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Center for
Genomics and Systems Biology at
New York University |
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Curriculum Vitae:
pdf
Inferelator:
web-site
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Aviv Madar
Phone: 212-998-3976
Email: madaraviv AT nyu.edu
Room:
Center for Genomics and Systems biology - 8th floor Brown Building
Address:
100 Washington Square E, New York, NY 10003
A bit about me:
I am a Biology PhD. Candidate with the
Bonneau research group , at
the
Center for
Genomics and Systems Biology (CGSB) at New
York University.
I moved to
NYC ~3 years ago from Israel. I would like to consider myself as
intelligent, spicy, someone who loves to travel and exploring new things.
I love cooking (everything), movies, a good exercise, good conversations and
interesting people.
Research: (Mentor
Richard Bonneau, main
collabarator Eric Vanden-Eijnden)
Organisms must continually adapt to changing cellular and environmental
factors (e.g. oxygen levels) by altering their gene expression patterns.
At the same time, all organisms must have stable gene expression patterns
that are robust to small fluctuations in environmental factors and genetic
variation. Learning and characterizing the structure and dynamics of
Regulatory Networks (RNs), on a whole-genome scale, is a key problem in
systems biology. We have recently
described a network inference algorithm, the
Inferelator (original
paper pdf, systems-biology
application for halobacter
pdf),
which infers regulatory influences for genes and gene-clusters.
The typical input is: 1) a microarray compendium composed of time-series and
equilibrium measurements; and 2) prior information such as a set of
considered predictors (e.g. transcription factors). The
output is a dynamical model for each gene, i.e. a differential equation
describing the rate of change in mRNA concentration as a function of
relevant predictors. At the core of the algorithm is a
model shrinkage step (L1-shrinkage) that allows the
Inferelator
to learn sparse models.
We have shown that the
Inferelator
is descriptive and predictive (up
to the next time point in a time series) over a large test-set (with
different conditions then train-set). We are currently developing the
next version of the
Inferelator. To
this end we are developing a
Markov-Chain-Monte-Carlo (MCMC) optimization
algorithm, which learns models that agree with the uncoupled as well as
coupled dynamics of the system, and is constrained by the sparsity expected
from biological systems. This should allow us to
model the dynamics of a cell’s mRNA expression levels, over longer time
scale, such as the cell cycle.
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| Graduate courses taken: |
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Education:
2005-2010:
Graduate School, New York University
&ndash Biology PhD. Candidate
2002-2005:
TECHNION &ndash Israel Institute of Technolgy
- B.Sc. Biotechnology and Food Engineering - summa cum laude
- B.A. Biology - summa cum laude
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Biology:
- Bio-core 1
here
- Bio-core 2
here
- Bio-core 3
here
- Bio-core 4
here
- The art of scientific investigation
here
- Principles in evolution
here
- Bioinformatics
here
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Computer Science:
- C-PAC 1
here
- C-PAC 2
here
- Unix tools
here
- Operating Systems
here
- Machine learning
here
- Advance machine learning
here
- Fundamental algorithms
here
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Scientific Publications and Talks:
- Oct. 2008 (RECOMB
&ndash Computaitional biology conference held at MIT).
Markov Chain Monte Carlo (MCMC) optimization to learn coupled Gene Regulatory Networks:
the Inferelator 2.0. Video stream
here
- Dec. 2007 (Cell, co-author) A Predictive Model for Transcriptional
Control of Physiology in a Free Living Cell.
pdf
online
- 2007 (In press Humana press) Book chapter: Learning global models of
transcriptional regulatory networks from data. book-chapter
pdf, figures
zip
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Mathematics:
- Monte Carlo Methods
here
- Stochastic Calculus
here
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Teaching (TA):
Undergraduate:
- Principles in biology 1
here
- Principles in biology 2 (twice)
here
Graduate:
- Applied Genomics: Introduction to Bioinformatics and Network Modeling (twice)
here
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Other works by me:
- Thesis (pdf)
- Comprehensive Exam - passed with distinction
(pdf)
- A fun relational web-site that I built as a final project for the
course Unix Tools. (login)
- Online strategy card game (in design...) |