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Structural Bioinformatics & Modelling

SK-MCBIM21

Over deze cursus

Description of content
Computational structural biology is a mature field of research whose contribution to life sciences is becoming increasingly more appreciated. The aim of this course is to provide a solid basis of computational structural biology methods, with an emphasis on practical protein modelling and simulation, to interested MSc and PhD students in the life sciences. Further, given the lack of emphasis on practical computational research in MSc and PhD courses, this course is designed to have a smooth learning curve regarding the GNU/Linux environment and its command-line interface. By the end of the course, the students are expected to master the three major computational structural biology methods – homology modelling, molecular dynamics, and protein docking – not only from a user perspective but also from a theoretical standpoint.

The course is scheduled to last three-weeks with in the first two weeks theoretical lectures (including some exercises) in the morning (9:00-12:00) and practical sessions in the afternoon (13:15–17:00). The students are required to summarize the results of the computer practicals by writing a short article in the form of a communication for the Journal of the American Chemical Society. In the second week of the course a guest lecture giving an industry perspective to the topic will be organised. The third week is reserved for the article writing, self study and the final exam. The first afternoon is devoted to the installation of the material and a short crash-course on GNU/Linux and the command-line interface.

The** theoretical part** consists of classical lectures (see programme above) covering the various aspect of computational modelling of biomolecular systems, together with a few exercises sessions integrated within the lectures. These exercises are meant to illustrate some aspects of the methodology discussed. Through a number of simple python scripts, students will be able to play with some of the techniques discussed, and visualize the impact of various parameters on the simulation results. The material for the lectures is based in parts on the following book (recommended for further in depth reading): A.E. Leach, Molecular Modelling: Principles and Applications, 2nd edition, Pearson Eduction Ltd, 2001.
PDF of the lecture slides will be provided after each lecture.

The computer practical part [1] is divided in three main modules, each focused on a major computational structural biology method. The philosophy of the practical components of the course follows also our previous experience: the students are given a set of instructions and follow them at their own pace, with the assistants helping out whenever necessary. An additional module demonstrating the use of AI (AlphaFold) for structure is provided.

The first module comprises the setup and analysis of a molecular dynamics simulation of a small peptide and is based on our previous BSc course and peer-reviewed educational article published in Biochemistry and Molecular Biology Education [2]. The students will make use of GROMACS [3], a widely used software for molecular dynamics simulation, to characterize the conformational landscape of a small peptide and extract representatives that will be used in the third and last module.

The second module covers homology modelling and guides the students throughout all the stages of the process of building a protein model from a structurally characterized homologue. It makes use SWISSMODEL [4] for model building, and Pymol [5] for visualization. The students will use the programs’ command-line interface instead of the readily available web servers. This, we hope, will familiarize them with an important component of computational research, as well as bring them closer to the tools and their many options.

The third module covers the docking of the homology model built in the second module with the peptide conformers extracted from the simulation of the first module. The students will use bioinformatics interface predictors and HADDOCK web servers [6] to predict the interface between the two molecules and build models of their interaction by data-driven docking.

The “bonus” module illustrate the use of AlphaFold, an artificial intelligence-based structure prediction method working directly from sequence.

References:

https://www.bonvinlab.org/education/molmod_online/

Rodrigues JPGLM, Melquiond ASJ, Bonvin AMJJ (2015). Molecular Dynamics characterization of the conformational landscape of a small peptide. Biochemistry and Molecular Biology Education. 44 , 160-167 (2016).

https://www.gromacs.org

https://swissmodel.expasy.org

https://pymol.org

https://wenmr.science.uu.nl

Course Programme
Day 1:

Morning (lecture): General Introduction, empirical force fields, derivatives
(Based on Leach Ch. 4.1-4.6, 4.9.2, 4.9.11, 4.10.1-4.10.3, 4.15, 4.16, 4.18)

Afternoon (computer practical): Software installation, getting acquainted with Linux

Day 2:

Morning (lecture): Homology modelling and structure validation

Afternoon (computer practical): Homology modelling module

Day 3:

Morning (lecture): Potential energy surfaces, energy minimization methods (Based on Leach Ch. 5.1-5.7)

Afternoon (computer practical): Molecular Dynamics practical module

Day 4:

