Cancelled Pharmaceutical Modelling
Course content
The course focuses on mathematical models and computer programming for a quantitative understanding of diverse pharmaceutically relevant problems. This includes models at different scales, both for molecular and particle level properties, interactions between molecules/particles and their interactions with the organism. The course will via 'real-life' practical examples provide the students with knowledge about the theory behind methods used for pharmaceutical modelling and simulation of system behavior. The students will be provided with input data for the different systems studied.
In the lectures, the students are introduced to the fundamental principles behind methods in pharmaceutical modelling. In the exercises, the students get hands-on experience with methods used in academia and industry and get an opportunity to apply these methods on 'real-life' problems.
The course begins with a introduction and brush-up on fundamental mathematical tools, building on the knowledge obtained during the bachelor courses, e.g. physical chemistry. We then apply and modify computer scripts that model the pharmaceutical systems, and discuss these models in relation to the literature.
The topics covered in the lectures and exercises are:
- Introduction to basic multivariate calculus and linear algebra
- Introduction to differential equations
- Model optimization
- Machine learning, deep learning and artificial intelligence.
- Multivariate data analysis
- Molecular dynamics
- Image analysis
Visualization of data is an important aspect of the course
Examples on areas covered in the lectures and exercises are:
- Interatomic forces in biological and crystalline drug systems – molecular dynamics
- Image analysis of digital images from e.g. electron microscopy studies.
- Least squares optimization of models against experimental data.
- Multivariate methods for process analytical technology, e.g. powder diffraction, Raman and NIR spectroscopies.
- Training of deep neural networks for classification of data.
Objective
The course is relevant for pharmaceutical research within both drug discovery and drug development where it is important to:
- Understand the theory behind models on various levels of the drug discovery and development process
- Get hands-on experience with modern programming tools in pharmaceutical modelling
- Know the accuracy and applicability of mathematical models
Bachelor Programme in Pharmacy (Danish programme) - elective
The course is co-taught with students from the master's program in pharmacy, Medicinal Chemsistry and Pharmaceutical Sciences.
At the end of the course, students are expected to be able to:
Knowledge
- Explain the mathematical principles behind selected methods used
- Be critical to the quality of the data and developed mathematical models
- To link modeling results and experimental work
Skills
- To be able to automate data handling and visualization
- Develop pharmaceutical models
- Evaluate the accuracy of the models
- Have hands-on experience with mathematical and statistical software
Competences
- Apply models in pharmaceutical research and development
- Critically evaluate the usability of diverse computational platforms for pharmaceutical problems
- Select the appropriate mathematical model to solve problems in pharmaceutical sciences
No prior computer programming knowledge is needed.
Lectures: 12 hours
Class room exercises: 10 hours
Computer exercises: 20 hours
Project work: 70 hours
Supervision during project work: Guidelines will be available on
the course homepage
Mathematical test and oral presentation of group
work.
Literature
Munk and Munro: Maths for chemistry. Latest edition.
Lecture notes.
If you are applying for the course as a credit transfer student, you must have passed SFAB20015U Biopharmaceuticals -bioorganisk kemi or have acquired similar competencies comparable to the math curriculum on the bachelor level of the pharmacy education in another course. Documentation for corresponding competencies in the form of a course description and an exam result must be attached to your application.
- ECTS
- 7,5 ECTS
- Type of assessment
-
Oral examination, 30 minutes
- Type of assessment details
- The oral examination is individual and without preparation.
The oral examination is based on the learning portfolio that the student has prepared during the course of teaching. - Aid
- Without aids
It is permitted to bring the learning portfolio on which the oral examination is based on to the examination.
- Marking scale
- 7-point grading scale
- Censorship form
- No external censorship
Criteria for exam assessment
To achieve the grade 12 the student must be able to:
Knowledge
- Explain the mathematical principles behind selected methods used
- Be critical to the quality of the data and developed mathematical models
- Link modeling results and experimental work
Skills
- Develop pharmaceutical models
- Evaluate the accuracy of the models
- Have hands-on experience with mathematical and statistical software
Competences
- Apply models in pharmaceutical research and development
- Critically evaluate the usability of diverse computational platforms for pharmaceutical problems
- Select the appropriate mathematical model to solve problems in pharmaceutical sciences
- Category
- Hours
- Lectures
- 12
- Preparation
- 70
- Theory exercises
- 28
- Project work
- 70
- Guidance
- 6
- Exam
- 20
- English
- 206
Kursusinformation
- Language
- English
- Course number
- SFAB21002U
- ECTS
- 7,5 ECTS
- Programme level
- Bachelor
Bachelor choice
- Duration
-
1 block
- Placement
- Block 3
- Schedulegroup
-
A
- Capacity
- 20 students
- Studyboard
- Study Board of Pharmaceutical Sciences
Contracting department
- Department of Pharmacy
Contracting faculty
- Faculty of Health and Medical Sciences
Course Coordinator
- Anders Østergaard Madsen (8-65327165687769724477797268326f7932686f)
Teacher
Anders Østergaard Madsen
Johan Peter Bøtker
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Courseinformation of students