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Computational Genomics10-810 / MSCBIO2070 (co-listed as 02710, 03715), Spring 2008
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Course Description |
Dramatic advances in experimental technology and computational analysis
are fundamentally transforming the basic nature and goal of biological
research. The emergence of new frontiers in biology, such as
evolutionary genomics and systems biology is demanding new
methodologies that can confront quantitative issues of substantial
computational and mathematical sophistication. In this course we will
discuss classical approaches and latest methodological advances in the
context of the following biological problems: 1) Computational
genomics, focusing on gene finding, motif detection and sequence
evolution. 2) Analysis of high throughput biological data, such as
gene expression data, focusing on issues ranging from data acquisition
to pattern recognition and classification. 3) Molecular and regulatory
evolution, focusing on phylogenetic inference and regulatory network
evolution, and 4) Systems biology, concerning how to combine sequence,
expression and other biological data sources to infer the structure and
function of different systems in the cell. From the computational side
this course focuses on modern machine learning methodologies for
computational problems in molecular biology and genetics, including
probabilistic modeling, inference and learning algorithms, pattern
recognition, data integration, time series analysis, active learning,
etc.
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