Presentation is loading. Please wait.

Presentation is loading. Please wait.

Predicting patterns of biological performance using chemical substructure features Diego Borges-Rivera 08/04/08.

Similar presentations


Presentation on theme: "Predicting patterns of biological performance using chemical substructure features Diego Borges-Rivera 08/04/08."— Presentation transcript:

1 Predicting patterns of biological performance using chemical substructure features Diego Borges-Rivera 08/04/08

2 Introduction  cheminformatics – allow us to computationally describe similarity  synthetic chemists – describe through visual inspection  we will describe compounds by the presence of chemical substructures  we will attempt to identify sets of substructures that predict biological performance 1011101000101 0101000101101 0101000101101 1

3 Previous work  Clemons/Kahne/Wagner et al. -- disaccharide profiling in multiple cell states  found sets of substructures relevant to biological activity patterns  substructures highly specific to disaccharides 10 20 30 40 50 60 substructures

4 Biological performance profile  400 compounds, 8 assays in duplicate  tested for cell proliferation in 8 different cell lines  class labels are active (A) or inactive (I) active compound

5 What are fingerprints?  compound collection fed into commercial software  each substructure = 1 bit  the fingerprint shows which substructures are present substructure #1725 substructure #886 substructure #7017

6 Overview of cheminformatic methods  produced fingerprints  7700 total substructures  filtered set  left 2166 substructures

7 feature (substructure) selection to find predictive subsets evaluate methods for predictive value Overview of computational methods  two steps independent of each other

8 ReliefF: substructure selection +10 2166 weights Top 5 Bottom 5

9 K nearest neighbors (knn): predictive accuracy  Examples: k = 2, 5 compound being classified = ?

10 Similarity between compounds  similarity between two fingerprints  Tanimoto coefficient  this is used twice: (1) in ReliefF (2) in knn Example: Compound a: 0 0 1 Compound b: 1 0 1 Tanimoto coefficient = 1 / 2 =.5

11 Cross-validation: predictive accuracy  10 subsets  test set: one of the subsets  training set: the remaining subsets test set training set

12 Picking parameters for methods  which parameters produce the best predictive accuracies number of neighbors used in ReliefF {1, 2, 4, etc} number of neighbors used in knn {1, 2, 4, etc} number of ReliefF substructures used to predict classes in knn {1, 20, 100, etc}

13 Picking number of substructures predictive accuracy 1.0.9.8.7.6.5.4.3.2.1 0.0 1 20 all number of substructures used to predict

14 Group of substructures best able to predict

15 Future work  multi-class  different feature selection

16 Acknowledgements Computational Chemical Biology Joshua Gilbert Paul Clemons Hyman Carrinski Summer Research Program in Genomics Shawna Young Lucia Vielma Maura Silverstein


Download ppt "Predicting patterns of biological performance using chemical substructure features Diego Borges-Rivera 08/04/08."

Similar presentations


Ads by Google