Certificate Course in Computer Aided Drug Design




Certificate Course in Computer Aided Drug Design

Computer Aided Drug Design

The most fundamental goal in drug design is to predict whether a given molecule will bind to a target and if so how strongly. Molecular mechanics or molecular dynamics is most often used to estimate the strength of the intermolecular interaction between the small molecule and its biological target. These methods are also used to predict the conformation of the small molecule and to model conformational changes in the target that may occur when the small molecule binds to it. Semi-empirical, ab initio quantum chemistry methods, or density functional theory are often used to provide optimized parameters for the molecular mechanics calculations and also provide an estimate of the electronic properties (electrostatic potential, polarizability, etc.) of the drug candidate that will influence binding affinity

Molecular mechanics methods may also be used to provide semi-quantitative prediction of the binding affinity. Also, knowledge-based scoring function may be used to provide binding affinity estimates. These methods use linear regression, machine learning, neural nets or other statistical techniques to derive predictive binding affinity equations by fitting experimental affinities to computationally derived interaction energies between the small molecule and the target.

Ideally, the computational method will be able to predict affinity before a compound is synthesized and hence in theory only one compound needs to be synthesized, saving enormous time and cost. The reality is that present computational methods are imperfect and provide, at best, only qualitatively accurate estimates of affinity. In practice it still takes several iterations of design, synthesis, and testing before an optimal drug is discovered. Computational methods have accelerated discovery by reducing the number of iterations required and have often provided novel structures.

Drug design with the help of computers may be used at any of the following stages of drug discovery:

1. hit identification using virtual screening (structure- or ligand-based design)

2. hit-to-lead optimization of affinity and selectivity (structure-based design, QSAR, etc.)

3. lead optimization of other pharmaceutical properties while maintaining affinity

In order to overcome the insufficient prediction of binding affinity calculated by recent scoring functions, the protein-ligand interaction and compound 3D structure information are used for analysis. For structure-based drug design, several post-screening analyses focusing on protein-ligand interaction have been developed for improving enrichment and effectively mining potential candidates:

· Consensus scoring

o Selecting candidates by voting of multiple scoring functions

o May lose the relationship between protein-ligand structural information and scoring criterion

· Cluster analysis

o Represent and cluster candidates according to protein-ligand 3D information

o Needs meaningful representation of protein-ligand interactions

Contents include:

  1. Introduction to basics concept of Drug Design

  2. Computer Aided Drug Design

  3. Types of SBDD

  4. Steps in CADD

  5. Pharmacophore Modelling

  6. QSAR

  7. Combinatorial Chemistry

The Hands on Experience to the CADD for SBDD can be obtained from Prescience In silico Pvt Ltd

SDBB, LBDD, Pharmacophore Modelling, QSAR, Combinatorial Chemistry

Url: View Details

What you will learn
  • To make the learner aware about basics of Computer Aided Drug Design (CADD)
  • To make the learner aware about basics of Structure Based Drug Design
  • To make the learner aware about basics of Databases used in Drug Design

Rating: 3.5

Level: All Levels

Duration: 2.5 hours

Instructor: Ateos Foundation of Science Education and Research


Courses By:   0-9  A  B  C  D  E  F  G  H  I  J  K  L  M  N  O  P  Q  R  S  T  U  V  W  X  Y  Z 

About US

The display of third-party trademarks and trade names on this site does not necessarily indicate any affiliation or endorsement of hugecourses.com.


© 2021 hugecourses.com. All rights reserved.
View Sitemap