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Advanced Internship in Computer-Aided Drug Design: Molecular Docking, QSAR, and Pharmacophore Modeling

INR ₹2,499.00 INR ₹24,999.00Price range: INR ₹2,499.00 through INR ₹24,999.00

To enable learners to computationally design and predict effective, safe drug molecules by targeting disease-specific biomolecules using modern Computer-Aided Drug Design (CADD) techniques.

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Aim

This advanced, hands-on internship is designed to train participants in core workflows of Computer-Aided Drug Design (CADD), focusing on molecular docking, QSAR (Quantitative Structure–Activity Relationship) modeling, and pharmacophore-based screening. You will learn how to prepare targets and ligands, run docking and interpret binding interactions, build QSAR models with meaningful descriptors, and design pharmacophore hypotheses—ending with a portfolio-ready mini-project aligned with real discovery pipelines.

Program Objectives

  • Build CADD Workflow Skills: Learn end-to-end computational screening pipelines used in early drug discovery.
  • Master Molecular Docking: Perform protein/ligand preparation, docking runs, and binding interaction analysis.
  • Develop QSAR Models: Generate descriptors, build ML-based QSAR models, validate them, and interpret results.
  • Learn Pharmacophore Modeling: Create ligand- and structure-based pharmacophores for virtual screening.
  • Improve Scientific Rigor: Understand validation, reproducibility, and reporting standards for CADD studies.
  • Hands-on Internship Output: Complete a capstone project (docking + QSAR/pharmacophore) with a final report.

Program Structure

Module 1: Drug Discovery Basics + Where CADD Fits

  • Drug discovery pipeline overview: target → hit → lead → optimization.
  • What CADD can accelerate (and what it cannot replace).
  • Key concepts: binding affinity, selectivity, drug-likeness, ADMET thinking.
  • Understanding datasets and confidence: crystal structures vs predicted models.

Module 2: Protein & Ligand Preparation (The Step Most People Get Wrong)

  • Fetching protein structures (PDB) and understanding chain/active-site selection.
  • Cleaning proteins: water removal decisions, missing residues, protonation, charges.
  • Ligand preparation: SMILES → 3D, tautomer/ionization states, energy minimization.
  • Defining binding sites: co-crystal ligands, pocket prediction, grid box setup.

Module 3: Molecular Docking Workflow

  • Docking fundamentals: scoring functions, search algorithms, pose generation.
  • Running docking experiments (single ligand and batch docking).
  • Pose selection: docking score vs interaction quality (how to avoid false confidence).
  • Interaction analysis: H-bonds, hydrophobic contacts, salt bridges, π-π stacking.

Module 4: Docking Validation & Post-Docking Filtering

  • Redocking and RMSD: checking if your docking is reliable.
  • Consensus docking (concept) and rescoring basics.
  • Filtering hits: Lipinski/Veber rules, PAINS alerts (concept), basic toxicity flags.
  • Prioritizing compounds for wet-lab testing: practical decision framework.

Module 5: QSAR Fundamentals (From Chemistry to Predictive Models)

  • What QSAR predicts and what it needs: curated data, consistent endpoints.
  • Data preprocessing: duplicates, outliers, activity transformations (pIC50).
  • Descriptors and fingerprints: 1D/2D/3D descriptors, Morgan fingerprints.
  • Train/validation/test split strategies and why random split can fail.

Module 6: Building QSAR Models (Hands-on ML)

  • Baseline models: Linear regression, Random Forest, SVR (concept + practice).
  • Classification vs regression QSAR: when to use which.
  • Model evaluation: R², RMSE, MAE, ROC-AUC (and what “good” really means).
  • Feature importance and interpretability: linking chemistry to predictions.

Module 7: Pharmacophore Modeling & Virtual Screening

  • Pharmacophore basics: H-bond donors/acceptors, hydrophobics, aromatic features.
  • Ligand-based pharmacophore: building from active compound sets.
  • Structure-based pharmacophore: using protein–ligand interactions.
  • Virtual screening workflow: pharmacophore filter → docking → rescoring.

Module 8: Mini-Pipeline Integration (How Real CADD is Done)

  • Designing a combined workflow: pharmacophore + docking + QSAR prioritization.
  • Hit ranking and shortlisting with multi-criteria decision-making.
  • Reproducible reporting: parameters, versions, and result traceability.
  • Writing a discovery-style report: methods, results, limitations, next steps.

Final Project

  • Select a target (enzyme/receptor) and a compound set (known actives + candidates).
  • Perform docking and interaction analysis to shortlist hits.
  • Build a QSAR model (or pharmacophore model) to prioritize candidates.
  • Deliverables: full workflow report + figures/tables + shortlist rationale.
  • Example projects: docking inhibitors for a cancer target, QSAR for antimicrobial activity, pharmacophore for kinase inhibitors.

Participant Eligibility

  • UG/PG/PhD students in Pharmacy, Biotechnology, Bioinformatics, Chemistry, or related fields
  • Researchers working in drug discovery, molecular biology, or computational biology
  • Professionals seeking practical upskilling in CADD workflows
  • Basic familiarity with chemistry/biomolecules is recommended (no heavy coding required)

Program Outcomes

  • Practical CADD Skills: Ability to run docking, QSAR, and pharmacophore workflows with confidence.
  • Better Scientific Judgment: Understand validation and avoid common interpretation mistakes.
  • Portfolio-Ready Project: A complete mini-project you can present for internships, jobs, or research.
  • Research Readiness: Improved ability to read and write CADD sections in papers and reports.

Program Deliverables

  • Access to e-LMS: Full access to internship materials, tutorials, and datasets (where applicable).
  • Hands-on Internship Work: Guided sessions for docking, QSAR, and pharmacophore modeling.
  • Project Guidance: Mentor support for target selection, workflow design, and final reporting.
  • Final Assessment: Certification after successful completion of assignments + capstone project.
  • e-Certification and e-Marksheet: Digital credentials provided upon successful completion.

Future Career Prospects

  • CADD Analyst / Computational Drug Discovery Associate
  • Bioinformatics & Cheminformatics Research Assistant
  • Molecular Modeling & Virtual Screening Associate
  • QSAR / ML Modeling Associate (Drug Discovery)
  • Pharmacophore & Structure-Based Design Support Roles

Job Opportunities

  • Pharma & Biotech: Drug discovery and preclinical R&D teams.
  • CROs: Computational chemistry and modeling support divisions.
  • Research Labs: Universities and institutes working on in-silico screening and design.
  • Healthtech Startups: AI/ML-driven drug discovery platforms and discovery support tools.
Category

E-LMS, E-LMS+Recordings, E-LMS+Recordings+Live