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Similarity Methods C371 Fall 2004.

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Presentation on theme: "Similarity Methods C371 Fall 2004."— Presentation transcript:

1 Similarity Methods C371 Fall 2004

2 Limitations of Substructure Searching/3D Pharmacophore Searching
Need to know what you are looking for Compound is either there or not Don’t get a feel for the relative ranking of the compounds Output size can be a problem

3 Similarity Searching Look for compounds that are most similar to the query compound Each compound in the database is ranked In other application areas, the technique is known as pattern matching or signature analysis

4 Similar Property Principle
Structurally similar molecules usually have similar properties, e.g., biological activity Known also as “neighborhood behavior” Examples: morphine, codeine, heroin Define: in silico Using computational techniques as a substitute for or complement to experimental methods

5 Advantages of Similarity Searching
One known active compound becomes the search key User sets the limits on output Possible to re-cycle the top answers to find other possibilities Subjective determination of the degree of similarity

6 Applications of Similarity Searching
Evaluation of the uniqueness of proposed or newly synthesized compounds Finding starting materials or intermediates in synthesis design Handling of chemical reactions and mixtures Finding the right chemicals for one’s needs, even if not sure what is needed.

7 Subjective Nature of Similarity Searching
No hard and fast rules Numerical descriptors are used to compare molecules A similarity coefficient is defined to quantify the degree of similarity Similarity and dissimilarity rankings can be different in principle

8 Similarity and Dissimilarity
“Consider two objects A and B, a is the number of features (characteristics) present in A and absent in B, b is the number of features absent in A and present in B, c is the number of features common to both objects, and d is the number of features absent from both objects. Thus, c and d measure the present and the absent matches, respectively, i.e., similarity; while a and b measure the corresponding mismatches, i.e., dissimilarity.” (Chemoinformatics; A Textbook (2003), p. 304)

9 2D Similarity Measures Commonly based on “fingerprints,” binary vectors with 1 indicating the presence of the fragment and 0 the absence Could relate structural keys, hashed fingerprints, or continuous data (e.g., topological indexes that take into acount size, degree of branching, and overall shape)

10 Tanimoto Coefficient Tanimoto Coefficient of similarity for Molecules A and B: SAB = c _ a + b – c a = bits set to 1 in A, b = bits set to 1 in B, c = number of 1 bits common to both Range is 0 to 1. Value of 1 does not mean the molecules are identical.

11 Similarity Coefficients
Tanimoto coefficient is most widely used for binary fingerprints Others: Dice coefficient Cosine similarity Euclidean distance Hamming distance Soergel distance

12 Distance Between Pairs of Molecules
Used to define dissimilarity of molecules Regards a common absence of a feature as evidence of similarity

13 When is a distance coefficient a metric?
Distance values must be zero or positive Distance from an object to itself must be zero Distance values must be symmetric Distance values must obey the triangle inequality: DAB ≤ DAC + DBC Distance between non-identical objects must be greater than zero. Dissimilarity = distance in the n-dimensional descriptor space

14 Size Dependency of the Measures
Small molecules often have lower similarity values using Tanimoto Tanimoto normalizes the degree of size in the denominator: SAB = c _ a + b – c

15 Other 2D Descriptor Methods
Similarity can be based on continuous whole molecule properties, e.g. logP, molar refractivity, topological indexes. Usual approach is to use a distance coefficient, such as Euclidean distance.

16 Maximum Common Subgraph Similarity
Another approach: generate alignment between the molecules (mapping) Define MCS: largest set of atoms and bonds in common between the two structures. A Non-Polynomial- (NP)-complete problem: very computer intensive; in the worst case, the algorithm will have an exponential computational complexity Tricks are used to cut down on the computer usage

17 Maximum Common Subgraph

18 Reduced Graph Similarity
A structure’s key features are condensed while retaining the connections between them Cen ID structures with similar binding characteristics, but different underlying skeletons Smaller number of nodes speeds up searching

19 3D Similarity Aim is often to identify structurally different molecules 3D methods require consideration of the conformational properties of molecules

20 Tanimoto Coefficient to Find Compounds Similar to Morphine

21 3D: Alignment-Independent Methods
Descriptors: geometric atom pairs and their distances, valence and torsion angles, atom triplets Consideration of conformational flexibility increases greatly the compute time Relatively fewer pharmacophoric fingerprints than 2D fingerprints Result: Low similarity values using Tanimoto

22 Pharmacophore A structural abstraction of the interactions between various functional group types in a compound Described by a spatial representation of these groups as centers (or vertices) of geometrical polyhedra, together with pairwise distances between centers

23 3D: Alignment Methods Require consideration of the degrees of freedom related to the conformational flexibility of the molecules Goal: determine the alignment where similarity measure is at a maximum

24 3D: Field-Based Alignment Methods
Consideration of the electron density of the molecules Requires quantum mechanical calculation: costly Property not sufficiently discriminatory

25 3D: Gnomonic Projection Methods
Molecule positioned at the center of a sphere and properties projected on the surface Sphere approximated by a tessellated icosahedron or dodecahedron Each triangular face is divided into a series of smaller triangles

26 Finding the Optimal Alignment
Need a mechanism for exploring the orientational (and conformational) degrees of freedon for determining the optimal alignment where the similarity is maximized Methods: simplex algorithm, Monte Carlo methods, genetic alrogithms

27 Evaluation of Similarity Methods
Generally, 2D methods are more effective that 3D 2D methods may be artificially enhanced because of database characteristics (close analogs) Incomplete handling of conformational flexibility in 3D databases Best to use data fusion techniques, combining methods

28 For additional information . . .
See Dr. John Barnard’s lecture at:


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