RAZVOJ METODA ZA ANALIZU SLIČNOSTI BIOLOŠKIH SEKVENCI NA OSNOVU KARAKTERISTIKA PONOVAKA

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RAZVOJ METODA ZA ANALIZU SLIČNOSTI BIOLOŠKIH SEKVENCI NA OSNOVU KARAKTERISTIKA PONOVAKA

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Title: RAZVOJ METODA ZA ANALIZU SLIČNOSTI BIOLOŠKIH SEKVENCI NA OSNOVU KARAKTERISTIKA PONOVAKA
Author: Jovanović, Jasmina
Abstract: The analysis of biological sequence similarity between different species is significant in identifying functional, structural or evolutionary relationships among the species. Biological sequence similarity and analysis of newly discovered nucleotide and amino acid sequences are demanding tasks in bioinformatics. As biological data is growing exponentially, new and innovative algorithms are needed to be constantly developed to get faster and more effective data processing. The challenge in sequence similarity analysis algorithms is that sequence does not always have obvious features and the dimension of sequence features may be very high for applying regular feature selection methods on sequences. It is important to have a simple and effective algorithm for determining biological sequence relationships. This thesis proposes two new methods for sequence transformation in feature vectors that takes into consideration statistically significant repetitive parts of analyzed sequences, as well as includes different approaches for determination of nucleotide sequence similarity and sequence classification for predicting taxonomy groups of biological sequence data. The first method is based on information theory and fact that both position and frequency of repeated sequences are not expected to occur with the identical presence in a random sequence of the same length. The second method includes building signatures of biological sequences and profiles of taxonomic classes based on repetitive parts of sequences and distances between these repeats. Proposed methods have been validated on multiple data sets and compared with results obtained using different well known and accepted methods in this field like BLAST, Clustal Omega and methods based on k-mers. Resulted precision for proposed methods is close to values provided for existing methods for the majority of tested data-sets, and time performance depends strictly to used infrastructure and sequence type. Methods provide results that are comparable with other commonly used methods focused on resolving the same problem, taking into consideration statistically significant repetitive parts of sequences with different characteristics.
URI: http://hdl.handle.net/123456789/5440
Date: 2022

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