Clusterovací algoritmy pro sledování vod v proteinech – Mgr. Bc. Branislav Jenčo
Mgr. Bc. Branislav Jenčo
Bachelor's thesis
Clusterovací algoritmy pro sledování vod v proteinech
Clustering algorithms for water tracking in proteins
Abstract:
Práca sa zaoberá klastrovaním bodov na povrchu proteínu, v ktorých vodné molekuly vstupujú do alebo vystupujú z proteínovej štruktúry. Analýza týchto vstupov v priebehu simulácií molekulárnej dynamiky pomáha biochemikom získať informácie o dôležitých tuneloch v proteínovej štruktúre. Cieľom bolo poskytnúť prehľad o niekoľkých klastrovacích algoritmoch, ich porovnanie na syntetických aj reálnych dátach …moreAbstract:
The topic of this thesis is clustering of points on the surface of a protein where water molecules enter or exit the protein structure. Analysis of these inlets during molecular dynamics simulations helps biochemists obtain information about important tunnels in the protein structure. The goal was to give an overview of several clustering algorithms, compare them in use on synthetic and real data, …more
Language used: English
Date on which the thesis was submitted / produced: 29. 5. 2017
Identifier:
https://is.muni.cz/th/i2vov/
Thesis defence
- Date of defence: 26. 6. 2017
- Supervisor: doc. RNDr. Barbora Kozlíková, Ph.D.
- Reader: RNDr. Katarína Furmanová
Citation record
Full text of thesis
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Institution archiving the thesis and making it accessible: Masarykova univerzita, Fakulta informatikyMasaryk University
Faculty of InformaticsBachelor programme / field:
Informatics / Computer Graphics and Image Processing
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