Unsupervised Learning in Genome Informatics
Ka-Chun Wong, Yue Li, Zhaolei Zhang

TL;DR
This chapter reviews state-of-the-art unsupervised learning algorithms applied to genome informatics, focusing on DNA and microRNA analysis for understanding gene regulation and complex diseases.
Contribution
It provides a comprehensive overview of novel unsupervised learning methods for deciphering genome-wide patterns in DNA and microRNA data.
Findings
Unsupervised methods reveal genome-wide DNA regulatory patterns.
Frameworks for inferring microRNA regulatory networks.
Insights into gene regulation and disease mechanisms.
Abstract
With different genomes available, unsupervised learning algorithms are essential in learning genome-wide biological insights. Especially, the functional characterization of different genomes is essential for us to understand lives. In this book chapter, we review the state-of-the-art unsupervised learning algorithms for genome informatics from DNA to MicroRNA. DNA (DeoxyriboNucleic Acid) is the basic component of genomes. A significant fraction of DNA regions (transcription factor binding sites) are bound by proteins (transcription factors) to regulate gene expression at different development stages in different tissues. To fully understand genetics, it is necessary of us to apply unsupervised learning algorithms to learn and infer those DNA regions. Here we review several unsupervised learning methods for deciphering the genome-wide patterns of those DNA regions. MicroRNA (miRNA),…
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Taxonomy
TopicsMachine Learning in Bioinformatics · MicroRNA in disease regulation · RNA and protein synthesis mechanisms
