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An efficient Docking Method to Study Protein Interactions

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Title: An efficient Docking Method to Study Protein Interactions


1
An efficient Docking Method to Study Protein
Interactions   Yuhua Duan1,2,3, Boojala Reddy2,
David Breslauer4 and Yiannis Kaznessis1,2  1Depart
ment of Chemical Engineering and Materials
Science, 2Digital Technology Center, 3Army
High-Performance Computing and Research Center,
University of Minnesota, Minneapolis, MN 55455
4Department of Bioengineering, University of
California San Diego
Results and Discussion
Residue Conservation Filter
Introduction
Homologous sequences Using the FASTA3 sequence
similarity search tool we obtained homologous
sequences from an annotated non redundant protein
sequence data base (SWALL). Homologous sequences
with less than 30 gaps in the sequence and
greater than 35 sequence identity to the parent
sequence were used for analysis. Evolutionary
Distance Evolutionary distance among the
sequences is calculated using the structure based
amino acid substitution matrix7. A similarity
score Sii for sequence i is calculated by summing
the identical substitution values of the residues
a and b from the substitution matrix M(a,b). An
evolutionary distance (EDij) between the two
sequences is calculated
  • As an example, Fig.1 gives scatter plots of the
    best 1000 ranked model structures versus the RMSD
    of the model to the experimental structure for
    complex 1TAB. Ranking based on the
    shape-complementarity (Fig.1(a)), pair-potential
    score functions (Fig.1(b)) and the minimized
    energy of all the model structures using CHARMM
    (Fig.1(c)).
  • It has been noted from our previous studies that
    a significantly high number of conserved
    positions are present in the naturally occurring
    and functionally important interacting regions of
    protein complexes5. However, in the case of
    antigen-antibody complexes we have observed that
    the region with non-conserved positions is
    involved in interaction. Antibodies are made with
    appropriate variability to interact with the
    antigen and this is not a naturally occurring
    protein-protein interaction, which explains our
    finding.
  • We have identified the top 8 (group 1) and top
    17 (group 2) of highly conserved and
    well-exposed surface residues as two groups, in
    each polypeptide chain of the interacting
    complex. These residues are given in Table 2 for
    1tabEI complex as an example. We have then
    counted the total number of group 1 and group 2
    positions in each modeled complex interface
    region.
  • In Table 3 we summarize results from the docking
    analysis for all the 6 systems.

We have employed docking calculations and
atomistic simulations to determine the structure
and the binding affinity of protein-protein
complexes. By exploring the interaction
interface, we find that the conservation
information can improve the docking rank. Here we
present our docking studies for five complex
structures. With this procedure, we are
participating in CPARI competition rounds 4 and
5.

Docking Procedure and Energy Minimization
  • We have chosen five protein complex structures
    (1TAB, 1EFU, 1FIN, 1JHL, 1KXQ) from the benchmark
    structures suggested by Chen et al1.
  • For each protein complex, we employ docking
    calculations using FTDOCK package2,3 to get
    10,000 possible complexes and we obtained the
    shape complementarity rank and pair potential
    rank.
  • For each possible complex, using CHARMM
    molecular mechanics simulations4 we minimized
    the side-chain structure, and obtained an
    estimate of the free energy for the generated
    complexes.
  • With the weights, we computed an overall rank for
    each docked complex.
  • Applied the residue conservation filter to
    improve the rank5,6.

Conclusion
Free Energy Filter
  • We described the considerable improvement in
    ranking of the FTDOCK generated model complexes
    using the residue conservation filter. Using
    conservation information we significantly reduce
    the number of docking solutions.
  • We also achieve ranking improvement for low RMSD
    structures, simply incorporating linear
    combinations of ranks of shape complementarity,
    pair potential, CHARMM energy, and conserved
    positions.
  • As we determine residue conservation in the
    functionally interacting natural proteins, such
    as enzyme-inhibitor complexes, we need to give
    higher ranks for the models with higher number of
    conserved positions in the interface region. In
    the case of unnatural interactions such as
    antigen-antibody complexes the interacting
    regions are highly variable, and we need to give
    higher ranks for the models with low numbers of
    conserved positions.

