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        MultiQC: Summarize analysis results for multiple tools and samples in a single report
        Philip Ewels, Måns Magnusson, Sverker Lundin and Max Käller
        Bioinformatics (2016)
        doi: 10.1093/bioinformatics/btw354
        PMID: 27312411

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        MultiQC: Summarize analysis results for multiple tools and samples in a single report
        Philip Ewels, Måns Magnusson, Sverker Lundin and Max Käller
        Bioinformatics (2016)
        doi: 10.1093/bioinformatics/btw354
        PMID: 27312411

        A modular tool to aggregate results from bioinformatics analyses across many samples into a single report.

        Report generated on 2023-07-28, 18:26 based on data in: /scratch/gencore/logs/html/HLTLYDMXY/merged


        General Statistics

        Showing 500 samples.

        loading..

        Demultiplexing Report


        Total Read Count: Total number of PF (Passing Filter) reads in this library.
        Portion: The proportion of reads that represent the individual library in the entire Library Pool.

        Showing 250/250 rows and 2/2 columns.
        LibraryTotal Read CountPortion (%)
        undetermined_library
        543172477
        13.8
        CIVR__Ferret_mRNA_P1_A1_n
        10296895
        0.3
        CIVR__Ferret_mRNA_P1_B1_n
        4600991
        0.1
        CIVR__Ferret_mRNA_P1_C1_n
        7727164
        0.2
        CIVR__Ferret_mRNA_P1_D1_n
        9036474
        0.2
        CIVR__Ferret_mRNA_P1_E1_n
        7435788
        0.2
        CIVR__Ferret_mRNA_P1_F1_n
        9878183
        0.3
        CIVR__Ferret_mRNA_P1_G1_n
        9501081
        0.2
        CIVR__Ferret_mRNA_P1_H1_n
        12235768
        0.3
        CIVR__Ferret_mRNA_P1_A2_n
        12852618
        0.3
        CIVR__Ferret_mRNA_P1_B2_n
        11894612
        0.3
        CIVR__Ferret_mRNA_P1_C2_n
        12202613
        0.3
        CIVR__Ferret_mRNA_P1_D2_n
        13825504
        0.3
        CIVR__Ferret_mRNA_P1_E2_n
        13637257
        0.3
        CIVR__Ferret_mRNA_P1_F2_n
        11326443
        0.3
        CIVR__Ferret_mRNA_P1_G2_n
        11616227
        0.3
        CIVR__Ferret_mRNA_P1_H2_n
        2933963
        0.1
        CIVR__Ferret_mRNA_P1_A3_n
        13117903
        0.3
        CIVR__Ferret_mRNA_P1_B3_n
        12556376
        0.3
        CIVR__Ferret_mRNA_P1_C3_n
        13287226
        0.3
        CIVR__Ferret_mRNA_P1_D3_n
        10730603
        0.3
        CIVR__Ferret_mRNA_P1_E3_n
        10291149
        0.3
        CIVR__Ferret_mRNA_P1_F3_n
        12377248
        0.3
        CIVR__Ferret_mRNA_P1_G3_n
        13550864
        0.3
        CIVR__Ferret_mRNA_P1_H3_n
        13621036
        0.3
        CIVR__Ferret_mRNA_P1_A4_n
        14025187
        0.4
        CIVR__Ferret_mRNA_P1_B4_n
        11174232
        0.3
        CIVR__Ferret_mRNA_P1_C4_n
        10839589
        0.3
        CIVR__Ferret_mRNA_P1_D4_n
        251084
        0.0
        CIVR__Ferret_mRNA_P1_E4_n
        14240426
        0.4
        CIVR__Ferret_mRNA_P1_F4_n
        9250843
        0.2
        CIVR__Ferret_mRNA_P1_G4_n
        12187941
        0.3
        CIVR__Ferret_mRNA_P1_H4_n
        10615589
        0.3
        CIVR__Ferret_mRNA_P1_A5_n
        13090617
        0.3
        CIVR__Ferret_mRNA_P1_B5_n
