MIT Computational Biology: Genomes, Networks, Evolution, Health
Prof. Manolis Kellis
http://compbio.mit.edu/6.047/
Fall 2018
Covers the computational foundations and research frontiers of computational biology. Advanced algorithmic techniques for rapid genome analysis and interpretation, data integration, epigenomics, comparative genomics, regulatory genomics, single-cell biology, deep learning, bayesian networks, pattern finding, and dissecting diseaes mechanisms.
Genomes: Biological sequence analysis, hidden Markov models, gene finding, comparative genomics, RNA structure, sequence alignment, hashing.
Networks: Gene expression, clustering/classification, EM/Gibbs sampling, motifs, Bayesian networks, Deep Learning, Epigenomics, Single-cell Genomics.
Evolution: Gene/species trees, phylogenomics, coalescent, personal genomics, population genomics, human ancestry, recent selection, disease mapping.
Health: Genetic association mapping, common/rare variants, GWAS, PheWAS, multi-trait mapping, causality/mediation, EHR mining, cancer genomics, CRISPR.
In addition to the technical material in the course, the term project provides practical experience (1) writing an NIH-style research proposal, (2) reviewing peer proposals, (3) planning and carrying out independent research, (4) presenting research results orally in a conference setting, and (5) writing results in a journal-style scientific paper.
Slides for Lecture 1:
https://stellar.mit.edu/S/course/6/fa...
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