| 01/10 Lecture 1: Introduction to
molecular biology |
| 01/12 Lecture 2: Statistical
modeling of biopolymer sequences |
| 01/19 Lecture 3: The
Hidden
Markov Models for sequence parsing |
| 01/24 Lecture 4: HMM
variants |
| 01/26 Lecture 5: Molecular
Evolution and Comperative Genomics |
| 01/31 Lecture 6: Motif
Detection |
| 02/09 Lecture 7: Meiosis
and
recombination |
| 02/14 Lecture 8: 2-point
linkage analysis |
| 02/16 Lecture 9: Quantitative
trait locus (QTL) mapping |
| 02/21 Lecture 10: SNPs
and
Haplotype Inference |
| 02/23 Lecture 11: Array
CGH |
| 02/28 Lecture 12: Microarrays
|
| 03/02 Lecture 13: Normalization
|
| 03/14 Lecture 14: Differentially
Expressed Genes |
| 03/16 Lecture 15: Clustering
expression data |
| 03/21 Lecture 16: Bi-Clustering
and Optimal leaf ordering |
| 03/23 Lecture 17: Classification
|
| 03/23 Lecture 17a: Classification
(cont.) |
| 03/28 Lecture 18: Time series
analysis |
| 04/04 Lecture 20: Systems biology
|
| 04/06 Lecture 21: Bayesian
Networks |
| 04/11 Lecture 22: Graphical
models |
| 04/13 Lecture 23: Probabilistic
inference in graphical models |
| 04/18 Lecture 24: Physical
networks and network motifs |
| 04/20 Lecture 25: Network motifs
and protein interactions |