CSE 527 Computational Biology

Syllabus (tentative)

  • Introduction (1 class)

    • Short intro to molecular biology

    • Overview of the topics covered: genetics, systems biology, predictive medicine

  • Introduction to probabilistic models for computational biology (2 lectures)

    • Bayesian network representation

    • Maximum likelihood estimation, Expectation maximization algorithm

  • Genetics (5 lectures)

    • Genetics basics, QTL mapping

    • Human genetics basics, genome-wide association studies (GWAS)

    • Haplotype reconstruction

    • Imputation, tagging SNP selection

    • Other issues in GWAS, two-point linkage analysis

  • Systems biology (7 lectures)

    • Gene regulation basics, microarray data anslysis

    • Learning transcriptional regulatory networks

    • Systems genetics, network medicine

    • Finding regulatory motifs

    • Inferring signaling networks

  • Sequence analysis (5 lectures)

    • Sequencing

    • DNA, RNA sequence analysis

Dates for Assignments

  • Problem set 1: out 10/12. due 10/26.

  • Problem set 2: out 10/26. due 11/9.

  • Problem set 3: out 11/9. due 11/23.

  • Problem set 4: out 11/23. due 12/7.

Dates for Project Assignments

  • Project proposal: due 10/21.

  • Midterm report: due 11/16.

  • Final report: due 12/14.

Late Day Policy

All assignments are due 11:59pm on the assigned due date. We recognize that students may encounter unexpected circumstances and so require more flexibility in the course schedule. Therefore, each student will be granted a total of 3 free late (calendar) days that can be applied to every assignment, but not the final report submission.