        11939556
        0.3
        CIVR__Ferret_mRNA_P1_C5_n
        13183419
        0.3
        CIVR__Ferret_mRNA_P1_D5_n
        9689
        0.0
        CIVR__Ferret_mRNA_P1_E5_n
        11510036
        0.3
        CIVR__Ferret_mRNA_P1_F5_n
        10670097
        0.3
        CIVR__Ferret_mRNA_P1_G5_n
        10688590
        0.3
        CIVR__Ferret_mRNA_P1_H5_n
        6025887
        0.2
        CIVR__Ferret_mRNA_P1_A6_n
        12473436
        0.3
        CIVR__Ferret_mRNA_P1_B6_n
        14579074
        0.4
        CIVR__Ferret_mRNA_P1_C6_n
        12188675
        0.3
        CIVR__Ferret_mRNA_P1_D6_n
        12886597
        0.3
        CIVR__Ferret_mRNA_P1_E6_n
        7257985
        0.2
        CIVR__Ferret_mRNA_P1_F6_n
        13060018
        0.3
        CIVR__Ferret_mRNA_P1_G6_n
        12500184
        0.3
        CIVR__Ferret_mRNA_P1_H6_n
        11171427
        0.3
        CIVR__Ferret_mRNA_P1_A7_n
        14971985
        0.4
        CIVR__Ferret_mRNA_P1_B7_n
        12910301
        0.3
        CIVR__Ferret_mRNA_P1_C7_n
        162610
        0.0
        CIVR__Ferret_mRNA_P1_D7_n
        13243911
        0.3
        CIVR__Ferret_mRNA_P1_E7_n
        11706027
        0.3
        CIVR__Ferret_mRNA_P1_F7_n
        18297813
        0.5
        CIVR__Ferret_mRNA_P1_G7_n
        8856199
        0.2
        CIVR__Ferret_mRNA_P1_H7_n
        186007
        0.0
        CIVR__Ferret_mRNA_P1_A8_n
        4473001
        0.1
        CIVR__Ferret_mRNA_P2_A1_n
        18872687
        0.5
        CIVR__Ferret_mRNA_P2_B1_n
        14101945
        0.4
        CIVR__Ferret_mRNA_P2_C1_n
        14030492
        0.4
        CIVR__Ferret_mRNA_P2_D1_n
        11640143
        0.3
        CIVR__Ferret_mRNA_P2_E1_n
        14274878
        0.4
        CIVR__Ferret_mRNA_P2_F1_n
        12679574
        0.3
        CIVR__Ferret_mRNA_P2_G1_n
        11056645
        0.3
        CIVR__Ferret_mRNA_P2_H1_n
        9857361
        0.2
        CIVR__Ferret_mRNA_P2_A2_n
        12870947
        0.3
        CIVR__Ferret_mRNA_P2_B2_n
        11273096
        0.3
        CIVR__Ferret_mRNA_P2_C2_n
        12138787
        0.3
        CIVR__Ferret_mRNA_P2_D2_n
        8557965
        0.2
        CIVR__Ferret_mRNA_P2_E2_n
        397428
        0.0
        CIVR__Ferret_mRNA_P2_F2_n
        11317811
        0.3
        CIVR__Ferret_mRNA_P2_G2_n
        12443595
        0.3
        CIVR__Ferret_mRNA_P2_H2_n
        14225700
        0.4
        CIVR__Ferret_mRNA_P2_A3_n
        11279238
        0.3
        CIVR__Ferret_mRNA_P2_B3_n
        20651236
        0.5
        CIVR__Ferret_mRNA_P2_C3_n
        17406693
        0.4
        CIVR__Ferret_mRNA_P2_D3_n
        16842983
        0.4
        CIVR__Ferret_mRNA_P2_E3_n
        15837056
        0.4
        CIVR__Ferret_mRNA_P2_F3_n
        14039127
        0.4
        CIVR__Ferret_mRNA_P2_G3_n
        13583581
        0.3
        CIVR__Ferret_mRNA_P2_H3_n
        11726610
        0.3
        CIVR__Ferret_mRNA_P2_A4_n
        14021798
        0.4
        CIVR__Ferret_mRNA_P2_B4_n
        12697765
        0.3
        CIVR__Ferret_mRNA_P2_C4_n
        15441772
        0.4
        CIVR__Ferret_mRNA_P2_D4_n
        13189909
        0.3
        CIVR__Ferret_mRNA_P2_E4_n
        12059147
        0.3
        CIVR__Ferret_mRNA_P2_F4_n
        14108836
        0.4
        CIVR__Ferret_mRNA_P2_G4_n
        11971183
