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QSD – Quadratic Shape Descriptors

QSD – Quadratic Shape Descriptors. Surface Matching and Molecular Docking Using Quadratic Shape Descriptors. Goldman BB, Wipke WT. Quadratic Shape Descriptors. 1. Rapid Superposition of Dissimilar Molecules Using Geometrically Invariant Surface Descriptors.

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QSD – Quadratic Shape Descriptors

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  1. QSD – Quadratic Shape Descriptors Surface Matching and Molecular Docking Using Quadratic Shape Descriptors Goldman BB, Wipke WT. Quadratic Shape Descriptors. 1. Rapid Superposition of Dissimilar Molecules Using Geometrically Invariant Surface Descriptors. J.Chem. Inf. Comput. Sci., 40 (3), 644 -658, 2000

  2. QSD idea Define a geometrical invariant representation of small surface sections (if two molecules have a similar surface region then its small parts are also similar) . In case a geometrical invariant allows to define a reference frame then the number of all superpositions is n*m. n (m) - number of invariants in the first (second) molecule Principle curvature and principle directions provide an elegant formalism that captures these notions.

  3. Reminder: curvature properties |k1| > |k2| > |k3| =0

  4. p (a surface curve) knormal curvature- curvature of normal section at p Principal Curvatures: kmax , kmin - normal curvatures with maximal-minimal values Principal Directions: λ max , λ min - tangent vectors associated with principal curvatures. kmax ≠ kmin → λ max ┴ λ min

  5. Molecular Surface Calculation • The preprocessing stage of the algorithm computes the molecular surface of a molecule by using the original Connolly MS program. Critical Points Calculation • The critical points of the surface as defined by Lin et al.40 are calculated. • These critical points are the center of gravity of each face of the Connolly surface projected back onto the surface.

  6. Critical Points • To reduce the number of the critical points used to describe a molecule, the critical points associated with the toroidal sections (light purple) of the surface are not used.

  7. S = {p1, ..., pn}, where p = (v, n) is composed of the surface point location vin three-dimensional space and nis the unit vector normal to the surface at p.v C = {c1, ..., cm} - set of critical points, where ci in S Surface neighborhood around c:

  8. N is transformed s.t. : c.v = (0,0,0) c.n = (0,0,1) Redefine points N: Hessian matrix (second fundamental form): Local principal curvatures and directions are eigenvalues and eigenvectors, respectively, of the II matrix.

  9. Calculate matrix II by fitting the points of N to the second order part of the Taylor expansion of w: w(u,v) ~ Notice: w(0,0)=0 and so the first derivatives.

  10. The least-squares estimator of is given by Finally, two right-handed orthogonal coordinate systems can be constructed from the local principal curvature directions:

  11. Principal curvature directions are in cyan.

  12. Shape Index (κ min, λ min) and (κ max, λmax) represent the local principal curvatures and directions of the surface patch.The shape index represents the degree of concavity of a local surface section and is defined by :

  13. Shape Index Similarity • The shape index provides a convenient mechanism for determining the similarity between two section of surface. • The Similarity measure for two surface patches with shape indexes S1 and S2 is : 1.0 – shapes are identical 0.0 – shapes are exactly opposite

  14. Total Shape Similarity Score Y • The score is simply a summation of the individual similarity scores for each pair of matching descriptors.ML = {ml0,…,mln}, where ml = (ri,lj) indicates that ith QSD on the receptor matchs the jth QSD on the ligand.S(ml.x) represent the value of the shape index S for the match list QSD ml.x.

  15. QSD Preprocessing Algorithm. Input:M Coordinates of Moleculeρ Distance parameter Variables:A Alignment Matrix S Shape Index Algorithm: Create molecular surface for molecule M the Connolly algorithm. Calculate critical points C = {c1,…,cm } of surface using Lin’s method. for each c  C (c,S,A)  Create QSD at point c with distance range ρ store (c,S,A) end

  16. Surface matching phase • This phase of the algorithm commences with the input of the ligand and proteins atomic coordinates along with the set of quadratic shape descriptors approximating threir molecular surface. • The surface of the active site has been inverted, and shape complementary between the ligand and receptor surfaces is referred to as shape similarity. • An additional input parameter, the shape filter ΔS, is used as a filter to determine the extant of similarity between two surface sections.

  17. Surface matching phase Input:ML,MR Coordinates of Ligand and receptorQL,QR QSD set describing Ligand and receptorΔS Shape Filter Algorithm:for each ql QL for each qr  QR if (|ql.S – qr.S|)  ΔS) Dock QL to QR as dictated by alignment of ql to qr if (sufficient QSDs from QR superimpose on QSD from QL) Dock ML onto MR as dictated by alignment of ql onto qr if (acceptable steric clash* between MR and transformed ML) store docking end if end if end if end forend for *Steric collisions are quickly evaluated usinga three-dimensional grid-based procedure.

  18. Scoring The scoring module uses three types of scoring routines to prioritize the computed dockings: • Empirical estimate of Δgbinding (using Bohm’s algorithm). • Measure of shape similarity Υ. • Clustering algorithm.

  19. Matching & Scoring Phase Complexity • Let n,m represent the number of QSDs used to describe the shape of the target molecule and the moving molecule. • The total number of the dockings calculated O(mn). • For each docking calculated, all of the QSDs in the moving set are transformed, matched with QSDs in the target set and then the surface similarity score assessed. • The total complexity of the matching phase is thus O(nm2).

  20. High level flow chart for QSD docking algorithm Create Molecular Surface for Ligand and Receptor

  21. High level flow chart for QSD docking algorithm Create Molecular Surface for Ligand and Receptor Calculate Molecular Surface Critical Points

  22. High level flow chart for QSD docking algorithm Create Molecular Surface for Ligand and Receptor Calculate Molecular Surface Critical Points Preprocessing Calculate Quadratic Shape Descriptors

  23. High level flow chart for QSD docking algorithm Create Molecular Surface for Ligand and Receptor Calculate Molecular Surface Critical Points Preprocessing Calculate Quadratic Shape Descriptors Dock Ligands To Receptor Using QSD

  24. High level flow chart for QSD docking algorithm Create Molecular Surface for Ligand and Receptor Calculate Molecular Surface Critical Points Preprocessing Calculate Quadratic Shape Descriptors Dock Ligands To Receptor Using QSD Object Recognition Score Successful Dockings

  25. Preprocessing Times

  26. Crystallographic Scores

  27. QSD Matching Results

  28. QSD Docking Results on Ligand Into Protein and Comparison With Cocrystalized Structure Position

  29. Comparison of QSDock a Times to DOCK2 and Geometric Hashing (GH)

  30. Conclusion • QSDock is capable of reproducing the crystallographically determined orientations using only shape. • QSD for shape-based docking dretically reduces the computational complexity of the docking problem.

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