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Clustering the Temporal Sequences of 3D Protein Structure Mayumi Kamada +*, Sachi Kimura, Mikito Toda ‡, Masami Takata +, Kazuki Joe + + : Graduate School.

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Presentation on theme: "Clustering the Temporal Sequences of 3D Protein Structure Mayumi Kamada +*, Sachi Kimura, Mikito Toda ‡, Masami Takata +, Kazuki Joe + + : Graduate School."— Presentation transcript:

1 Clustering the Temporal Sequences of 3D Protein Structure Mayumi Kamada +*, Sachi Kimura, Mikito Toda ‡, Masami Takata +, Kazuki Joe + + : Graduate School of Humanities and Science, Information and Computer Sciences, Nara Women’s University ‡ : Departments of physics, Nara Women’s University

2 Outline Motivation Flexibility Docking Feature Extraction using Motion Analysis Conclusions and Future Work

3 Motivation Protein in biological molecules “Docking” –Transform oneself and Combine with other materials Prediction of Docking  Prediction of resultant functions

4 Existing Docking Simulation Predicted structures from docking structure A structure B Docking simulation PDB * Rigid structures * Protein Data Bank Fluctuating in living cells  Low prediction accuracy Docking simulation  Considering fluctuations

5 Flexibility Docking Predicted structures from docking structure A structure B Docking simulation PDB Flexibility handling Considering fluctuation of proteins in living cells Extraction of fluctuated structures Consideration of structural fluctuation of proteins

6 Flexibility Handling Flexibility handling MD Filter ・・・ output file Representative structure ・・・ Filtering Selection of representative structures from similar structures Molecular dynamic simulation(MD) Simulation of motion of molecules in a polyatomic system output file output file output file output file Representative structure Create filters by using RMSD

7 Filters using RMSD RMSD(Root Mean Square Deviation) –Comparison of the similarity of two structures Propose two filtering algorithms Maximum RMSD selection filter Below RMSD 1 Å deletion filter Result – Useful for the heat fluctuation condition –RMSD  Unification of topology information  Lapse of information Feature extraction focusing on Protein Motion not Structure

8 Capture Protein Motion MD ・・・ Wavelet transform ・・・ Clustering ・・・ Continuous wavelet transform: Morlet wavelet Clustering algorithm: Affinity Propagation Selection of representative motions Feature extraction The frequency may change momentarily!

9 Target Protein 1TIB –Residue length: 269 MD simulation –Software: AMBER –Simulation run time: 2 nsec –Result data files: 200 Space coordinates of Cα atoms

10 Singular Value Decomposition SVD(Singular value decomposition) Definition: Unitary matrix U: Left-singular vectors  Spatial motion Unitary matrix V: Right-singular vectors  Frequency fluctuation Matrix A: At time step i (t i ) Components column : Cα row : Frequency ★ matrix-size of A: 807×199

11 Singular Value Decomposition SVD(Singular value decomposition) Definition: Unitary matrix U: Left-singular vectors  Spatial motion Unitary matrix V: Right-singular vectors  Frequency fluctuation Matrix A: At time step i (t i ) Components column : Cα row : Frequency ★ matrix-size of A: 807×199

12 Verification of Reproducibility Singular values and principal components N=1 N=4 N=6 N=8 M=1 M=4 M=6 M=8 Left Singular Vectors (Spatial motion) Right Singular Vectors (Frequency fluctuation)

13 Reproducibility Using the eight principal components, the motion expressed by 199 components can be reproduced ! Almost adjusted !

14 Examination (1) Each of singular values (2)The first singular value –Accounted for about 30% over Expression of the original motion  Possible by the six singular values The first singular value is useful

15 Clustering Analysis Focus on the first principal component Definition –Similarities and Preference  Clustering by using the above values

16 Similarities (1) For left singular vectors –Difference of spatial directs  Inner products –Similarity : Same directionDifferential direction K ij :Value 10 Cα

17 Similarities (2) For right singular vectors –Difference between distributions of spectrum  Hellinger Distance –Similarity:

18 Clustering Method Affinity propagation(AP) –Brendan J. Frey and Delbert Dueck –“ Clustering by Passing Messages Between Data Points ”. Science 315, 972 – 976. 2007 –Obtain “Exemplars”: cluster centers Preference –Left singular vectors Average of similarities –Right singular vectors minimum of similarities -( maximum of similarities - minimum )

19 Similarities between Left Singular Vectors

20 Clustering of Left Singular Vectors

21 Similarities between Right Singular Vectors

22 Clustering of Right Singular Vectors

23 Discussions Each of motions –Spatial motion Repetition of several similar spatial motions in time variation –Frequency fluctuation Repetition of similar frequency patterns in time variation Relationship Characteristic Frequency fluctuation Group transition on spatial motion

24 Conclusions and Future Work Flexibility docking –Flexibility handling: MD and Filter Feature extraction based motion –Wavelet analysis –Analysis of motions –Clustering Future work –Collective motion –Relationship –Perform the docking simulation

25 Conclusions and Future Work Flexibility docking –Flexibility handling: MD and Filter Feature extraction based motion –Wavelet analysis –Analysis of motions –Clustering Future work –Collective motion –Relationship –Perform the docking simulation


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