        0.3
        CIVR__Ferret_mRNA_P2_H4_n
        16162818
        0.4
        CIVR__Ferret_mRNA_P2_A5_n
        18530258
        0.5
        CIVR__Ferret_mRNA_P2_B5_n
        18690774
        0.5
        CIVR__Ferret_mRNA_P2_C5_n
        17642974
        0.4
        CIVR__Ferret_mRNA_P2_D5_n
        18589507
        0.5
        CIVR__Ferret_mRNA_P2_E5_n
        15310438
        0.4
        CIVR__Ferret_mRNA_P2_F5_n
        17077182
        0.4
        CIVR__Ferret_mRNA_P2_G5_n
        18587607
        0.5
        CIVR__Ferret_mRNA_P2_H5_n
        13915428
        0.4
        CIVR__Ferret_mRNA_P2_A6_n
        25240182
        0.6
        CIVR__Ferret_mRNA_P2_B6_n
        17241824
        0.4
        CIVR__Ferret_mRNA_P2_C6_n
        17255013
        0.4
        CIVR__Ferret_mRNA_P2_D6_n
        196823
        0.0
        CIVR__Ferret_mRNA_P2_E6_n
        15850329
        0.4
        CIVR__Ferret_mRNA_P2_F6_n
        18524024
        0.5
        CIVR__Ferret_mRNA_P2_G6_n
        13987429
        0.4
        CIVR__Ferret_mRNA_P2_H6_n
        16769744
        0.4
        CIVR__Ferret_mRNA_P2_A7_n
        25840100
        0.7
        CIVR__Ferret_mRNA_P2_B7_n
        16866162
        0.4
        CIVR__Ferret_mRNA_P2_C7_n
        19575567
        0.5
        CIVR__Ferret_mRNA_P2_D7_n
        25400380
        0.6
        CIVR__Ferret_mRNA_P2_E7_n
        14948313
        0.4
        CIVR__Ferret_mRNA_P2_F7_n
        18353677
        0.5
        CIVR__Ferret_mRNA_P2_G7_n
        16427476
        0.4
        CIVR__Ferret_mRNA_P2_H7_n
        19318936
        0.5
        CIVR__Ferret_mRNA_P2_A8_n
        27365482
        0.7
        CIVR__Ferret_mRNA_P2_B8_n
        19215533
        0.5
        CIVR__Ferret_mRNA_P2_C8_n
        9860101
        0.2
        CIVR__Ferret_mRNA_P2_D8_n
        1160682
        0.0
        CIVR__Ferret_mRNA_P2_E8_n
        15624113
        0.4
        CIVR__Ferret_mRNA_P2_F8_n
        14909896
        0.4
        CIVR__Ferret_mRNA_P2_G8_n
        17929566
        0.5
        CIVR__Ferret_mRNA_P2_H8_n
        15882656
        0.4
        CIVR__Ferret_mRNA_P2_A9_n
        27828350
        0.7
        CIVR__Ferret_mRNA_P2_B9_n
        19465455
        0.5
        CIVR__Ferret_mRNA_P2_C9_n
        17725973
        0.5
        CIVR__Ferret_mRNA_P2_D9_n
        21987445
        0.6
        CIVR__Ferret_mRNA_P2_E9_n
        16912400
        0.4
        CIVR__Ferret_mRNA_P2_F9_n
        18502429
        0.5
        CIVR__Ferret_mRNA_P2_G9_n
        18637292
        0.5
        CIVR__Ferret_mRNA_P2_H9_n
        22221324
        0.6
        CIVR__Ferret_mRNA_P2_A10_n
        20639498
        0.5
        CIVR__Ferret_mRNA_P2_B10_n
        22681180
        0.6
        CIVR__Ferret_mRNA_P2_C10_n
        21726210
        0.6
        CIVR__Ferret_mRNA_P2_D10_n
        22164777
        0.6
        CIVR__Ferret_mRNA_P2_E10_n
        18002748
        0.5
        CIVR__Ferret_mRNA_P2_F10_n
        17722428
        0.5
        CIVR__Ferret_mRNA_P2_G10_n
        18102780
        0.5
        CIVR__Ferret_mRNA_P2_H10_n
        17265726
        0.4
        CIVR__Ferret_mRNA_P2_A11_n
        27591359
        0.7
        CIVR__Ferret_mRNA_P2_B11_n
        20751851
        0.5
        CIVR__Ferret_mRNA_P2_C11_n
        24096325
        0.6
        CIVR__Ferret_mRNA_P2_D11_n
        17602869
        0.4
        CIVR__Ferret_mRNA_P2_E11_n
