PORTALE DELLA DIDATTICA

PORTALE DELLA DIDATTICA

PORTALE DELLA DIDATTICA

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Rational Drug Design: Principles and Applications

01UCBXC, 01UCBMV

A.A. 2026/27

Course Language

Inglese

Degree programme(s)

Master of science-level of the Bologna process in Ingegneria Biomedica - Torino

Course structure
Teaching Hours
Lecturers
Teacher Status SSD h.Les h.Ex h.Lab h.Tut Years teaching
Co-lectures
Espandi

Context
SSD CFU Activities Area context
ING-IND/34 6 B - Caratterizzanti Bioingegneria
2025/26
Rational drug design to treat a variety of diseases plaguing humans is a dream, which is fast becoming a practically achievable goal of computer-aided drug discovery research. This course will expose the student to methods and applications of computational drug design providing a historical overview followed by an in-depth introduction to present-day methods. The history of drug research can be divided into several phases characterized by: empirical methods, targeted isolation of active compounds from plants, systematic search for new synthetic materials with desired biological effects and the introduction of animal models as surrogates for patients, the use of in vitro test systems as a replacement for animal experiments, the introduction of molecular-level methods such as protein crystallography, molecular modeling. Today, quantitative structure–activity relationships are found for targeted structure-based and computer-aided design of drugs. Discoveries of new targets and the validation of their therapeutic value is achieved through genomic, transcriptomic, metabolomic and proteomic analysis, knock-in and knockout animal models, and gene silencing with siRNA. Main focus will be placed on both ligand-based and structure-based computer-aided design of an active substance, which is validated by in vitro and in vivo tests to determine the activity of new investigational compounds. The highly mathematical area of pharmacokinetics will also be discussed in detail as well. Examples of specific applications will be described.
Rational drug design is transforming the way we discover new therapeutics, shifting from serendipity and trial-and-error to knowledge-driven, predictive strategies. This course introduces students to the principles and applications of modern drug discovery and design, with a strong focus on computer-aided methods. After a historical overview of drug research—from empirical approaches and natural compound isolation to the advent of molecular biology and structural analysis—the course explores contemporary strategies used to identify and optimize biologically active compounds. Emphasis is placed on ligand-based and structure-based drug design, integrated with key concepts from medicinal chemistry, molecular modeling, and cheminformatics. Students will learn how to model drug–target interactions, predict biological activity, and assess molecular properties relevant to pharmacokinetics and pharmacodynamics. The course also discusses the role of physical and chemical properties in the optimization of lead compounds and the rational development of new molecules. Emerging technologies, including artificial intelligence and data-driven approaches, will be introduced as tools to enhance predictive power and accelerate drug development workflows. Real-world examples and case studies will illustrate how theoretical concepts are applied in practice, equipping students with practical skills relevant to pharmaceutical and biotech industries. The course prepares students for roles in drug discovery and development across academic, clinical, and industrial settings
The student will gain competence in specific computational techniques at the level of molecular target modeling, ligand-protein interactions and pharmacokinetic simulations. To better understand the practical use of these methods, case studies will discuss examples of drug development from oncology, virology and immunology At the end of the course the student will be able to: • Understand molecular modeling approaches and force fields applied to drug-target systems. • Develop homology models of proteins • Perform bioinformatic and chemo-informatic database mining • Employ ligand-based drug screening/discovery/design algorithms • Employ structure-based drug screening/discovery/design algorithms with particular focus on drug-target docking simulations and fast binding affinity predictions • Understand the basis of pharmacokinetic modeling, use software for ADMET prediction, • Develop pharmacophore models, perform a QSAR determination. This course will help students to develop their independent thinking through self-assessment tests. The ability to learn is stimulated by a training program that alternates, in an organized schedule, methodological principles, application examples, and exercises. The course will help to improve both written and oral communication skills through classroom exercises, group and individual tutorials and through the development of a short applied project focused on drug design. The applied project will encourage the students to undertake surveys on websites, to view the scientific literature and to become aware of the applied research areas related to the course. The course will provide students with marketable skills for prospective employment in the biotech and pharma industries.
At the end of the course, students will develop both practical and theoretical skills in rational drug design, emphasising computer-aided and data-driven approaches. Skills acquired will encompass: 1. Data Resources and Target Preparation  Navigate and mine bioinformatics and chemoinformatics databases to retrieve relevant information on molecular targets and ligands.  Acquire introductory skills in protein structure modeling through homology modeling techniques, with emphasis on applications in drug discovery.  Gain a basic understanding of molecular modeling principles and the use of force fields in representing drug–target interactions. 2. Drug Design Methodologies  Apply ligand-based and structure-based approaches to screen, design, and optimize bioactive compounds.  Perform docking simulations and evaluate drug–target interactions, including fast binding affinity estimations.  Develop and interpret pharmacophore models and quantitative structure–activity relationships (QSAR). 3. Pharmacokinetics and Molecular Property Prediction  Understand the principles of pharmacokinetic modeling and apply software tools for ADMET prediction. 4. Emerging Technologies  Gain exposure to machine learning tools applied to molecular property prediction and drug screening, including AI-driven analysis of structure–activity relationships and chemical space exploration. In addition to technical skills, students will develop critical thinking, problem-solving, and scientific communication abilities by completing a guided project. The course encourages independent learning via case studies, hands-on computational tutorials, and structured self-assessment. It also equips students with market-relevant skills applicable to careers in pharmaceutical, biotech, and applied research sectors.
