Last updated: 2022-02-13
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Knit directory: cTWAS_analysis/
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File | Version | Author | Date | Message |
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Rmd | eb13ecf | sq-96 | 2022-02-13 | update |
html | e6bc169 | sq-96 | 2022-02-13 | Build site. |
Rmd | 87fee8b | sq-96 | 2022-02-13 | update |
[1] 12414
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16
1223 885 712 493 574 708 607 468 472 481 750 671 248 411 431 580
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758 186 940 370 138 308
[1] 8861
[1] 0.7137909
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Note: As of version 1.0.0, cowplot does not change the
default ggplot2 theme anymore. To recover the previous
behavior, execute:
theme_set(theme_cowplot())
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Version | Author | Date |
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e6bc169 | sq-96 | 2022-02-13 |
gene snp
0.0066047523 0.0001681642
gene snp
3.629571 1.542519
[1] 337159
[1] 12414 7535010
gene snp
0.0008826506 0.0057971306
[1] 0.008240852 0.104643058
Version | Author | Date |
---|---|---|
e6bc169 | sq-96 | 2022-02-13 |
genename region_tag susie_pip mu2 PVE z num_eqtl
3633 CCND2 12_4 0.9960588 26.82338 7.924350e-05 5.640253 2
4039 DAW1 2_134 0.6520366 24.10133 4.660990e-05 4.212144 2
3927 KLHL7 7_20 0.3117293 28.82218 2.664831e-05 3.761454 2
1055 ADCY2 5_7 0.3110596 29.13539 2.688004e-05 -3.602686 1
5948 SAT2 17_7 0.3034725 27.90152 2.511380e-05 3.462292 1
8729 ZNF180 19_31 0.2994262 28.43816 2.525553e-05 3.487253 2
7067 NUS1 6_78 0.2961966 28.74758 2.525496e-05 3.716370 1
14507 RP6-65G23.5 14_33 0.2820679 26.95154 2.254771e-05 3.369949 1
2137 NIPAL2 8_67 0.2774893 29.77768 2.450769e-05 -3.500588 2
2923 GNPTAB 12_61 0.2585525 26.98745 2.069549e-05 3.600816 1
7368 AP3S2 15_41 0.2457994 26.57908 1.937697e-05 -3.675343 2
11538 RABL6 9_74 0.2439157 26.89396 1.945627e-05 -3.491221 1
8342 MAMDC2 9_31 0.2436855 27.46993 1.985420e-05 3.779388 1
7460 PINK1 1_14 0.2391013 26.38648 1.871237e-05 3.208561 1
5761 DIAPH3 13_28 0.2384631 26.45894 1.871366e-05 -3.353072 1
11408 RRP7A 22_18 0.2329284 25.57072 1.766569e-05 3.082913 4
7974 LMOD1 1_102 0.2310904 25.35682 1.737969e-05 3.200403 1
9603 HPSE 4_56 0.2282649 26.26893 1.778471e-05 -3.109502 1
10568 LIPF 10_56 0.2252638 26.18648 1.749580e-05 2.991710 1
12381 KCTD11 17_6 0.2232470 25.41206 1.682638e-05 3.070309 2
Version | Author | Date |
---|---|---|
e6bc169 | sq-96 | 2022-02-13 |
genename region_tag susie_pip mu2 PVE z num_eqtl
2137 NIPAL2 8_67 0.2774893 29.77768 2.450769e-05 -3.500588 2
1055 ADCY2 5_7 0.3110596 29.13539 2.688004e-05 -3.602686 1
3927 KLHL7 7_20 0.3117293 28.82218 2.664831e-05 3.761454 2
7067 NUS1 6_78 0.2961966 28.74758 2.525496e-05 3.716370 1
12700 LINC01537 11_41 0.1922338 28.61611 1.631569e-05 -3.271391 2
8729 ZNF180 19_31 0.2994262 28.43816 2.525553e-05 3.487253 2
5948 SAT2 17_7 0.3034725 27.90152 2.511380e-05 3.462292 1
8342 MAMDC2 9_31 0.2436855 27.46993 1.985420e-05 3.779388 1
2923 GNPTAB 12_61 0.2585525 26.98745 2.069549e-05 3.600816 1
14507 RP6-65G23.5 14_33 0.2820679 26.95154 2.254771e-05 3.369949 1