Morning (lecture): Classical mechanics, molecular dynamics, integration schemes practical aspects. (Based on Leach Ch. 7.1-7.3.4, 6.4, 7.4)

Afternoon (computer practical): Molecular Dynamics practical module

Day 5:

Morning (lecture): Practical aspects, solvent treatment, long-range forces, dealing with T and P

Afternoon (computer practical): Molecular Dynamics practical module - MD simulations must be production ready at the end of this day to run over the weekend on HPC resources

Day 6:

Morning (lecture): Analysis and other sampling methods (Based on Leach Ch. 6.6, 6.9, 7.6, 8.1-8.7, 9.1-9.4, 9.9.1, 9.9.2)

Afternoon (computer practical): Molecular Dynamics practical module (analysis)

Day 7:

Morning (lecture): Docking I – general introduction, information-driven docking

Afternoon (computer practical): Docking practical module

Day 8:

Morning (lecture): Docking II – advanced topics

Afternoon (computer practical): Docking practical module

Day 9:

Morning (lecture): AI-based structure prediction

Afternoon: Practical module

Day 10-15:

Morning: self-study and report writing

Afternoon: self-study and report writing

Day 11:

Afternoon: Q&A session

Exam on Day 13 in week 3 (Wednesday)

Literature/study material used :
Recommended book for further in depth reading: A.E. Leach, Molecular Modelling: Principles and Applications, 2nd edition, Pearson Eduction Ltd, 2001.
For the computer practicals:

The source of the material for the computer practical is available online, free of costs at https://www.bonvinlab.org/education/molmod_online/ . The practical consists of three modules.

Registration : Via OSIRIS
Mandatory for students in Master’s programme : NO.
Optional for students in other Master’s programmes GS-LS : YES.

Leerresultaten

At the end of the course, students should have a profound understanding of:

  • molecular modelling and its applications in life sciences

  • the choices one has to make to model a system properly and how to describe and model interactions between particles

  • the modelling techniques used in this field of research, in particular homology modelling, molecular dynamics simulations and biomolecular docking

  • modelling of biochemical systems on computers using different software

After completing the course the student is able:

  • to choose the best modelling method for a given application
  • to generate 3D models of proteins from sequence information
  • to study the conformational landscape of molecules with molecular simulations
  • to model the interaction between biomolecules
  • to use relevant modelling software under a Linux environment
  • to critically analyse modelling results

body { font-size: 9pt;"0" cellpadding="0" cellspacing="0" style="width:965px"> Learning outcomes GSLS 1. Graduates will have profound knowledge of, and insights into: a) At least one of the specialised subjects of Life Sciences. With this knowledge graduates are able to make a substantial contribution to the development and/or application of scientific concepts and methods, often in a research context. b) Important, recent developments within the Life Sciences. Graduates are able to point out the implications of these developments on the Life Sciences field and society. c) The way to adequately use and interpret specialist literature in at least one of the subjects of Life Sciences. 2. Graduates will become skilled in: a) Translating a Life Sciences problem into a relevant research question, suitable for research development or product design. b) Designing a suitable research plan to test the formulated research questions, according to methodological and scientific standards. c) Independently performing research, with the required accuracy. Graduates are able to handle, analyse, interpret and evaluate the empirically derived data in a correct manner. d) Discussing the outcomes of empirical research and linking them with scientific theories. e) Indicating the importance of research activities for solving a biomedical question or problem, if applicable from a social perspective. f) Critically reflecting on their own research work in Life Sciences, from a social perspective. g) Comprehensibly reporting research results verbally and in writing, to specialised and non-specialised audiences in an international context. 3. Graduates will display attitudes that enable them to: a) Function effectively in a multidisciplinary research team. b) Reflect on their own development and study career. If necessary, graduates are able to motivate and adjust themselves. c) Function independently and result oriented in a competitive labour market. d) To be eligible for a PhD position or a position in other sector.

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Aanbod

  • Startdatum

    11 november 2024

    • Einddatum
      31 januari 2025
    • Periode *
      Blok 2
    • Locatie
      Utrecht
    • Voertaal
      Engels
    • Inschrijven tussen
      16 sep, 09:00 - 27 sep 2024
    De inschrijving begint over 131 dagen
Dit aanbod is voor studenten van TU Eindhoven