        20946242
        0.5
        CIVR__Ferret_mRNA_P2_F11_n
        15775589
        0.4
        CIVR__Ferret_mRNA_P2_G11_n
        13685718
        0.3
        CIVR__Ferret_mRNA_P2_H11_n
        1883564
        0.0
        CIVR__Ferret_mRNA_P2_A12_n
        22516768
        0.6
        CIVR__Ferret_mRNA_P2_B12_n
        18459727
        0.5
        CIVR__Ferret_mRNA_P2_C12_n
        25349849
        0.6
        CIVR__Ferret_mRNA_P2_D12_n
        4205674
        0.1
        CIVR__Ferret_mRNA_P2_E12_n
        21548571
        0.5
        CIVR__Ferret_mRNA_P2_F12_n
        19981785
        0.5
        CIVR__Ferret_mRNA_P2_G12_n
        32511163
        0.8
        CIVR__Ferret_mRNA_P2_H12_n
        44435
        0.0
        CIVR__Ferret_mRNA_P3_A1_n
        12316417
        0.3
        CIVR__Ferret_mRNA_P3_B1_n
        12205377
        0.3
        CIVR__Ferret_mRNA_P3_C1_n
        10211012
        0.3
        CIVR__Ferret_mRNA_P3_D1_n
        12024832
        0.3
        CIVR__Ferret_mRNA_P3_E1_n
        13442472
        0.3
        CIVR__Ferret_mRNA_P3_F1_n
        12018028
        0.3
        CIVR__Ferret_mRNA_P3_G1_n
        12324954
        0.3
        CIVR__Ferret_mRNA_P3_H1_n
        2177813
        0.1
        CIVR__Ferret_mRNA_P3_A2_n
        21351091
        0.5
        CIVR__Ferret_mRNA_P3_B2_n
        15071431
        0.4
        CIVR__Ferret_mRNA_P3_C2_n
        16944953
        0.4
        CIVR__Ferret_mRNA_P3_D2_n
        14685800
        0.4
        CIVR__Ferret_mRNA_P3_E2_n
        16825103
        0.4
        CIVR__Ferret_mRNA_P3_F2_n
        12613895
        0.3
        CIVR__Ferret_mRNA_P3_G2_new
        21531999
        0.5
        CIVR__Ferret_mRNA_P3_H2_new
        12377511
        0.3
        CIVR__Ferret_mRNA_P3_A3_n
        15092852
        0.4
        CIVR__Ferret_mRNA_P3_B3_new
        15364267
        0.4
        CIVR__Ferret_mRNA_P3_C3_n
        33171115
        0.8
        CIVR__Ferret_mRNA_P3_D3_n
        13494273
        0.3
        CIVR__Ferret_mRNA_P3_E3_n
        13988457
        0.4
        CIVR__Ferret_mRNA_P3_F3_n
        11961054
        0.3
        CIVR__Ferret_mRNA_P3_G3_n
        11696295
        0.3
        CIVR__Ferret_mRNA_P3_H3_n
        13214273
        0.3
        CIVR__Ferret_mRNA_P3_A4_new
        15778032
        0.4
        CIVR__Ferret_mRNA_P3_B4_new
        16078921
        0.4
        CIVR__Ferret_mRNA_P3_C4_n
        15794277
        0.4
        CIVR__Ferret_mRNA_P3_D4_n
        11195430
        0.3
        CIVR__Ferret_mRNA_P3_E4_n
        13504295
        0.3
        CIVR__Ferret_mRNA_P3_F4_new
        15868990
        0.4
        CIVR__Ferret_mRNA_P3_G4_n
        12362350
        0.3
        CIVR__Ferret_mRNA_P3_H4_new
        11136280
        0.3
        CIVR__Ferret_mRNA_P3_A5_n
        16484280
        0.4
        CIVR__Ferret_mRNA_P3_B5_n
        13222921
        0.3
        CIVR__Ferret_mRNA_P3_C5_new
        13925162
        0.4
        CIVR__Ferret_mRNA_P3_D5_n
        13845191
        0.4
        CIVR__Ferret_mRNA_P3_E5_new
        14223326
        0.4
        CIVR__Ferret_mRNA_P3_F5_n
        16455228
        0.4
        CIVR__Ferret_mRNA_P3_G5_n
        13883076
        0.4
        CIVR__Ferret_mRNA_P3_H5_n
        103096
        0.0
        CIVR__Ferret_mRNA_P3_A6_n
        6230606
        0.2
        CIVR__Ferret_mRNA_P3_B6_n
        14482032
        0.4
        CIVR__Ferret_mRNA_P3_C6_n