13511 AP001257.1 11_34 0.1747441 26.93090 1.395786e-05 3.363327 2
11538 RABL6 9_74 0.2439157 26.89396 1.945627e-05 -3.491221 1
3633 CCND2 12_4 0.9960588 26.82338 7.924350e-05 5.640253 2
7368 AP3S2 15_41 0.2457994 26.57908 1.937697e-05 -3.675343 2
5761 DIAPH3 13_28 0.2384631 26.45894 1.871366e-05 -3.353072 1
7460 PINK1 1_14 0.2391013 26.38648 1.871237e-05 3.208561 1
9603 HPSE 4_56 0.2282649 26.26893 1.778471e-05 -3.109502 1
12996 ZBED5 11_8 0.1569989 26.26162 1.222879e-05 -3.094448 2
10568 LIPF 10_56 0.2252638 26.18648 1.749580e-05 2.991710 1
9172 SIK2 11_66 0.2107616 25.57879 1.598957e-05 -3.728002 1
genename region_tag susie_pip mu2 PVE z num_eqtl
3633 CCND2 12_4 0.9960588 26.82338 7.924350e-05 5.640253 2
4039 DAW1 2_134 0.6520366 24.10133 4.660990e-05 4.212144 2
1055 ADCY2 5_7 0.3110596 29.13539 2.688004e-05 -3.602686 1
3927 KLHL7 7_20 0.3117293 28.82218 2.664831e-05 3.761454 2
8729 ZNF180 19_31 0.2994262 28.43816 2.525553e-05 3.487253 2
7067 NUS1 6_78 0.2961966 28.74758 2.525496e-05 3.716370 1
5948 SAT2 17_7 0.3034725 27.90152 2.511380e-05 3.462292 1
2137 NIPAL2 8_67 0.2774893 29.77768 2.450769e-05 -3.500588 2
14507 RP6-65G23.5 14_33 0.2820679 26.95154 2.254771e-05 3.369949 1
2923 GNPTAB 12_61 0.2585525 26.98745 2.069549e-05 3.600816 1
8342 MAMDC2 9_31 0.2436855 27.46993 1.985420e-05 3.779388 1
11538 RABL6 9_74 0.2439157 26.89396 1.945627e-05 -3.491221 1
7368 AP3S2 15_41 0.2457994 26.57908 1.937697e-05 -3.675343 2
5761 DIAPH3 13_28 0.2384631 26.45894 1.871366e-05 -3.353072 1
7460 PINK1 1_14 0.2391013 26.38648 1.871237e-05 3.208561 1
9603 HPSE 4_56 0.2282649 26.26893 1.778471e-05 -3.109502 1
11408 RRP7A 22_18 0.2329284 25.57072 1.766569e-05 3.082913 4
10568 LIPF 10_56 0.2252638 26.18648 1.749580e-05 2.991710 1
7974 LMOD1 1_102 0.2310904 25.35682 1.737969e-05 3.200403 1
12381 KCTD11 17_6 0.2232470 25.41206 1.682638e-05 3.070309 2
genename region_tag susie_pip mu2 PVE z num_eqtl
3633 CCND2 12_4 0.99605876 26.82338 7.924350e-05 5.640253 2
4039 DAW1 2_134 0.65203660 24.10133 4.660990e-05 4.212144 2
8342 MAMDC2 9_31 0.24368551 27.46993 1.985420e-05 3.779388 1
3927 KLHL7 7_20 0.31172926 28.82218 2.664831e-05 3.761454 2
9172 SIK2 11_66 0.21076159 25.57879 1.598957e-05 -3.728002 1
7067 NUS1 6_78 0.29619664 28.74758 2.525496e-05 3.716370 1
7368 AP3S2 15_41 0.24579938 26.57908 1.937697e-05 -3.675343 2
1055 ADCY2 5_7 0.31105965 29.13539 2.688004e-05 -3.602686 1
2923 GNPTAB 12_61 0.25855245 26.98745 2.069549e-05 3.600816 1
6954 ZFP36L2 2_27 0.09181774 19.66710 5.355897e-06 -3.577139 2
1731 RBX1 22_17 0.17255431 22.56815 1.155013e-05 -3.521311 1
14659 LINC01126 2_27 0.08675796 19.20577 4.942040e-06 3.518883 2
2137 NIPAL2 8_67 0.27748935 29.77768 2.450769e-05 -3.500588 2
11538 RABL6 9_74 0.24391565 26.89396 1.945627e-05 -3.491221 1
8729 ZNF180 19_31 0.29942623 28.43816 2.525553e-05 3.487253 2
8071 SPDYA 2_17 0.13662530 21.97074 8.903094e-06 -3.478973 2
5948 SAT2 17_7 0.30347254 27.90152 2.511380e-05 3.462292 1
9512 DNAJB7 22_17 0.15659375 21.74971 1.010167e-05 3.462008 1
5651 CNOT6L 4_52 0.20603518 25.05407 1.531034e-05 3.460483 1
12362 PPP1CB 2_17 0.12457721 21.20505 7.835074e-06 3.405525 1
Version | Author | Date |
---|---|---|
