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EECS 730 Introduction to Bioinformatics Microarray. Luke Huan Electrical Engineering and Computer Science http://people.eecs.ku.edu/~jhuan/. Administrative. Final exam: Dec 15 7:30-10:00. Model Based Subspace Clustering. Microarray Bi-clustering δ -clustering. MicroArray Dataset.
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EECS 730Introduction to BioinformaticsMicroarray Luke Huan Electrical Engineering and Computer Science http://people.eecs.ku.edu/~jhuan/
Administrative • Final exam: Dec 15 7:30-10:00 EECS 730
Model Based Subspace Clustering • Microarray • Bi-clustering • δ-clustering EECS 730
MicroArray Dataset EECS 730
Gene Expression Matrix Genes Genes Conditions Time points Cancer Tissues EECS 730 Conditions
Data Mining: Clustering K-means clustering minimizes Where EECS 730
Clustering by Pattern Similarity (p-Clustering) • The micro-array “raw” data shows 3 genes and their values in a multi-dimensional space • Parallel Coordinates Plots • Difficult to find their patterns • “non-traditional” clustering EECS 730
Clusters Are Clear After Projection EECS 730
Motivation • DNA microarray analysis EECS 730
Motivation EECS 730
Motivation • Strong coherence exhibits by the selected objects on the selected attributes. • They are not necessarily close to each other but rather bear a constant shift. • Object/attribute bias • bi-cluster EECS 730
Challenges • The set of objects and the set of attributes are usually unknown. • Different objects/attributes may possess different biases and such biases • may be local to the set of selected objects/attributes • are usually unknown in advance • May have many unspecified entries EECS 730
Previous Work • Subspace clustering • Identifying a set of objects and a set of attributes such that the set of objects are physically close to each other on the subspace formed by the set of attributes. • Collaborative filtering: Pearson R • Only considers globaloffset of each object/attribute. EECS 730
bi-cluster Terms • Consists of a (sub)set of objects and a (sub)set of attributes • Corresponds to a submatrix • Occupancy threshold • Each object/attribute has to be filled by a certain percentage. • Volume: number of specified entries in the submatrix • Base: average value of each object/attribute (in the bi-cluster) • Biclustering of Expression Data, Cheng & Church ISMB’00 EECS 730
bi-cluster EECS 730
17 conditions 40 genes EECS 730
Motivation EECS 730
17 conditions 40 genes EECS 730
Motivation Co-regulated genes EECS 730
bi-cluster • Perfect -cluster • Imperfect -cluster • Residual: dij diJ dIJ dIj EECS 730
bi-cluster • The smaller the average residue, the stronger the coherence. • Objective: identify -clusters with residue smaller than a given threshold EECS 730
Cheng-Church Algorithm • Find one bi-cluster. • Replace the data in the first bi-cluster with random data • Find the second bi-cluster, and go on. • The quality of the bi-cluster degrades (smaller volume, higher residue) due to the insertion of random data. EECS 730
The FLOC algorithm Generating initial clusters Determine the best action for each row and each column Perform the best action of each row and column sequentially Y Improved? N Yang et al. delta-Clusters: Capturing Subspace Correlation in a Large Data Set, ICDE’02 EECS 730
The FLOC algorithm • Action: the change of membership of a row (or column) with respect to a cluster column M=4 1 2 3 4 row 3 4 2 2 1 M+N actions are Performed at each iteration 2 1 3 2 3 N=3 3 4 2 0 4 EECS 730
The FLOC algorithm • Gain of an action: the residual reduction incurred by performing the action • Order of action: • Fixed order • Random order • Weighted random order • Complexity: O((M+N)MNkp) EECS 730
The FLOC algorithm • Additional features • Maximum allowed overlap among clusters • Minimum coverage of clusters • Minimum volume of each cluster • Can be enforced by “temporarily blocking” certain action during the mining process if such action would violate some constraint. EECS 730
Performance • Microarray data: 2884 genes, 17 conditions • 100 bi-clusters with smallest residue were returned. • Average residue = 10.34 • The average residue of clusters found via the state of the art method in computational biology field is 12.54 • The average volume is 25% bigger • The response time is an order of magnitude faster EECS 730
Conclusion Remark • The model of bi-cluster is proposed to capture coherent objects with incomplete data set. • base • residue • Many additional features can be accommodated (nearly for free). EECS 730
References • J. Young, W. Wang, H. Wang, P. Yu, Delta-cluster: capturing subspace correlation in a large data set, Proceedings of the 18th IEEE International Conference on Data Engineering (ICDE), pp. 517-528, 2002. • H. Wang, W. Wang, J. Young, P. Yu, Clustering by pattern similarity in large data sets, to appear in Proceedings of the ACM SIGMOD International Conference on Management of Data (SIGMOD), 2002. • Y. Sungroh, C. Nardini, L. Benini, G. De Micheli, Enhanced pClustering and its applications to gene expression data Bioinformatics and Bioengineering, 2004. • J. Liu and W. Wang, OP-Cluster: clustering by tendency in high dimensional space, ICDM’03. EECS 730