        16734357
        0.4
        CIVR__Ferret_mRNA_P3_D6_n
        66380
        0.0
        CIVR__Ferret_mRNA_P3_E6_n
        19707130
        0.5
        CIVR__Ferret_mRNA_P3_F6_n
        16364904
        0.4
        CIVR__Ferret_mRNA_P3_G6_n
        13496034
        0.3
        CIVR__Ferret_mRNA_P3_H6_n
        1917947
        0.0
        CIVR__Ferret_mRNA_P3_A7_n
        17399996
        0.4
        CIVR__Ferret_mRNA_P3_B7_n
        12662854
        0.3
        CIVR__Ferret_mRNA_P3_C7_n
        14911413
        0.4
        CIVR__Ferret_mRNA_P3_D7_n
        12440270
        0.3
        CIVR__Ferret_mRNA_P3_E7_n
        17100932
        0.4
        CIVR__Ferret_mRNA_P3_F7_n
        14522435
        0.4
        CIVR__Ferret_mRNA_P3_G7_n
        10772462
        0.3
        CIVR__Ferret_mRNA_P3_H7_n
        11672080
        0.3
        CIVR__Ferret_mRNA_P3_A8_new
        7215216
        0.2
        CIVR__Ferret_mRNA_P3_B8_new
        13060437
        0.3
        CIVR__Ferret_mRNA_P3_C8_n
        10624005
        0.3
        CIVR__Ferret_mRNA_P3_D8_n
        10395683
        0.3
        CIVR__Ferret_mRNA_P3_E8_n
        12192689
        0.3
        CIVR__Ferret_mRNA_P3_F8_n
        9761604
        0.2
        CIVR__Ferret_mRNA_P3_G8_n
        6758127
        0.2
        CIVR__Ferret_mRNA_P3_H8_n
        11699008
        0.3
        CIVR__Ferret_mRNA_P3_A9_n
        17344648
        0.4
        CIVR__Ferret_mRNA_P3_B9_n
        14432378
        0.4
        CIVR__Ferret_mRNA_P3_C9_n
        11651495
        0.3
        CIVR__Ferret_mRNA_P3_D9_n
        17313194
        0.4
        CIVR__Ferret_mRNA_P3_E9_n
        12596822
        0.3
        CIVR__Ferret_mRNA_P3_F9_new
        14154786
        0.4
        CIVR__Ferret_mRNA_P3_G9_n
        17209543
        0.4
        CIVR__Ferret_mRNA_P3_H9_new
        15276569
        0.4
        CIVR__Ferret_mRNA_P3_A10_n
        13855078
        0.4
        CIVR__Ferret_mRNA_P3_B10_n
        10483658
        0.3
        CIVR__Ferret_mRNA_P3_C10_n
        9716763
        0.2
        CIVR__Ferret_mRNA_P3_D10_n
        11589983
        0.3
        CIVR__Ferret_mRNA_P3_E10_n
        13080610
        0.3
        CIVR__Ferret_mRNA_P3_F10_n
        14515579
        0.4
        CIVR__Ferret_mRNA_P3_G10_n
        11912761
        0.3
        CIVR__Ferret_mRNA_P3_H10_n
        13258882
        0.3
        CIVR__Ferret_mRNA_P3_A11_n
        15314585
        0.4
        CIVR__Ferret_mRNA_P3_B11_n
        14280291
        0.4
        CIVR__Ferret_mRNA_P3_C11_n
        8196073
        0.2
        CIVR__Ferret_mRNA_P3_D11_n
        12930819
        0.3
        CIVR__Ferret_mRNA_P3_E11_n
        14318693
        0.4
        CIVR__Ferret_mRNA_P3_F11_n
        178214
        0.0
        CIVR__Ferret_mRNA_P3_G11_n
        10760364
        0.3
        CIVR__Ferret_mRNA_P3_H11_n
        13424801
        0.3
        CIVR__Ferret_mRNA_P3_A12_new
        13819270
        0.3
        CIVR__Ferret_mRNA_P3_B12_n
        17311680
        0.4
        CIVR__Ferret_mRNA_P3_C12_n
        11654711
        0.3
        CIVR__Ferret_mRNA_P3_D12_n
        256086
        0.0
        CIVR__Ferret_mRNA_P3_E12_n
        10640614
        0.3
        CIVR__Ferret_mRNA_P3_F12_n
        10616284
        0.3
        CIVR__Ferret_mRNA_P3_G12_n
        12352182
        0.3
        CIVR__Ferret_mRNA_P3_H12_n
        62076
        0.0

