Visualize gene expression data in R using ggplot2 | Bioinformatics for beginners

Поделиться
HTML-код
  • Опубликовано: 22 авг 2024

Комментарии • 49

  • @alicemostafa8717
    @alicemostafa8717 Год назад +6

    you are just amazing. I always felt afraid from R and RNA-seq analysis, but you made it super clear for me. Thanks!

  • @coolalexpcs
    @coolalexpcs 6 месяцев назад +2

    It's a really fantastic lecture teaching ggplot specifically for gene expression data! Really helpful!

  • @usmanasghar1127
    @usmanasghar1127 2 дня назад

    You are doing really amazing work keep it up.

  • @lavanyakakimallaiah
    @lavanyakakimallaiah 2 года назад

    I was finding it difficult to understand from online resources.... your video about gene expression really superb...I was able to understand all the things
    Thanks for the video

  • @tulikabhardwaj484
    @tulikabhardwaj484 2 года назад +2

    I am so much addicted to your videos. Please kindly made some videos on metatranscriptomics

    • @Bioinformagician
      @Bioinformagician  2 года назад +1

      Thank you, I will surely think about making a video on it :)

    • @tulikabhardwaj484
      @tulikabhardwaj484 2 года назад

      @@Bioinformagician then surely, I am eagerly waiting for that day. Good luck to you girl.😀

    • @Bioinformagician
      @Bioinformagician  2 года назад

      @@tulikabhardwaj484 Thank you! 😃

  • @setarehsohail5422
    @setarehsohail5422 2 года назад

    Unbelievable! you are genius! How do you teach these complex issues so easy and understandable?! Thanks from bottom of heart!

    • @Bioinformagician
      @Bioinformagician  2 года назад

      I really appreciate your kind words. Thank you very much :)

  • @o1kun
    @o1kun Год назад +2

    These videos are really really helpful! You really saved my research 🎉

  • @sanjaisrao484
    @sanjaisrao484 2 года назад +2

    Exellent explaination
    Thank you very much
    Keep uploading 🥰

  • @kimiaslk9348
    @kimiaslk9348 Год назад

    your videos really help me through my masters, you are so smart and inspiring ! thank you

  • @jowrow7665
    @jowrow7665 2 года назад

    Thanks sister. You are just doing nothing but a great job.
    I wish you all the best.

  • @nikitamaurya4518
    @nikitamaurya4518 2 месяца назад +1

    Thank you so much!

  • @lincysubi6735
    @lincysubi6735 Месяц назад

    Excellent explanation...

  • @shrishteekandoi120
    @shrishteekandoi120 2 года назад

    Fabulous Explanation ! I love how you make things so much easier to understand !

  • @bzaruk
    @bzaruk 2 года назад

    All your content is PRICELESS - thank you so much! :)

  • @gaellelelandais2624
    @gaellelelandais2624 Год назад

    Very nice ! Thank you, you're doing a great job, very useful for other teachers (as I am). Thank you.

  • @nagavenicavuturu9179
    @nagavenicavuturu9179 5 месяцев назад

    Yes your explanation is really great

  • @giulianacoatti8163
    @giulianacoatti8163 Год назад

    I simply LOVE YOUR CHANEL!!! THANK YOU SO MUCH FOR SHARING!!!

  • @vahidgorganli8895
    @vahidgorganli8895 Год назад +1

    Great😀

  • @RicardoRiveroHerrera
    @RicardoRiveroHerrera 2 года назад +1

    Really good content! Keep it up!

  • @luischipres283
    @luischipres283 Год назад +2

    ¡Gracias!

  • @parthibanm756
    @parthibanm756 11 месяцев назад

    Can u please put lectures on comparative metabolomics data analysis, you have been amazing

  • @tushardhyani3931
    @tushardhyani3931 2 года назад

    Thank you for this video !!

