Title: Protein Classification
1Protein Classification
2PDB Growth
New PDB structures
3Protein classification
- Number of protein sequences grow exponentially
- Number of solved structures grow exponentially
- Number of new folds identified very small (and
close to constant) - Protein classification can
- Generate overview of structure types
- Detect similarities (evolutionary relationships)
between protein sequences
SCOP release 1.67, Class folds superfamilies families
All alpha proteins 202 342 550
All beta proteins 141 280 529
Alpha and beta proteins (a/b) 130 213 593
Alpha and beta proteins (ab) 260 386 650
Multi-domain proteins 40 40 55
Membrane cell surface 42 82 91
Small proteins 72 104 162
Total 887 1447 2630
Morten Nielsen,CBS, BioCentrum, DTU
4Protein structure classification
Protein fold
Protein superfamily
Protein family
Morten Nielsen,CBS, BioCentrum, DTU
5Structure Classification Databases
- SCOP
- Manual classification (A. Murzin)
- scop.berkeley.edu
- CATH
- Semi manual classification (C. Orengo)
- www.biochem.ucl.ac.uk/bsm/cath
- FSSP
- Automatic classification (L. Holm)
- www.ebi.ac.uk/dali/fssp/fssp.html
Morten Nielsen,CBS, BioCentrum, DTU
6Major classes in SCOP
- Classes
- All alpha proteins
- Alpha and beta proteins (a/b)
- Alpha and beta proteins (ab)
- Multi-domain proteins
- Membrane and cell surface proteins
- Small proteins
-
Morten Nielsen,CBS, BioCentrum, DTU
7All a Hemoglobin (1bab)
Morten Nielsen,CBS, BioCentrum, DTU
8All b Immunoglobulin (8fab)
Morten Nielsen,CBS, BioCentrum, DTU
9a/b Triosephosphate isomerase (1hti)
Morten Nielsen,CBS, BioCentrum, DTU
10ab Lysozyme (1jsf)
Morten Nielsen,CBS, BioCentrum, DTU
11Families
- Proteins whose evolutionarily relationship is
readily recognizable from the sequence - (gt25 sequence identity)
- Families are further subdivided into Proteins
- Proteins are divided into Species
- The same protein may be found in several species
Fold
Superfamily
Family
Proteins
Morten Nielsen,CBS, BioCentrum, DTU
12Superfamilies
- Proteins which are (remote) evolutionarily
related - Sequence similarity low
- Share function
- Share special structural features
- Relationships between members of a superfamily
may not be readily recognizable from the sequence
alone
Fold
Superfamily
Family
Proteins
Morten Nielsen,CBS, BioCentrum, DTU
13Folds
- Proteins which have gt50 secondary structure
elements arranged the in the same order in the
protein chain and in three dimensions are
classified as having the same fold - No evolutionary relation between proteins
-
Fold
Superfamily
Family
Proteins
Morten Nielsen,CBS, BioCentrum, DTU
14Protein Classification
- Given a new protein, can we place it in its
correct position within an existing protein
hierarchy? - Methods
- BLAST / PsiBLAST
- Profile HMMs
- Supervised Machine Learning methods
Fold
Superfamily
new protein
?
Family
Proteins
15PSI-BLAST
- Given a sequence query x, and database D
- Find all pairwise alignments of x to sequences in
D - Collect all matches of x to y with some minimum
significance - Construct position specific matrix M
- Each sequence y is given a weight so that many
similar sequences cannot have much influence on a
position (Henikoff Henikoff 1994) - Using the matrix M, search D for more matches
- Iterate 14 until convergence
Profile M
16Profile HMMs
Protein profile H
- Each M state has a position-specific pre-computed
substitution table - Each I and D state has position-specific gap
penalties - Profile is a generative model
- The sequence X that is aligned to H, is thought
of as generated by H - Therefore, H parameterizes a conditional
distribution P(X H)
17Classification with Profile HMMs
Fold
Superfamily
Family
new protein
?
18Classification with Profile HMMs
- How generative models work
- Training examples ( sequences known to be members
of family ) positive - Model assigns a probability to any given protein
sequence. - The sequence from that family yield a higher
probability than that of outside family. - Log-likelihood ratio as score
- P(X H1) P(H1) P(H1X)
P(X) P(H1X) - L(X) log -------------------------- log
--------------------- log -------------- - P(X H0) P(H0)
P(H0X) P(X) P(H0X)
19Generation of a protein by a profile HMM
- P(X H) ??
