Universität Wien

323103 VU Data science approaches for advancing drug discovery - MPS5 (2020S)

2.00 ECTS (1.00 SWS), SPL 32 - Pharmazie
Prüfungsimmanente Lehrveranstaltung

Details

Sprache: Englisch

Lehrende

Termine

Will be held as an online course!


Information

Ziele, Inhalte und Methode der Lehrveranstaltung

Data science has become an important field in drug discovery and development nowadays. It offers a level of understanding of health, disease and treatment on a scale never before imagined, i.e. it can help researchers to find new drugs or re-use old drugs for new indications. In this lecture and seminar we will talk about existing data sources in the open domain, database schemes/structures, statistics, chemical data & cheminformatics approaches in drug discovery etc. We will further introduce you into the data management/manipulation tools Knime and R and give some more specialized seminars on the uses of KNIME and R in some of the expanding fields in data science (such as machine learning).

Drug discovery and development: from old paradigms to rational approaches:

- VO 1: Traditional drug discovery paradigms and rational drug discovery

Data-driven drug discovery: the holistic view:

- VO 2: Introduction to data-driven drug discovery and translational medicine
- VO 3: Statistics for data sciences: Distributions, correlations, hypothesis testing
- VO 4: Basics of statistical learning
- VO 5: Chemical Data: chemical structure representations, chemical descriptors
- VO 6: Cheminformatics approaches in drug discovery
- VO 7: Data sources, data integration: ChEMBL, OpenPHACTS
- VO 8: Database scheme/structures, Data querying

Predictive Modelling with R/KNIME (Practical part):

- UE 1: QSAR and machine learning in KNIME
- UE 2: Selectivity profiling in KNIME
- UE 3: Applied Cheminformatics in R
- UE 4: Data analyses and data visualization in R

Due to the need for distant learning, the practical entity will be done in the form of either a Journal Club presentation or a small data science project by each student during the summer semester 2020.

Art der Leistungskontrolle und erlaubte Hilfsmittel

Written exam at the end of the VU;
Active contribution during the Practical part

Update due to the current Covid-19 crisis (30.04.2020): There will be *no* written exam this semester. The assessment will be based on the active contribution during the lectures and on basis of the final presentations or the submitted data science project.

Mindestanforderungen und Beurteilungsmaßstab

Written exam at the end of the VU;
Active contribution during the Practical part;
Presence at the 8 lectures and 4 practical units;
material for further reading will be pointed to in each individual lecture

Prüfungsstoff

Content of the lectures and the material for further reading

Literatur


Zuordnung im Vorlesungsverzeichnis

Letzte Änderung: Do 30.04.2020 18:09