Chapter title |
Differential Gene Expression (DEX) and Alternative Splicing Events (ASE) for Temporal Dynamic Processes Using HMMs and Hierarchical Bayesian Modeling Approaches
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Chapter number | 12 |
Book title |
Hidden Markov Models
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Published in |
Methods in molecular biology, February 2017
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DOI | 10.1007/978-1-4939-6753-7_12 |
Pubmed ID | |
Book ISBNs |
978-1-4939-6751-3, 978-1-4939-6753-7
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Authors |
Sunghee Oh, Seongho Song, Oh, Sunghee, Song, Seongho |
Editors |
David R. Westhead, M. S. Vijayabaskar |
Abstract |
In gene expression profile, data analysis pipeline is categorized into four levels, major downstream tasks, i.e., (1) identification of differential expression; (2) clustering co-expression patterns; (3) classification of subtypes of samples; and (4) detection of genetic regulatory networks, are performed posterior to preprocessing procedure such as normalization techniques. To be more specific, temporal dynamic gene expression data has its inherent feature, namely, two neighboring time points (previous and current state) are highly correlated with each other, compared to static expression data which samples are assumed as independent individuals. In this chapter, we demonstrate how HMMs and hierarchical Bayesian modeling methods capture the horizontal time dependency structures in time series expression profiles by focusing on the identification of differential expression. In addition, those differential expression genes and transcript variant isoforms over time detected in core prerequisite steps can be generally further applied in detection of genetic regulatory networks to comprehensively uncover dynamic repertoires in the aspects of system biology as the coupled framework. |
Mendeley readers
Geographical breakdown
Country | Count | As % |
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Unknown | 3 | 100% |
Demographic breakdown
Readers by professional status | Count | As % |
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Student > Ph. D. Student | 3 | 100% |
Readers by discipline | Count | As % |
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Pharmacology, Toxicology and Pharmaceutical Science | 1 | 33% |
Mathematics | 1 | 33% |
Psychology | 1 | 33% |