. A high set (though not all) should
fall into the promoter regions. A high set (though not all) should fall into
the enhancer regions. The promoter regions should not take up all reads, as
it is known that there is a bias for promoters in open chromatin assays.

Comparison to Roadmap DNase

This bar chart shows the correlation between the Roadmap DNase samples to
your sample, when the signal in the universal DNase peak region sets are
compared. The closer the sample is in signal distribution in the regions
to your sample, the higher the correlation.