[Plsgs] Special Seminar Friday Jan 11 3PM
Georgina Lambert
georgina at ag.arizona.edu
Tue Jan 8 13:03:44 MST 2013
From: Georgina Lambert [mailto:georgina at ag.arizona.edu]
Sent: Tuesday, January 08, 2013 12:57 PM
To: plsgs at cals.arzona.edu
Subject: Special Seminar Friday Jan 11 3PM
The School of Plant Sciences
Seminar Series
Drs. Masami Hirai and Yuji Sawada
Metabolic Systems Research Team
RIKEN Plant Science Center, Japan
"Plant Metabolomics and Integrated Approaches"
and
"Mathematical Modeling of Plant Metabolism Based on Metabolome Data"
Friday, January 11, 2013
3:00 - 3:50 pm
Marley 230
More information @ <http://cals.arizona.edu/spls/seminars>
http://cals.arizona.edu/spls/seminars
Seminar Abstracts
Plant Metabolomics and Integrated Approaches
Yuji Sawada
RIKEN Plant Science Center, Yokohama, Japan
Metabolomics and its application study have large advantage in the extensive
detection of metabolites. Using the metabolome data with other omics data,
we have identified the novel metabolic genes, e.g., transcriptional
regulation factor, transporter of the metabolite, biosynthetic genes.
Previously, we have established the metabolomics techniques by using
multiple MS types as follows: quantitative analysis (QqQ-MS, Sawada et al.,
PCP 2009a-c), un-targeted tandem MS (MS/MS) analysis (QTOF-MS, Matsuda et
al., Plant J. 2008) and elemental composition analysis (FT-MS, Nakabayashi
et al., Anal. Chem. in press), reference MS/MS database for phytochemicals
(Sawada, et al., Phytochem. 2012). These platforms powerfully promote the
characterization of massive extended detectable metabolites. In this
presentation, we show the case study of metabolome quantitative locus
analysis by using linkage mapping and genome wide association, and the
results will allow us to generate the next innovative metabolic breeding
approaches.
Mathematical Modeling of Plant Metabolism Based on Metabolome Data
Masami Y. Hirai
RIKEN Plant Science Center, Yokohama, Japan
Recently, it has become possible to acquire a large metabolome dataset from
high-throughput instruments. Time-series metabolome data includes important
information to understand metabolism as a system. The present work proposes
a new pathway-based technique for in silico analysis of a metabolic reaction
network by using time-series metabolome data. In this approach, a
mathematical model is constructed in the framework of Biochemical Systems
Theory based on available information on metabolic pathways, which are
composed of chemical reactions and feedback regulations by metabolites. The
parameters in the model, namely, kinetic orders and rate constants, are
estimated from actual time-series data of metabolite concentrations. The
obtained mathematical model enables us to simulate metabolic behaviors and
conduct the system analysis of a metabolic reaction network. In this seminar
the result of our on-going study will be introduced.
Ms. Georgina Lambert
Program Coordinator, Sr.
School of Plant Sciences
University of Arizona
Tucson, AZ 85721
Office 520-621-1219
Cell 520-404-2856
FAX 520-621-7186
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