        Barcodes of Undetermined Reads


        We have determined the barcodes of your undetermined reads (reads containing a barcode that you did not encode in your metadata). Here are the top 20 barcodes belonging to the undetermined reads. The full list is available here. If your libraries are dual indexed, the two indicies are concatenated.

        Showing 20/20 rows and 2/2 columns.
        Barcode Sequence(s)CountFrequency (%)
        GGGGGGGGAGATCTCG
        52766524.0
        9.7
        GGTGGGAGGTGGTGTT
        5579477.0
        1.0
        AACCCGAGAACCGAAG
        4959700.0
        0.9
        GGGAGATTTATGATTG
        4370747.0
        0.8
        GGGGGGGGCGATCTCG
        2699484.0
        0.5
        GTGGGGAGGATCATGC
        2568877.0
        0.5
        CTTGACGAGTGTGTGC
        1881062.0
        0.3
        ACCCTGACCTTAGCGC
        1661796.0
        0.3
        TAGCTGGCCGCCGGTA
        1649585.0
        0.3
        GTACCACAGGTTGTGG
        1486090.0
        0.3
        TACGGCAGGTCATATC
        1426818.0
        0.3
        TCAGCGCCCGGAACAT
        1414023.0
        0.3
        CCCTCTTCTATGCAAG
        1413271.0
        0.3
        TCGCGCAAGGCCTTGT
        1400402.0
        0.3
        GTCGAGTGACGGTCTT
        1338402.0
        0.2
        ACGCGGAGAGTTTAGG
        1325779.0
        0.2
        GGCTTACTCGGGAAAG
        1244387.0
        0.2
        AAGGAGACGGTGTGAG
        1141330.0
        0.2
        CCCGTTTGGTGCTGTA
        1129013.0
        0.2
        GCCTGATCCTCCACAC
        1062153.0
        0.2

        Run Statistics

        Showing 1/1 rows and 4/4 columns.
        Number of LanesTotal # of Single-End ReadsTotal # PF Reads% Undetermined% PhiX Aligned
        2.0
        5761400832
        3942383203
        13.8
        1.4

        FastQC

        FastQC is a quality control tool for high throughput sequence data, written by Simon Andrews at the Babraham Institute in Cambridge.

