Last updated: 2022-07-27

Checks: 1 1

Knit directory: humanCardiacFibroblasts/

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File Version Author Date Message
Rmd c5d06fc mluetge 2022-07-22 vis sel DE genes groups
html c5d06fc mluetge 2022-07-22 vis sel DE genes groups
Rmd 02765dc mluetge 2022-07-19 GSEA across diff groups
html 02765dc mluetge 2022-07-19 GSEA across diff groups
Rmd 3e98bf3 mluetge 2022-07-15 run DE genes HH vs Myo
html 3e98bf3 mluetge 2022-07-15 run DE genes HH vs Myo
Rmd 141fae8 mluetge 2022-07-06 assign labels
html 141fae8 mluetge 2022-07-06 assign labels
Rmd d9e1a98 mluetge 2022-07-04 integrate samples Graz
html d9e1a98 mluetge 2022-07-04 integrate samples Graz
Rmd 9fc92e5 mluetge 2022-06-23 add samples from Graz
html 9fc92e5 mluetge 2022-06-23 add samples from Graz
Rmd 70e878c mluetge 2022-05-02 update grand application plots
html 70e878c mluetge 2022-05-02 update grand application plots
Rmd 004eedd mluetge 2022-04-29 vis data for grand app
html 004eedd mluetge 2022-04-29 vis data for grand app
Rmd affdfcb mluetge 2021-11-11 add cw DE henes idcm
html affdfcb mluetge 2021-11-11 add cw DE henes idcm
html 8706140 mluetge 2021-09-03 Update index.html
Rmd cf82798 mluetge 2021-09-03 first merge
html cf82798 mluetge 2021-09-03 first merge
html e2b9497 mluetge 2021-09-03 initial commit
Rmd b27bc0d mluetge 2021-09-03 Start workflowr project.

Human Cardiac Fibroblasts - optimize protocols:

merge cardiac cells from different isolation protocols etc: link
merge cardiac cells including samples from Graz: link
integrate cardiac cells including samples from Graz: link
assign labels to integrated data: link
integrate cardiac cells including samples from Graz only subset with high Tcell fraction: link
cw DE genes samples GRAZ and SG grouped by Tcell fraction: link
vis sel DE genes samples GRAZ and SG grouped by Tcell fraction: link
cw DE genes samples GRAZ and SG subset on low Tcell fraction: link
cw DE genes samples GRAZ and SG subset on high Tcell fraction: link
vis sel DE genes samples GRAZ and SG on Tcell fraction: link
cw DE genes iDCM versus other: link
visualize data for grand application with ECMO4: link
visualize data for grand application without ECMO4: link