computer-aided drug design Flashcards

1
Q

ligand-based methods

A
  • list of molecules known to have some activity
    • sometimes also inactive ones
  • develop QSAR models
  • screen QSARs and test for activity
  • evaluate best hits
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2
Q

QSAR

A
  • quantitative structure activity relationship
  • linear or 3D
  • equation connecting chemical structure to biological activity
  • uses experimental data and set of variables to describe structure
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3
Q

use of QSAR models

A
  • establish correlation between activity and properties of drugs
  • determine contributions of properties
  • predict activity of untested drug molecules
  • only work on congeneric datasets
    • common core and different substituents
    • not scaffold hopping
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4
Q

3D QSAR

A
  • superposed set of molecules
  • comfa program
  • use steric relationship between pharmocophore and ligand
  • correlation between 3D structure of set of molecules and activity
    • limited to similar molecules
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5
Q

cresset

A
  • determines where receptor-interacting features are likely to be
  • decide which ligand shape fits best
  • use in 3D QSAR to generate new molecule and evaluate
  • need shape of field and molecule
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6
Q

INDDEx

A
  • 3D QSAR method
  • series with known activity
    • fragment into substructures
    • ML to derive rules for QSAR
  • logic-based
    • molecule is active if:
      • positive charged centre
      • sp2 orbital nitrogen 5.2A away
    • better than equation
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7
Q

ligand based screening

A
  • use QSAR to find new active molecules
  • create QSAR for set with known activity
  • build chemical library of possible molecules for testing
  • take each QSAR in set and predict those likely to be high scoring
  • test for activity
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8
Q

ligand based screening

small molecule databases

A
  • ZINC
    • mathematical library of 20m molecules
    • 10m drug like (worth screening)
  • databases store:
    • molecule formula and 3D coordinates of lowest energy structure
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9
Q

ligand based screening

evaluation

A
  • training data and QSAR
  • from zinc take out molecules you’ve learnt on
    • distinct training and testing set
  • test best hits
    • top of list has good number of active molecules
    • is this by chance?
    • how many times better than by chance are these molecules here?
  • enrichment factor
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10
Q

DUD

A
  • database of useful decoys
  • 40 typical drug targets
    • each has <500 active molecules
    • 500 - 15,000 inactive decoys
  • provides challenging testing set
  • decoys:
    • similar MW and number of H bonds
    • focused and difficult to test on
    • if successful here the program is powerful
  • don’t waste time on easy areas
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11
Q

enrichment factor

A
  • (no of actives in top X%/total in top X%)/(total no actives/total no of molecules)
  • ie fraction of actives in top X% divided by fraction actives in whole set
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12
Q

ligand and receptor docking

A
  • when receptor structure known but ligand unknown
  • docking algorithm
  • can consider all locations or restrict to a binding site/pocket (e.g. enzyme)
    • ideally want to minimise number of molecules to test
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13
Q

docking algorithm

A
  • explore internal rotatable ligand bonds
  • may not always adopt lowest energy conformation once bound
  • sample range of favourable conformations upon docking
  • not lock and key
    • protein side chains can rotate
    • some algorithms alter main chain too
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14
Q

ligand receptor docking

workflow

A
  • get structural info
    • px/NMR
    • homology modelling (if high identity, esp at active site)
  • identify potential binding regions
  • generate ligand-protein conformations
  • identify preferred binding conformations
  • optimise conformations and score
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15
Q

docking

degrees of freedom

A
  • with rigid body docking:
    • 6 DoF
    • free movement around an axis
    • translaitonal and rotational freedom
  • flexible docking:
    • many more DoFs to search
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16
Q

FPOCKET

A
  • narrows down search by pcoket identification
    • most active sites on largest surface cleft
  • alpha spheres that touch 4 protein atoms
  • flatter surface gives larger sphere
  • search for cluster of spheres of the right size to identify pockets
  • put coordinates into server tp determine pocket location
17
Q

docking

scorig

A
  • different methods consider different features
    • VDW and electrostatics
    • hydrophobic effect
  • simple schemes based on no of contact between different atom types
    • e.g. methyl with methyl
    • derived empirically by counting how many times this occurs
    • favourable score if often
    • more lenient
18
Q

AutoDock vina

A
  • simplified scoring function
  • models steric, hydrophobic and H bonding
  • allows rotation of bonds in ligands and side chains
    • not main chain
  • dock in 10 mins
19
Q

virtual screening/docking

benchmarking

A
  • how many hgihs coring molecules are active
  • dock ligand to protein and create series of poses
  • each has associated score
  • test each one
    • how close to px structure is best scoring pose
    • how close are top 10 scoring poses
      • improves prediction quality
  • involve EFs
    • highest fold improvement at 0.5% EF
  • predict binding affinities
20
Q

docking

limitations of evaluation

A
  • target protein structure is in correct conformation for docking
    • don’t know the structure after docking
      • unrealistic scenario
  • overcome with blind trials
    • dock into closed conformation (bound to a different ligand)
    • evaluate correlation of predicted and actual binding affinity
  • still can’t cover all 1 billion molecules
    • 1 million/day
21
Q

known docked structures

process

A
  • solve structure series of protein and ligand docked
  • examine computationally with molecular graphics
  • detailed energy calculations
    • VDW, electrostatics
  • map pharmacophore to suggest substitutions
  • suggest ligand modifications to alter binding
  • explore different ligands with docking
  • e.g. gleevec (leukaemia)
22
Q

allosteric modulation

A
  • recent method of interest
  • drug in active site = orthosteric
  • but modulators can bind distal sites = allosteric
  • opens up drug space
  • high specificity
    • surface more variable
  • can modulate
23
Q

current status

A
  • chemical HTS
  • docked structures successfully solved
  • docking for suggesting inhibitors
  • ligand based screening complements