        Sequence Counts

        Sequence counts for each sample. Duplicate read counts are an estimate only.

        This plot show the total number of reads, broken down into unique and duplicate if possible (only more recent versions of FastQC give duplicate info).

        You can read more about duplicate calculation in the FastQC documentation. A small part has been copied here for convenience:

        Only sequences which first appear in the first 100,000 sequences in each file are analysed. This should be enough to get a good impression for the duplication levels in the whole file. Each sequence is tracked to the end of the file to give a representative count of the overall duplication level.

        The duplication detection requires an exact sequence match over the whole length of the sequence. Any reads over 75bp in length are truncated to 50bp for this analysis.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Sequence Quality Histograms

        The mean quality value across each base position in the read.

        To enable multiple samples to be plotted on the same graph, only the mean quality scores are plotted (unlike the box plots seen in FastQC reports).

        Taken from the FastQC help:

        The y-axis on the graph shows the quality scores. The higher the score, the better the base call. The background of the graph divides the y axis into very good quality calls (green), calls of reasonable quality (orange), and calls of poor quality (red). The quality of calls on most platforms will degrade as the run progresses, so it is common to see base calls falling into the orange area towards the end of a read.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Per Sequence Quality Scores

        The number of reads with average quality scores. Shows if a subset of reads has poor quality.

        From the FastQC help:

        The per sequence quality score report allows you to see if a subset of your sequences have universally low quality values. It is often the case that a subset of sequences will have universally poor quality, however these should represent only a small percentage of the total sequences.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Per Base Sequence Content

        The proportion of each base position for which each of the four normal DNA bases has been called.

        To enable multiple samples to be shown in a single plot, the base composition data is shown as a heatmap. The colours represent the balance between the four bases: an even distribution should give an even muddy brown colour. Hover over the plot to see the percentage of the four bases under the cursor.

        To see the data as a line plot, as in the original FastQC graph, click on a sample track.

        From the FastQC help:

        Per Base Sequence Content plots out the proportion of each base position in a file for which each of the four normal DNA bases has been called.

        In a random library you would expect that there would be little to no difference between the different bases of a sequence run, so the lines in this plot should run parallel with each other. The relative amount of each base should reflect the overall amount of these bases in your genome, but in any case they should not be hugely imbalanced from each other.

        It's worth noting that some types of library will always produce biased sequence composition, normally at the start of the read. Libraries produced by priming using random hexamers (including nearly all RNA-Seq libraries) and those which were fragmented using transposases inherit an intrinsic bias in the positions at which reads start. This bias does not concern an absolute sequence, but instead provides enrichement of a number of different K-mers at the 5' end of the reads. Whilst this is a true technical bias, it isn't something which can be corrected by trimming and in most cases doesn't seem to adversely affect the downstream analysis.

        Click a sample row to see a line plot for that dataset.
        Rollover for sample name
        Position: -
        %T: -
        %C: -
        %A: -
        %G: -

        Per Sequence GC Content

        The average GC content of reads. Normal random library typically have a roughly normal distribution of GC content.

        From the FastQC help:

        This module measures the GC content across the whole length of each sequence in a file and compares it to a modelled normal distribution of GC content.

        In a normal random library you would expect to see a roughly normal distribution of GC content where the central peak corresponds to the overall GC content of the underlying genome. Since we don't know the the GC content of the genome the modal GC content is calculated from the observed data and used to build a reference distribution.

        An unusually shaped distribution could indicate a contaminated library or some other kinds of biased subset. A normal distribution which is shifted indicates some systematic bias which is independent of base position. If there is a systematic bias which creates a shifted normal distribution then this won't be flagged as an error by the module since it doesn't know what your genome's GC content should be.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Per Base N Content

        The percentage of base calls at each position for which an N was called.