  • @umarsheikh1992
    @umarsheikh1992 2 года назад

    Hie,
    Thank you the helpful tutorial for understanding and analyzing the gene expression data sets.
    As u have started the videos series beginning from how to download the data set to visualisation. Could you please add a video where in you can show how to perform differential gene expression with edgeR, limma, and DESeq2 of the same data set. We now we have the data in the dat. Long format, could we explore the differentially expressing gene between tumor and normal sample and plot the data using heatmap.
    Regards

    • @Bioinformagician
      @Bioinformagician  2 года назад

      That's a great suggestion. I'll surely plan on making a video in continuation with this dataset and performing downstream analysis.

  • @vijethavk
    @vijethavk 8 месяцев назад

    For the heatmaps, can the sample names be made perpendicular to the columns and therefore more readable?

  • @neetimittal9189
    @neetimittal9189 Год назад

    Hi Could you please make a tutorial on workflow for processing, qc and analysis of a DNA methylation data on Illumina 450K or EPIC platforms? Your videos are really helpful!

  • @shreymehta4973
    @shreymehta4973 Год назад

    Hi! Quick question -- is it possible to use other values besides FPKM for comparison? What other types of normalized values do you recommend using for all these plots? Thank you!

  • @manuelsokolov
    @manuelsokolov Год назад

    This video was very helpfull! If I may ask can you compare like this across samples having the data normalized in FPKM?

  • @sciencetutor_businessguy
    @sciencetutor_businessguy Год назад

    i think the data set you used is different from the one downloaded as there was no gene BRCA1 AND BRCA2 in the genes in the dataset. While i filtered , it showed no result with the filtering using both gene names. Does anyone face the same challenge?

  • @user-uq3qh2cy9v
    @user-uq3qh2cy9v Год назад

    in this sample, you used "fill=tissue", then bars of different tissue colors are grouped together. However, if you change it into "fill=metastasis", like below coded, then the bars of different colors are mingled. Is there any way we can group it again?
    dat.long %>%

    filter(gene=='BRAC1') %>%

    ggplot(., aes(x=sample, y=FPKM, fill=metastasis)) +
    geom_col()

  • @yahyayozbatiran
    @yahyayozbatiran Год назад

    Hello, how can i plot a specific gene expression in cancer subtypes from tcga, for example;
    I want to plot> MSH2 gene expressions in Colon Mucinous versus Colon Adenocarcinoma

  • @zulfakhan2655
    @zulfakhan2655 Год назад

    can you please explain how can we generate Differentially expressed gene via this type of data...
    that is gene expression data.

  • @dharmeshbisoriya7728
    @dharmeshbisoriya7728 Год назад

    Can we use the FPKM values directly to compare between samples.?

  • @nagavenicavuturu9179
    @nagavenicavuturu9179 5 месяцев назад

    Does the software s mentioned will be available at free of cost???

  • @karthibiotech426
    @karthibiotech426 2 года назад +1

    i want to know about the file of your input GSE183947_long format.txt...is this the previous .CSV file you used...?

    • @Bioinformagician
      @Bioinformagician  2 года назад

      It is the CSV file associated with the record GSE183947, just manipulated the shape of the data from wide to long and saved it as GSE183947_long format.txt.

  • @ashutoshs1966
    @ashutoshs1966 Год назад

    Can these things be done in Studio as well

  • @ducphucngo3938
    @ducphucngo3938 Год назад

    Is this method still available for microarray data? Thanks in advance

  • @user-no1jk9km7r
    @user-no1jk9km7r Год назад

    i love you

  • @user-ft5bh9yr1j
    @user-ft5bh9yr1j 2 года назад

    Hey, great tutorial! Just a note that you do a lot of "uhhhh/ahh" while you talk, it's a little distracting hahaha

    • @Bioinformagician
      @Bioinformagician  2 года назад +1

      I am happy you find the tutorial great inspite of uhh ahh :P
      But in all good spirit point noted, thanks for bringing that to my notice :)

  • @bnb7462
    @bnb7462 Год назад

    Tidy video ❤