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Coarse and Reliable Geometric Alignment for Protein Docking Yusu Wang Stanford University Joint Work with P. K. Agarwal, P. Brown, H. Edelsbrunner, J.

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Presentation on theme: "Coarse and Reliable Geometric Alignment for Protein Docking Yusu Wang Stanford University Joint Work with P. K. Agarwal, P. Brown, H. Edelsbrunner, J."— Presentation transcript:

1 Coarse and Reliable Geometric Alignment for Protein Docking Yusu Wang Stanford University Joint Work with P. K. Agarwal, P. Brown, H. Edelsbrunner, J. Rudolph Duke University

2 Motivation How proteins interact with each other? Docking problem Predict docking configuration

3 Challenges Physical and biochemical mechanism Binding sites? Energy function: hydrophobicity, electrostatics, etc High complexity Thousands of atoms High dimension, flexibility

4 Coarse alignment Rigid molecules Small sets of candidates Refinement Flexibility, chemical information Two-step Approach

5 Coarse Alignment Goal A relatively small set of possible configurations

6 not too tight, global fitting … Lock and Key Principle … To use an image, I would say that enzyme and glycoside have to fit into each other like a lock and a key, in order to exert a chemical effect on each other… --- Emil Fischer, 1894 Geometric complementary at a coarse level

7 Coarse Alignment Algorithm Capture features (protrusions, cavities) Align these features

8 Capture Features Previous work: f eature points Connolly function [Connolly, 83] Our work: feature pairs Describe more global features Specify importance

9 Capture Feature Pairs Height function as example Extend to all directions -- Elevation function

10 k-legged Maxima of Elevation 1-legged2-legged3-legged4-legged [Agarwal, Edelsbrunner, Harer, Wang, SOCG’04]

11 Examples 2-legged4-legged3-legged

12 3-Legged Maximum

13 In Short : Each maximum captures a feature on surface Four types of features Collect feature pairs: Any two points within the same maximum A concise representation of meaningful features!

14 Surface Representation using Elevation

15 Coarse Alignment Algorithm Describe protrusions and cavities (via feature pairs) Align features

16 PairMatch Alg: Take a feature pair from each set Align two feature pairs, get T Rank T ’s by their scores Output ranked sequence of configurations Align Features

17 Reassembly of Known Complexes A test set of 25 protein complexes CoarseAlign: take top 100 ranked coarse alignments Refinement: using local improvement (Choi et al.)

18 Docking Results (CoarseAlign) pdb-idRankRMSD (Å) 1BRS11.59 1A2222.75 2PTC14.55 1MEE11.33 1CHO12.71 1JLT83.64 1CSE22.21 3SGB13.21 3HLA11.87

19 Docking Results (Refinement) pdb-idRank.refineRMSD.refine 1BRS10.54 1A2211.08 2PTC10.66 1MEE10.57 1CHO10.99 1JLT11.57 1CSE10.82 3SGB12.24 3HLA10.78

20 Overall 23/25 return a near-native configuration w/o false positives

21 Unbound Protein Docking Docking benchmark by [Chen et al.’03] Take 49 out of 59 complexes

22 Sample Results Top 2,000All outputs pdb-idRMSD(Å)HitsRMSD (Å)Size 1ACB3.70201.7514,426 1AVW5.51 85.4223,565 1BRC4.66354.6612,770 1BRS1.60 7 11,607 1CGI3.04 5 10,135 1CHO2.35272.3511,815 1CSE3.15 72.7421,068 1DFJ6.44 2 35,231 1MAH2.78 4 25,402

23 More Results Output size: All < ~50,000, most < 25,000 Quality Among top 2,000 ranked configurations 38/49 produce at least one with < 6Å Among all outputs 47/49 produce at least one with < 6Å

24 Summary Elevation function -> meaningful features Useful coarse alignments Combine with refinement for the unbound case

25 Sample proteins 1A221JLT3HLA

26 Related Docking Packages FTDock, DOT, ZDock: FFT-based Shape complementary, electrostatics HEX: Fourier correlation GRAMM: FFT (focus on low resolution docking) BiGGER PPD: Geometric Hashing


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