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Homology Modelling

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Title: Homology Modelling


1
  • Tutorial
  • Homology Modelling

2
A Brief Introduction to Homology Modeling
3
Sequence-Structure-Function Relationships
  • Proteins of similar sequences fold into similar
    structures and perform similar biological
    functions.
  • The protein sequence has the intrinsic
    information to encode the protein structure.

4
The Noble Prize in Chemistry 1972
  • Christian B Anfinsen
  • "for his work on ribonuclease, especially
    concerning the connection between the amino acid
    sequence and the biologically active
    conformation"

5
The protein sequence is sufficient to specify its
3D structure
  • From Nobel Lecture, December 11, 1972, by
    Christian Anfinsen

6
Sequence-gtStructure-gtFunction
  • Widespread Automated DNA sequencing gt more
    sequence data than structure data
  • Semi-Automated pipeline of structure
    determination is still not widespread.
  • Nevertheless, structure is more conserved than
    sequence.
  • Sequence homologs gt structural homologs
  • See Chapter 9, Baxevanis and Ouellette 3rd edn.

7
Protein Structure Prediction vs Experimental
Determination
  • From Chapter 9, Bryan Bergeron, Bioinformatics
    Computing, 2003 Pearson Education, Inc.

8
Structure Prediction from sequence
  1. Homology (or comparative) modelling
  2. Threading
  3. Ab initio calculationsHomology modelling is
    most accurate and powerful

9
What is Homology Modeling?
  • Homology modeling also known as comparative
    modeling uses homologous sequences with known 3D
    structures for the modelling and prediction of
    the structure of a target sequence.
  • Homology modeling is one of the most best
    performing prediction methods that gives
    accurate predicted models.

10
How is Homology Modeling done
  • Multistep process involves many steps such as
  • Sequence alignment of target/query/unknown
    protein sequence to homologous sequence with a
    known structure
  • structure modification of backbone
  • side chain replacements
  • Energy minimisation for refinement of structural
    model
  • Validation of model with visual inspection and etc

11
Why Homology Modeling?
  • The number of protein structures solved so far
    are fewer than the number of genes known.
  • Proteins of biological interest with their
    orthologous proteins solved by X-ray
    crystallography or NMR can be modeled.
  • Homology modeling is an important method used to
    predict the structures of membrane proteins, ion
    channels, transporters that are large and
    difficult to crystallize.
  • Examples GPCR (G Protein-coupled receptor),
    cytochrome P450 etc.

12
Overview of the process of Homology Modeling
  • A target sequence (the structure to be predicted)
  • Identify the homologous sequence with known 3D as
    template
  • Using homology modeling software such as Modeller
    for structure prediction (from the Sali Lab)
  • Model evaluation and refinement

13
Pre-Modeling Stage Template Identification
  • Target sequence in FASTA format as input
  • Blastp against PDB
  • Identify proteins with good hit
  • Pairwise or multiple sequence alignment
  • Further editing the alignment results
  • Realign and identify the good structural
    template

14
Pre-Modeling Stage Preparing the Input Files
for Modeller
  • PDB files for structural templates is required
  • The PIR file from the alignment results
  • The script file model.top to execute the Modeller
    program(latest versions use Python scripts)

15
In the Heart of Modeller
  • From the Modeller manual

16
Evaluation of Predicted ModelGarbage in-Garbage
out
  • The predicted model can be superimposed with
    known structure determined by experiment
  • http//wishart.biology.ualberta.ca/SuperPose/
  • The predicted model is normally evaluated by root
    mean square deviation (RMSD)

17
  • From http//swissmodel.expasy.org//course/text/cha
    pter6.htm

18
Calculating RMSD
  • N number of atoms, d the distance in Angstrom
    between corresponding atoms in the experimental
    and predicted protein structures.
  • From Chapter 9, Bryan Bergeron, Bioinformatics
    Computing, 2003 Pearson Education, Inc.

19
  • Some Rule of Thumb for Structural Modelling
  • Proteins that share 35 to 50 sequence identity
    with their templates, will generally deviate by
    1.0 to 1.5 Å from their experimental counter
    parts.
  • Crystallographic structures of identical proteins
    can vary not only because of experimental errors
    and differences in data collection conditions and
    refinement, but also because of different crystal
    lattice contacts and the presence or absence of
    ligands.

20
Quality of Model
  • The correctness of a model is essentially
    determined by the quality of the sequence
    alignment used to identify the template.
  • If the sequence alignment is wrong in some
    regions, then the spatial arrangement of the
    residues in this portion of the model will be
    incorrect.

21
Viewing the Model
  • The predicted model is saved in PDB format that
    can be viewed by molecular visualizing software
    such as Rasmol, PyMol, MolMol, Sybyl etc.
  • Viewing is an essential step to validate the
    quality of the predicted model.
  • In this practical, Rasmol is used to view the
    predicted structure.

22
Model Refinement
  • Gaps in sequence alignment represent
    insertion/deletion regions of target. Loop
    modeling is used to refine these regions (not
    cover in this practical)
  • The predicted model can be further refined by
    energy minimization to remove unfavourable
    non-bonded contacts with force fields such as
    CHARMM, AMBER or GROMOS etc (not covered in this
    practical)

23
Web-Based Homology Modeling The SWISS-MODEL
Server
  • The aim of the Internet-based SWISS-MODEL server
    is to provide a comparative protein modelling
    tool independent from expensive computer hardware
    and software.
  • http//www.expasy.ch/swissmod/SWISS-MODEL.html

24
Steps involved in SwissModel http//swissmodel.exp
asy.org/
  1. Take target sequence of unknown structure
  2. Using BLAST to select closest homolog with known
    structure as structural template
    http//swissmodel.expasy.org/SM_Blast.html
  3. Insert target sequence and homologous sequence to
    Web service http//swissmodel.expasy.org/SM_FIRST.
    html
  4. Results will be emailed back to you.
  5. Warning Structure needs to be analysed and
    validated

25
Simple Homology Modelling using Modeller
  1. Take target sequence of unknown structure
  2. Using BLAST to select closest homolog with known
    structure.
  3. Using Clustalx or Jalview to do pairwise
    alignment between target sequence and structural
    homolog and manual adjustment
  4. Inspection of missing structural features in
    structural homolog
  5. Preparation of alignment file align.pir
  6. Use Modeller7v7 software (http//salilab.org/model
    ler/) to do the homology modelling

26
Structure Validation
  • Visual inspection
  • Minimise torsion angles in disallowed regions of
    Ramachandran plots
  • Maximised hydrogen bonding
  • Minimised exposed hydrophobic residues
  • Packing etc.
  • Analysis e.g. run Procheck (http//www.biochem.
    ucl.ac.uk/roman/procheck/procheck.html), VADAR,
    Verify3D etc
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