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Computational Life Sciences
This page lists all the talks/workshops/activities of the Computational Life Sciences research group at the University of Malta.
This group is interested in applying computer science techniques to problems in molecular biology, chemistry, pharmacology, and drug-discovery. As research becomes more interdisciplinary, we realize the need to bring computer scientists, wet-lab biologists, mathematicians, statisticians, geneticists, etc. together. We organize bimonthly talks and workshops, mostly in bioinformatics and cheminformatics, where academics and post-graduate students present their work in an informal and friendly setting.
For more information, and to receive notifications of future activities please subscribe to our Google Group.
Talks
The following is a (reverse) chronological ordered list of talks.
Date/Time | Speaker | Location | Title & Abstract |
---|---|---|---|
Mon 17th July 2017, 4pm | Mr Joseph Bonello | ICT Faculty Building, CS seminar room 38, Block B, 1st floor | Protein Function Prediction Using Homologues Homology refers to the existence of a common origin between a pair of proteins in different organisms. Proteins consist of multiple domains – conserved regions of a sequence and structure that can function independently from the rest of the protein chain. Protein function prediction methods based on homology, take advantage of the many pairwise homology relationships between individual domain sequences. This project attempts to create a set of scores that can be used to predict the possible domain functions that a protein can possess. The study uses CATH Superfamilies and CATH Functional Families (FunFams) to generate the scores. CATH is a database that provides a hierarchical protein-domain classification for proteins obtained from PDB. The Superfamilies and FunFams provide a natural grouping for proteins that share the same evolutionary origin (homologous superfamilies). This grouping can be exploited to generate similarity scores between the domains and the families. Two methods have been developed for the purpose of function prediction based on these principles. The first method uses Set Theory, where the proteins belonging to a Superfamily or a FunFam are used to determine which GO Terms are more likely to occur in the group. The second method uses a statistical calculation to represent the presence of GO Terms in a family. |
Thu 1st June 2017, 4pm | Dr Jean-Paul Ebejer | ICT Faculty Building, CS seminar room 38, Block B, 1st floor | Computer-Aided Drug Design Computer-Aided Drug Design (CADD) plays an increasingly critical role in the drug-discovery process. CADD involves the application of computer algorithms to improve pharmaceutical productivity. These include algorithms for the identification of the biological target involved in a disease, toxicity and side-effect prediction, and searching a database for molecules which exhibit a therapeutic effect against a particular protein of interest. The latter is known as Virtual Screening. In this talk I will give an overview of CADD with particular emphasis on virtual screening. I will describe the successes, challenges and limitations of the approach. Finally, I will briefly present a novel virtual screening method we have developed. This interdisciplinary talk is aimed at an audience of broad interest. |