Seqanswers Leaderboard Ad

Collapse

Announcement

Collapse
No announcement yet.
X
 
  • Filter
  • Time
  • Show
Clear All
new posts

  • stanford's machine learning applied in bioinformatics

    2 questions:

    1) Anyone on this forum also taking the ml-class offered?
    2) Specific examples of machine learning used in bioinformatics

    So I'm about half way through the class and I started with the specific intent of applying this to bioinformatics ...

    And while I understand what I'm working on ... I'd really like more practice!

    linear regression
    logistic regression
    neural networks
    support vector machines

  • #2
    Shameless self promotion. Paper describing application of SVMs for the prediction of putative vaccine candidates from bacterial genome sequence.

    Paul

    Comment


    • #3
      I'm ok with shameless!

      sounds .... amazingly spot on... !

      if( published? )
      " where can I find one? "
      else
      " WHEN!? "
      end

      and I've got a class full of smart and optimistic kids looking to learn some things ... do you have any leads .. or like annoying pet projects you'd like to talk about?

      Comment


      • #4
        Oops,
        forgot to include link!

        Reverse vaccinology aims to accelerate subunit vaccine design by rapidly predicting which proteins in a pathogenic bacterial proteome are putative protective antigens. Support vector machine classification is a machine learning approach that has been applied to solve numerous classification problems …

        Comment


        • #5
          Hi,

          I am following the ml class. The techniques taught in the class are very useful in biology.

          Actually until I took the class, I didnot realize that the techniques used in microarray data analysis (or RNA-seq), for example, cluster analysis, PCA, clustering, are machine learning techniques.

          Plus, linear regression is used a lot in modeling gene expression and gene set analysis, e.g. limma, GSEAlm.

          Moreover, Octave, the programming environment used in the course (or a free version of Matlab), is also widely used in bioinformatics.

          You won't regret taking the course.

          Cheers,
          Jun

          Comment


          • #6
            Paul:


            ^ Im posting this guy to reddit

            Jun:
            Might I ask how you came upon that fact? Where can I read more about it?

            Comment


            • #7
              Originally posted by delinquentme View Post
              Paul:


              ^ Im posting this guy to reddit

              Jun:
              Might I ask how you came upon that fact? Where can I read more about it?
              Just a few examples as mentioned in my post.

              Multivariate analysis package for microarray (clustering, PCA, COA ...)
              Culhane AC, Thioulouse J, Perriere G, Higgins DG (2005) MADE4: an R package for multivariate analysis of gene expression data. Bioinformatics 21:2789-2790.

              Linear model in microarray DE gene
              Smyth GK (2004) Linear models and empirical bayes methods for assessing differential expression in microarray experiments. Stat Appl Genet Mol Biol 3:Article3.

              Linear model in gene set analysis
              Oron AP, Jiang Z, Gentleman R (2008) Gene set enrichment analysis using linear models and diagnostics. Bioinformatics 24:2586-2591.

              Comment

              Latest Articles

              Collapse

              • seqadmin
                Recent Advances in Sequencing Analysis Tools
                by seqadmin


                The sequencing world is rapidly changing due to declining costs, enhanced accuracies, and the advent of newer, cutting-edge instruments. Equally important to these developments are improvements in sequencing analysis, a process that converts vast amounts of raw data into a comprehensible and meaningful form. This complex task requires expertise and the right analysis tools. In this article, we highlight the progress and innovation in sequencing analysis by reviewing several of the...
                Today, 07:48 AM
              • seqadmin
                Essential Discoveries and Tools in Epitranscriptomics
                by seqadmin




                The field of epigenetics has traditionally concentrated more on DNA and how changes like methylation and phosphorylation of histones impact gene expression and regulation. However, our increased understanding of RNA modifications and their importance in cellular processes has led to a rise in epitranscriptomics research. “Epitranscriptomics brings together the concepts of epigenetics and gene expression,” explained Adrien Leger, PhD, Principal Research Scientist...
                04-22-2024, 07:01 AM

              ad_right_rmr

              Collapse

              News

              Collapse

              Topics Statistics Last Post
              Started by seqadmin, Today, 07:17 AM
              0 responses
              6 views
              0 likes
              Last Post seqadmin  
              Started by seqadmin, 05-02-2024, 08:06 AM
              0 responses
              19 views
              0 likes
              Last Post seqadmin  
              Started by seqadmin, 04-30-2024, 12:17 PM
              0 responses
              20 views
              0 likes
              Last Post seqadmin  
              Started by seqadmin, 04-29-2024, 10:49 AM
              0 responses
              28 views
              0 likes
              Last Post seqadmin  
              Working...
              X