Good knowledge of the basics of engineering with particular attention to physics, mathematics, chemistry, biology, mechanics, materials science. The lecturer will fill specific background gaps by ad hoc lectures.
A solid background in basic engineering sciences is essential, especially in physics, mathematics, chemistry, biology, mechanics, and materials science. Although previous experience in molecular biology or pharmacology can be beneficial, it is not essential. The lecturer will cover specific knowledge gaps with focused introductory sessions as required.
• Historical overview of drug discovery • Introduction to modern drug design and development • Bioinformatic, chemi-informatic and pharmacological databases • Drug design and discovery • Protein homology modelling • Ligand/receptor docking for affinity calculation. Drug binding kinetics • Virtual Screening • Pharmacophore development • QSAR methodology • Pharmacokinetics and ADMET prediction • Basis of Molecular Mechanics, Molecular Dynamics and QM/MM for precise investigation of drug-protein binding interface
• Historical overview of drug discovery • Introduction to modern drug design and development strategies • Bioinformatics, chemoinformatics, and pharmacological databases • Ligand-based and structure-based drug design • Protein homology modeling • Ligand/receptor docking and affinity estimation; basics of drug binding kinetics • Virtual screening approaches • Pharmacophore development and model validation • QSAR (Quantitative Structure–Activity Relationship) methodologies • Pharmacokinetics and ADMET prediction • Basic introduction to molecular mechanics and quantum mechanics/molecular mechanics (QM/MM) methods for analyzing drug–protein interactions • Introduction to artificial intelligence and machine learning tools for molecular property prediction and AI-guided drug screening Hands-on sessions in the computational lab will be dedicated to key areas of drug discovery and design, with particular focus on homology modeling, molecular docking, pharmacophore generation, and structure–activity relationship analysis. These practical tutorials are designed to consolidate theoretical concepts and provide students with applied skills using state-of-the-art tools and workflows.
The course can be taken in both the first and second year of the M.Sc. degree program. A half of the lectures will be dedicated to computational tools. Personalized tutoring by the teacher or collaborators will be useful for the project development. The idea of the course is to provide the students the ability to employ new techniques, software and tools in the field of drug design.
The course is open to students in either the first or second year of the M.Sc. degree program. Approximately half of the lectures will focus on applied computational tools, complemented by guided hands-on sessions. Personalized tutoring by the instructor or collaborators will support the development of the final project. The course aims to equip students with the ability to apply current and emerging techniques, software, and tools in the field of rational drug design.
Lectures and hands on tutorials in the computational lab
The course consists of lectures and hands-on tutorials held in the computational lab. Theoretical concepts will be directly applied through guided exercises, fostering practical understanding and technical autonomy.
• D.C. Young, Computational Chemistry, John Wiley &Sons, 2001 • Leach, A.R., 2001. Molecular modelling : principles and applications. Prentice Hall. • R.D. Hoffmann, A. Gohier and P. Pospisil (eds.) Data Mining in Drug Discovery, Wiley-VCH, 2014 • G. Klebe (ed.), Drug Design: Methodology, Concepts and Mode-of-Action, Springer, 2013
D.C. Young, Computational Drug Design: A Guide for Computational and Medicinal Chemists, John Wiley &Sons, 2009 Vasanthanathan Poongavanam, Vijayan Ramaswamy (Ed.), Computational Drug Discovery: Methods and Applications, John Wiley &Sons, 2024 Leach, A.R., 2001 . Molecular modelling : principles and applications. Prentice Hall. R.D. Hoffmann, A. Gohier and P. Pospisil (eds.) Data Mining in Drug Discovery, Wiley-VCH, 2014 G. Klebe (ed.), Drug Design: Methodology, Concepts and Mode-of-Action, Springer, 2013
Modalità di esame: Elaborato progettuale in gruppo;
Exam: Group project;
... Computational Project to be carried out in team (3 to 5 students). The Project consists in solving a drug design problem by computational methods introduced during the course. Each team will prepare a report on the results of the project carried out in the form of a presentation (e.g. pptx). The exam is a team presentation. During the oral exam, the teacher may ask for information related to the project The teacher will evaluate 1. the student's knowledge of the topics covered during the course 2. the student's ability to apply the theoretical concepts to practical examples (e.g. correlating the theoretical concepts to their application in the group project) 3. the originality and critical thinking of the student in relation to the theoretical arguments/application examples covered during the exam.
Gli studenti e le studentesse con disabilità o con Disturbi Specifici di Apprendimento (DSA), oltre alla segnalazione tramite procedura informatizzata, sono invitati a comunicare anche direttamente al/la docente titolare dell'insegnamento, con un preavviso non inferiore ad una settimana dall'avvio della sessione d'esame, gli strumenti compensativi concordati con l'Unità Special Needs, al fine di permettere al/la docente la declinazione più idonea in riferimento alla specifica tipologia di esame.
Exam: Group project;
The final assessment is based on a group project (3 to 5 students) focused on solving a rational drug design problem using the computational methods introduced during the course. Each team will prepare a report and deliver an oral presentation of their work (e.g., in PowerPoint format). The oral exam will consist of the team presentation and may include individual questions related to the project and the course topics. Evaluation will be based on the following criteria: 1. Understanding of the theoretical concepts covered in the course. 2. Ability to apply theoretical knowledge to practical problems, as demonstrated through the project. 3. Originality, critical thinking, and clarity in the interpretation and presentation of the work.
In addition to the message sent by the online system, students with disabilities or Specific Learning Disorders (SLD) are invited to directly inform the professor in charge of the course about the special arrangements for the exam that have been agreed with the Special Needs Unit. The professor has to be informed at least one week before the beginning of the examination session in order to provide students with the most suitable arrangements for each specific type of exam.
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