- To generate sequence x1xn by profile HMM H
- We will find the sum probability of all possible
ways to generate X - Define
- AjM(i) probability of generating x1xi and
ending with xi being emitted from Mj - AjI(i) probability of generating of x1xi and
ending with xi being emitted from Ij - AjD(i) probability of generating of x1xi and
ending in Dj - (xi is the last character emitted before Dj)
20Alignment of a protein to a profile HMM
- AjM(i) eM(j)(xi) Aj-1M(i 1) log
aM(j-1)M(j) - Aj-1I(i 1) log aI(j-1)M(j)
- Aj-1D(i 1) log aD(j-1)M(j)
- AjI(i) eI(j)(xi) AjM(i 1) log
aM(j)I(j) - AjI(i 1) log aI(j)I(j)
- AjD(i 1) log aD(j)I(j)
- AjD(i) Aj-1M(i) log aM(j-1)D(j)
- Aj-1I(i) log aI(j-1)D(j)
- Aj-1D(i) log aD(j-1)D(j)
21Generative Models
22Generative Models
23Generative Models
24Generative Models
25Generative Models
26Discriminative Methods
Instead of modeling the process that generates
data, directly discriminate between classes
- More direct way to the goal
- Better if model is not accurate
27Discriminative Models -- SVM
- If x1 xn training examples,
- sign(?i?ixiTx) decides where x falls
- Train ?i to achieve best margin
margin
Decision Rule red vTx gt 0
v
Large Margin for v lt 1 ? Margin of 1 for small
v
28Discriminative protein classification
- Jaakkola, Diekhans, Haussler, ISMB 1999
- Define the discriminating function to be
- L(X) ?Xi?H1 ?i K(X, Xi) - ?Xj?H0 ?j K(X, Xj)
-
- We decide X ? family H whenever L(X) gt 0
- For now, lets just assume K(.,.) is a similarity
function - Then, we want to train ?i so that this classifier
makes as few mistakes as possible in the new data - Similarly to SVMs, train ?i so that margin is
largest for 0 ? ?i ? 1
29Discriminative protein classification
- Ideally, for training examples, L(Xi) 1 if Xi ?
H1, L(Xi) ? -1 otherwise - This is not always possible softer constraints
are obtained with the following objective
function - J(?) ?Xi?H1 ?i(2 - L(Xi)) - ?Xj?H0 ?j(2
L(Xj)) - Training for Xi ? H, try to make L(Xi) 1
- 1 - L(Xi) ?i K(Xi, Xi)
- ?i ? ----------------------------- with minimum
allowable value 0, and maximum 1 - K(Xi, Xi)
- Similarly, for Xi ? H0 try to make L(Xi) -1
30The Fisher Kernel
- The function K(X, Y) compares two sequences
- Acts effectively as an inner product in a
(non-Euclidean) space - Called Kernel
- Has to be positive definite
- For any X1, , Xn, the matrix K Kij K(Xi, Xj)
is such that -
- For any X ? Rn, X ? 0, XT K X gt 0
- Choice of this function is important
- Consider P(X H1, ?) sufficient statistics
- How many expected times X takes each
transition/emission
31The Fisher Kernel
- Fisher score
- UX ?? log P(X H1, ?)
- Quantifies how each parameter contributes to
generating X - For two different sequences X and Y, can compare
UX, UY - D2F(X, Y) ½ ?2 UX UY2
- Given this distance function, K(X, Y) is defined
as a similarity measure - K(X, Y) exp(-D2F(X, Y))
- Set ? so that the average distance of training
sequences Xi ? H1 to sequences Xj ? H0 is 1
Question Is partial derivative larger when X
uses a given parameter ?I more or less often?
Question Is partial derivative larger when a
given parameter ?I is larger or smaller?
32The Fisher Kernel
- In summary, to distinguish between family H1 and
(non-family) H0, define - Profile H1
- UX ?? log P(X H1, ?) (Fisher score)
- D2F(X, Y) ½ ?2 UX UY2 (distance)
- K(X, Y) exp(-D2F(X, Y)), (akin to dot
product) - L(X) ?Xi?H1 ?i K(X, Xi) ?Xj?H0 ?j K(X, Xj)
- Iteratively adjust ? to optimize
- J(?) ?Xi?H1 ?i(2 - L(Xi)) ?Xj?H0 ?j(2
L(Xj))
33The Fisher Kernel
- If a given superfamily has more than one profile
model, - Lmax(X) maxi Li(X) maxi (?Xj?Hi ?j K(X, Xj)
?Xj?H0 ?j K(X, Xj))
Superfamily
Family
34Benchmarks
- Methods evaluated
- BLAST (Altschul et al. 1990 Gish States 1993)
- HMMs using SAM-T98 methodology (Park et al. 1998
Karplus, Barrett, Hughey 1998 Hughey Krogh
1995, 1996) - SVM-Fisher
- Measurement of recognition rate for members of
superfamilies of SCOP (Hubbard et al. 1997) - PDB90 eliminates redundant sequences
- Withhold all members of a given SCOP family
- Train with the remaining members of SCOP
superfamily - Test with withheld data
- Question Could the method discover a new family
of a known superfamily?
O. Jangmin
35O. Jangmin
36Other methods
- WU-BLAST version 2.0a16 (Althcshul Gish 1996)
- PDB90 database was queried with each positive
training examples, and E-values were recorded. - BLASTSCOP-only
- BLASTSCOPSAM-T98-homologs
- Scores were combined by the maximum method
- SAM-T98 method
- Same data and same set of models as in the
SVM-Fisher - Combined with maximum methods
O. Jangmin
37Results
- Metric the rate of false positives (RFP)
- RFP for a positive test sequence the fraction
of negative test sequences that score as good of
better than positive sequence - Result of the family of the nucleotide
triphosphate hydrolases SCOP superfamily - Test the ability to distinguish 8 PDB90 G
proteins from 2439 sequences in other SCOP folds
O. Jangmin
38Table 1. Rate of false positives for G proteins
family. BLAST BLASTSCOP-only, B-Hom
BLASTSCOPSAMT-98-homologs, S-T98 SAMT-98, and
SVM-F SVM-Fisher method
O. Jangmin
39(No Transcript)
40QUESTION
- Running time of Fisher kernel SVM
- on query X?