With some approximation, the free energy change
can be divided into several terms ?G ?Ges
?Gcav ?Gbonding ... ?Gcoulomb
?Gpol SskAk ?Gbonding The individual terms
can be calculated separately. ?Gcoulomb and
?Gpol are calculated by the Generalized Born
model with the Debye-Huckel approximation
Conservation Index of Residue Position As
described above evolutionary distances between
the reference sequence and its homologues were
used to calculate residue conservation index
(CIl) for each position l using amino acid
substitution matrix, similar to the amino acid
conservation used by Valdar and
Thornton8.Conservation Index (CIl) is a
weighted sum of all pair wise similarities
between all residues present at the position. The
CIl value is calculated in a given alignment and
takes a value in the range 0.0 to 1.0.
Where N is the number of homologous sequences in
the alignment si(l) and sj(l) are the amino
acids at the alignment position l of sequences si
and sj respectively ED(si) and ED(sj) are the
average evolutionary distance of s(i) and s(j)
from the remaining homologues. Mut(a,b) measures
the similarity among the amino acids a and b as
derived from amino acid substitution matrix
M(a,b) and defined as
Current and Future Work
  • We have used the group 1 and group 2 conservation
    positions as a filter to reduce the total number
    of docked models. We selected only the models,
    which have at least 4 of group 1 positions and 6
    of group 2 positions in the interface region of
    the enzyme-inhibitor model complexes. In the case
    of antigen-antibody complexes (1JHL, 1KXQ) we
    have reversed the selection, limiting to 2 or
    less group1 positions and 4 or less group2
    positions. With the conservation positions
    filter we reduced the number of complexes by
    about 55 to 88 (see Reduced column in Table 3).
  • In Fig. 2 we have plotted the RMSD versus model
    rank for the remaining models after using the
    conservation positions filter for 1TAB. In Table
    3 we summarized these results for all the six
    systems.
  • When we compare Fig 1 with Fig 2 and the
    corresponding rows in the Table 3, when filter is
    on we still select all of the low RMSD models
    plus we also obtain many additional low RMSD
    models. This can be clearly seen by comparing
    Fig. 1(a)-(d) with Fig. 2(a)-(d) of 1TAB. This
    shows that conservation filter not only decreases
    the number of possible docked structures but also
    improves the ranking of the low RMSD models.
  • Optimizing the weights for each rank property to
    come up a global rank by working on a larger data
    sample.
  • Dissecting the structures of known
    repressor-operator complexes we use
    computationally efficient simulations to
    calculate the binding affinity of
    repressor-operator complexes and identify the
    protein residues that play a central role in
    binding and are amenable to mutations.

where fGB(rij2aij2e-D)1/2, aij(aiaj)1/2,
Drij2/(2aij)2, ai is the effective Born radius
of atom i
  • The desolvation term SskAk can be obtained by
    calculating the solvent-accessible-surface-area
    Ak for each residue k and the optimizing weight
    sk
  • The bonding term ?Gbonding can be expressed with
    by using self-consistent Lennard-Jones 12-6
    parameters (e, s ) which have been used in AMBER
    and CHARMM software with the form

a,b are the pairs of amino acids at a given
alignment position l. M(a,b)low is the lowest
value in the substitution matrix and M(a,b)max is
the maximum value among all the possible
substitution pairs in that position. Thus the
Mut(a,b) takes a value in the range 0 to 1.
Solvent accessible contact area (SACA) values
were used to identify surface residues and buried
residues. We have identified the top 8 and 17
of highly conserved residues, which have solvent
accessibility greater than 25 of their total
surface area. As an example, in Table 2, we
listed the highly conserved surface residues of
complex 1TABs E and I chains.
.
References
  • Chen, R, et al., Proteins. 52, 88-91(2003).
  • Gabb, H.A. et al., J. Mol. Biol. 272,
    109-120(1997).
  • Moont, G. Et al., Proteins. 35, 364-373(1999).
  • Brooks, B.R., et al., J. Comp. Chem. 4,
    187-217(1983).
  • Reddy,B.V.B., et al., Submitted to ISMB 2004.
  • Duan, Y., et al., To be published.
  • Gonnet, G.H., et al, Science 256,
    1443-1445(1992).
  • Valdar, W.S., et al., Proteins. 42, 108-124(2001).
  • By studying the residue conservation in each
    sequence of heterocomplex structures of
    interacting proteins as a filter we improved our
    docking results.
  • From the binding affinity calculation, ?G -RT
    lnkb, we can get the binding constant kb for the
    protein-protein system. By substituting residues
    in certain proteins, combining with molecular
    simulation (CHARMM), we plan to obtain the free
    energy change (??G) which could be strongly
    related to mutation experiments (the work is in
    progress).

1FIN
Acknowledgements
1VIN
1HCL
This work is partially supported by the Army High
Performance Computing Center (AHPCRC) under the
auspices of the Department of the Army, Army
Research Laboratory (ARL) under contract number
DAAD19-01-2-0014. We also thanks the University
of Minnesota Digital Technology Center for
support.
docking
Docked Cyclin-Dependent Kinase 2 Complex(1FIN)
from 1HCL 1VIN, the smallest RMSD we get is
0.41A with rank 2.
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