e6bc169 | sq-96 | 2022-02-13 |
Version | Author | Date |
---|---|---|
e6bc169 | sq-96 | 2022-02-13 |
[1] 8.055421e-05
genename region_tag susie_pip mu2 PVE z num_eqtl
3633 CCND2 12_4 0.99605876 26.82338 7.924350e-05 5.640253 2
4039 DAW1 2_134 0.65203660 24.10133 4.660990e-05 4.212144 2
8342 MAMDC2 9_31 0.24368551 27.46993 1.985420e-05 3.779388 1
3927 KLHL7 7_20 0.31172926 28.82218 2.664831e-05 3.761454 2
9172 SIK2 11_66 0.21076159 25.57879 1.598957e-05 -3.728002 1
7067 NUS1 6_78 0.29619664 28.74758 2.525496e-05 3.716370 1
7368 AP3S2 15_41 0.24579938 26.57908 1.937697e-05 -3.675343 2
1055 ADCY2 5_7 0.31105965 29.13539 2.688004e-05 -3.602686 1
2923 GNPTAB 12_61 0.25855245 26.98745 2.069549e-05 3.600816 1
6954 ZFP36L2 2_27 0.09181774 19.66710 5.355897e-06 -3.577139 2
1731 RBX1 22_17 0.17255431 22.56815 1.155013e-05 -3.521311 1
14659 LINC01126 2_27 0.08675796 19.20577 4.942040e-06 3.518883 2
2137 NIPAL2 8_67 0.27748935 29.77768 2.450769e-05 -3.500588 2
11538 RABL6 9_74 0.24391565 26.89396 1.945627e-05 -3.491221 1
8729 ZNF180 19_31 0.29942623 28.43816 2.525553e-05 3.487253 2
8071 SPDYA 2_17 0.13662530 21.97074 8.903094e-06 -3.478973 2
5948 SAT2 17_7 0.30347254 27.90152 2.511380e-05 3.462292 1
9512 DNAJB7 22_17 0.15659375 21.74971 1.010167e-05 3.462008 1
5651 CNOT6L 4_52 0.20603518 25.05407 1.531034e-05 3.460483 1
12362 PPP1CB 2_17 0.12457721 21.20505 7.835074e-06 3.405525 1
[1] 72
[1] 35
[1] 4.609947
[1] 1
[1] 1
[1] genename region_tag susie_pip mu2 PVE z num_eqtl
<0 rows> (or 0-length row.names)
ctwas TWAS
0 0
ctwas TWAS
0.9999192 0.9999192
ctwas TWAS
0 0
Version | Author | Date |
---|---|---|
e6bc169 | sq-96 | 2022-02-13 |
sessionInfo()
R version 3.6.1 (2019-07-05)
Platform: x86_64-pc-linux-gnu (64-bit)
Running under: Scientific Linux 7.4 (Nitrogen)
Matrix products: default
BLAS/LAPACK: /software/openblas-0.2.19-el7-x86_64/lib/libopenblas_haswellp-r0.2.19.so
locale:
[1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
[3] LC_TIME=en_US.UTF-8 LC_COLLATE=en_US.UTF-8
[5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
[7] LC_PAPER=en_US.UTF-8 LC_NAME=C
[9] LC_ADDRESS=C LC_TELEPHONE=C
[11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
attached base packages:
[1] stats graphics grDevices utils datasets methods base
other attached packages:
[1] readxl_1.3.1 cowplot_1.0.0 ggplot2_3.3.5 workflowr_1.6.2
loaded via a namespace (and not attached):
[1] tidyselect_1.1.1 xfun_0.29 purrr_0.3.4 colorspace_2.0-2
[5] vctrs_0.3.8 generics_0.1.1 htmltools_0.5.2 yaml_2.2.1
[9] utf8_1.2.2 blob_1.2.2 rlang_0.4.12 jquerylib_0.1.4
[13] later_0.8.0 pillar_1.6.4 glue_1.5.1 withr_2.4.3
[17] DBI_1.1.1 bit64_4.0.5 lifecycle_1.0.1 stringr_1.4.0
[21] cellranger_1.1.0 munsell_0.5.0 gtable_0.3.0 evaluate_0.14
[25] memoise_2.0.1 labeling_0.4.2 knitr_1.36 fastmap_1.1.0
[29] httpuv_1.5.1 fansi_0.5.0 highr_0.9 Rcpp_1.0.7
[33] promises_1.0.1 scales_1.1.1 cachem_1.0.6 farver_2.1.0
[37] fs_1.5.2 bit_4.0.4 digest_0.6.29 stringi_1.7.6
[41] dplyr_1.0.7 rprojroot_2.0.2 grid_3.6.1 tools_3.6.1
[45] magrittr_2.0.1 tibble_3.1.6 RSQLite_2.2.8 crayon_1.4.2
[49] whisker_0.3-2 pkgconfig_2.0.3 ellipsis_0.3.2 data.table_1.14.2
[53] assertthat_0.2.1 rmarkdown_2.11 R6_2.5.1 git2r_0.26.1
[57] compiler_3.6.1