        From the FastQC help:

        If a sequencer is unable to make a base call with sufficient confidence then it will normally substitute an N rather than a conventional base call. This graph shows the percentage of base calls at each position for which an N was called.

        It's not unusual to see a very low proportion of Ns appearing in a sequence, especially nearer the end of a sequence. However, if this proportion rises above a few percent it suggests that the analysis pipeline was unable to interpret the data well enough to make valid base calls.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Sequence Length Distribution

        All samples have sequences of a single length (151bp).

        Sequence Duplication Levels

        The relative level of duplication found for every sequence.

        From the FastQC Help:

        In a diverse library most sequences will occur only once in the final set. A low level of duplication may indicate a very high level of coverage of the target sequence, but a high level of duplication is more likely to indicate some kind of enrichment bias (eg PCR over amplification). This graph shows the degree of duplication for every sequence in a library: the relative number of sequences with different degrees of duplication.

        Only sequences which first appear in the first 100,000 sequences in each file are analysed. This should be enough to get a good impression for the duplication levels in the whole file. Each sequence is tracked to the end of the file to give a representative count of the overall duplication level.

        The duplication detection requires an exact sequence match over the whole length of the sequence. Any reads over 75bp in length are truncated to 50bp for this analysis.

        In a properly diverse library most sequences should fall into the far left of the plot in both the red and blue lines. A general level of enrichment, indicating broad oversequencing in the library will tend to flatten the lines, lowering the low end and generally raising other categories. More specific enrichments of subsets, or the presence of low complexity contaminants will tend to produce spikes towards the right of the plot.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Overrepresented sequences

        The total amount of overrepresented sequences found in each library.

        FastQC calculates and lists overrepresented sequences in FastQ files. It would not be possible to show this for all samples in a MultiQC report, so instead this plot shows the number of sequences categorized as over represented.

        Sometimes, a single sequence may account for a large number of reads in a dataset. To show this, the bars are split into two: the first shows the overrepresented reads that come from the single most common sequence. The second shows the total count from all remaining overrepresented sequences.

        From the FastQC Help:

        A normal high-throughput library will contain a diverse set of sequences, with no individual sequence making up a tiny fraction of the whole. Finding that a single sequence is very overrepresented in the set either means that it is highly biologically significant, or indicates that the library is contaminated, or not as diverse as you expected.

        FastQC lists all of the sequences which make up more than 0.1% of the total. To conserve memory only sequences which appear in the first 100,000 sequences are tracked to the end of the file. It is therefore possible that a sequence which is overrepresented but doesn't appear at the start of the file for some reason could be missed by this module.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Adapter Content

        The cumulative percentage count of the proportion of your library which has seen each of the adapter sequences at each position.

        Note that only samples with ≥ 0.1% adapter contamination are shown.

        There may be several lines per sample, as one is shown for each adapter detected in the file.

        From the FastQC Help:

        The plot shows a cumulative percentage count of the proportion of your library which has seen each of the adapter sequences at each position. Once a sequence has been seen in a read it is counted as being present right through to the end of the read so the percentages you see will only increase as the read length goes on.

        Flat image plot. Toolbox functions such as highlighting / hiding samples will not work (see the docs).


        Status Checks

        Status for each FastQC section showing whether results seem entirely normal (green), slightly abnormal (orange) or very unusual (red).

        FastQC assigns a status for each section of the report. These give a quick evaluation of whether the results of the analysis seem entirely normal (green), slightly abnormal (orange) or very unusual (red).

        It is important to stress that although the analysis results appear to give a pass/fail result, these evaluations must be taken in the context of what you expect from your library. A 'normal' sample as far as FastQC is concerned is random and diverse. Some experiments may be expected to produce libraries which are biased in particular ways. You should treat the summary evaluations therefore as pointers to where you should concentrate your attention and understand why your library may not look random and diverse.

        Specific guidance on how to interpret the output of each module can be found in the relevant report section, or in the FastQC help.

        In this heatmap, we summarise all of these into a single heatmap for a quick overview. Note that not all FastQC sections have plots in MultiQC reports, but all status checks are shown in this heatmap.

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