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5 5 10/22 10/22[http://depts.washington.edu/soslab/sbf12/13-Noise.pdf Noise][http://www.sciencemag.org/content/297/5584/1183.full Stochastic Gene Expression]. Other noise papers listed below. [[SBF12_A5|A5]], due 10/29 [[SBF12_A5|A5]], due 10/29
10/24 10/24[http://depts.washington.edu/soslab/sbf12/14-Modeling-Noise.pdf Modeling Noise]Nothing required, but you might want to check out the list below of books on probability]]
10/26 10/26[http://depts.washington.edu/soslab/sbf12/15-Noise-in-Gene-Expression.pdf Noise in Gene Expression]You can read my [http://faculty.washington.edu/klavins/ssb/ssb_Part9.pdf 2009 course notes on stochasticity]. Links to other resources are below.
- + - + Line 149: Line 149: - + - + Line 157: Line 157: - + - + Line 400: Line 400: * Lou, Stanton, Chen, Munsky, and Voigt suggest a method for [http://www.nature.com/nbt/journal/vaop/ncurrent/full/nbt.2401.html buffering synthetic circuits from genetic context]. * Lou, Stanton, Chen, Munsky, and Voigt suggest a method for [http://www.nature.com/nbt/journal/vaop/ncurrent/full/nbt.2401.html buffering synthetic circuits from genetic context]. + == 10 Signaling == + + == 11 Pattern Formation == + + == 12 More on Pattern Formation== + + + == 13 Noise == + + == 14 Modeling Noise == + + == 15 Noise in Gene Expression == = Links = = Links =

# Introduction to Synthetic Biology : Fall 2012

• BioE 423/523, CSE 486/586, EE 423/523
• Instructor: Prof. Eric Klavins
• Office Hours: Tu, Th 8:30AM - 10:30AM, CSE 236
• Teaching Assistant: Kevin Oishi
• Office Hours: Mo, Fr, 10:00AM - 11:20AM, Sieg 128
• MWF 11:30-12:20
• Grading (Undergrads): Homework : 30%, Midterm : 30%, Final : 30%, Project : 10%
• Grading (Grads): Homework : 30%, Midterm : 25%, Final : 25%, Project : 10%, Review : 10%
• Homework policies: The lowest homework grade will be dropped. Extra credit will be recorded and used subjectively when determining letter grades. Homework must be turned in on time. Late homeworks are not accepted except for prearranged travel or unexpected illness.

# Schedule

Date Topic Readings and Other Materials Assignment Solution
1 9/24 History A variety of optional readings are listed below. A1, due 10/1 A1 Solution
9/26 Synthetic Biology Special Issue of Science on Synthetic Biology
and optional overviews of synthetic biology.
9/28 Gene Expression Find a tutorial that speaks to you
2 10/1 Chemical Kinetics
ODEs in Matlab
For more on chemical reactions, check out Lecture 2 of Feinberg's notes. The notation is a bit different, but the ideas are the same. A2, due 10/8 A2 Solution
10/3 Introduction to gro Read the paper on gro. A few other papers are listed below.
10/5 iGEM! Check out UW's iGEM wiki page and also read about other teams.
3 10/8 Gene Regulation

Rewiring cells: synthetic biology as a tool to interrogate the organizational principles of living systems. Optional readings are listed below.

A3, due 10/15
10/10 Modeling Gene Regulation Boolean networks
10/12 Synthetic Gene Networks A Yobust and tunable gene oscillator
4 10/15 Signaling 0.gro,1.gro,2.gro,3.gro. Optional readings are listed below. A4, due 10/22
10/17 Pattern Formation
10/19 Extra Pattern Formation Slides le_example.gro,midpoint.gro
5 10/22 Noise Stochastic Gene Expression. Other noise papers listed below. A5, due 10/29
10/24 Modeling Noise Nothing required, but you might want to check out the list below of books on probability]]
10/26 Noise in Gene Expression You can read my 2009 course notes on stochasticity. Links to other resources are below.
6 10/29 Review
10/31 MIDTERM
11/1
7 11/5
11/7
11/9
8 11/12 Vetrans Day
11/14
11/16
9 11/19
11/21 Guest Lecture: Rob Carlson
11/23 Thanksgiving
10 11/26 Guest Lecture: Georg Seelig
11/28 Guest Lecture: James Carothers
12/7 FINAL
12/12 FINAL MEETING : Simulation presentations!

## 8 Gene Regulation

• A more recent paper on identifying gene networks based on expression patterns using boolean networks.