Comprehensive assessment of DNA content feature using machine learning approach
Transcription Factor Proteins-DNA interactions play the key role in gene regulation. Identification of the regulatory elements or motifs bound by transcription factor proteins is critical to understand the gene regulatory network, diseases, and for medical benefit. Computational motif analysis, spec...
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my.unimas.ir.209872023-07-28T08:07:00Z http://ir.unimas.my/id/eprint/20987/ Comprehensive assessment of DNA content feature using machine learning approach Sina, Nazeri H Social Sciences (General) QH426 Genetics QM Human anatomy Transcription Factor Proteins-DNA interactions play the key role in gene regulation. Identification of the regulatory elements or motifs bound by transcription factor proteins is critical to understand the gene regulatory network, diseases, and for medical benefit. Computational motif analysis, specifically the distal regulatory elements –enhancers– is notoriously difficult. Firstly, there are limited choices of features associated with it for machine learning task. Secondly, the discriminative feature that describes enhancer regions are ill-understood and no prior knowledge can be used in the design of recognition system. Lastly, different development stages and different cell lines activate different subset of enhancers which complicate computational methods of making conclusive results on the discriminative feature set that is used to model the active enhancers. Epigenetic and chromatin landmarks have been employed with great success to infer locations of enhancer regions as their locations have high correlation with enhancer regions. K-mer feature representation is one prominent approach for DNA content representation. unimas 2016 Thesis NonPeerReviewed text en http://ir.unimas.my/id/eprint/20987/1/Sina%20Nazeri.pdf Sina, Nazeri (2016) Comprehensive assessment of DNA content feature using machine learning approach. Masters thesis, UNIMAS. |
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H Social Sciences (General) QH426 Genetics QM Human anatomy Sina, Nazeri Comprehensive assessment of DNA content feature using machine learning approach |
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Transcription Factor Proteins-DNA interactions play the key role in gene regulation. Identification of the regulatory elements or motifs bound by transcription factor proteins is critical to understand the gene regulatory network, diseases, and for medical benefit. Computational motif analysis, specifically the distal regulatory elements –enhancers– is notoriously difficult. Firstly, there are limited choices of features associated with it for
machine learning task. Secondly, the discriminative feature that describes enhancer regions are ill-understood and no prior knowledge can be used in the design of recognition system. Lastly, different development stages and different cell lines activate different subset of enhancers which complicate computational methods of making conclusive results on the discriminative feature set that is used to model the active enhancers. Epigenetic and chromatin landmarks have been employed with great success to infer locations of enhancer regions as their locations have high correlation with enhancer regions. K-mer feature
representation is one prominent approach for DNA content representation. |
format |
Thesis |
author |
Sina, Nazeri |
author_facet |
Sina, Nazeri |
author_sort |
Sina, Nazeri |
title |
Comprehensive assessment of DNA content feature using machine learning approach |
title_short |
Comprehensive assessment of DNA content feature using machine learning approach |
title_full |
Comprehensive assessment of DNA content feature using machine learning approach |
title_fullStr |
Comprehensive assessment of DNA content feature using machine learning approach |
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Comprehensive assessment of DNA content feature using machine learning approach |
title_sort |
comprehensive assessment of dna content feature using machine learning approach |
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unimas |
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2016 |
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http://ir.unimas.my/id/eprint/20987/1/Sina%20Nazeri.pdf http://ir.unimas.my/id/eprint/20987/ |
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