323103 VU Data science approaches for advancing drug discovery - MPS5 (2018S)
Continuous assessment of course work
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Details
Language: English
Lecturers
Classes
The date for the first meeting (kick-off) where we discuss the schedule of the VU is available on moodle.
Information
Aims, contents and method of the course
Assessment and permitted materials
Written exam at the end of the VU;
Active contribution during the Practical part
Active contribution during the Practical part
Minimum requirements and assessment criteria
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
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
Examination topics
Content of the lectures and the material for further reading
Reading list
Distributed in the lectures
Association in the course directory
Last modified: Fr 31.08.2018 08:43
- 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 queryingPredictive Modelling with R/KNIME (Practical part):- UE 1: QSAR and machine learning in KNIME
- UE 2: Pathway/disease analysis in KNIME
- UE 3: Applied Cheminformatics in R
- UE 4: Data analyses and data visualization in R