CSIRO Publishing Books Journals About Us Shopping Cart You are here: Journals > Crop & Pasture Science   
Crop & Pasture Science
  Plant Sciences, Sustainable Farming Systems & Food Quality
 
Search
 
 
  Advanced Search
   

Journal Home
About the Journal
Editorial Board
Contacts
Content
Current Issue
Just Accepted
All Issues
Most Read Papers
Special Issues
Research Fronts
Farrer Reviews
Sample Issue
For Authors
General Information
Notice to Authors
Submit Article
Open Access
For Referees
General Information
Review Article
Annual Referee Index
For Subscribers
Subscription Prices
Customer Service
Print Publication Dates

 Early Alert
Subscribe to our email Early Alert or RSS feeds for the latest journal papers.

 Connect with us
facebook   youtube

 PrometheusWiki
PrometheusWiki
Protocols in ecological and environmental plant physiology

 

Article << Previous     |     Next >>   Contents Vol 56(9)

Flowering time control: gene network modelling and the link to quantitative genetics

Stephen M. Welch A E, Zhanshan Dong A B, Judith L. Roe C, Sanjoy Das D

A Department of Agronomy, Kansas State University, Manhattan, KS 66506, USA.
B Current address: Pioneer Hi-Bred International, Inc., 7300 NW 62nd Ave, Johnston, IA 50131, USA.
C Division of Biology, Kansas State University, Manhattan, KS 66506, USA.
D Department of Electrical and Computer Engineering, Kansas State University, Manhattan, KS 66506, USA.
E Corresponding author. Email: welchsm@ksu.edu
 
PDF (451 KB) $25
 Export Citation
 Print
  


Abstract

Flowering is a key stage in plant development that initiates grain production and is vulnerable to stress. The genes controlling flowering time in the model plant Arabidopsis thaliana are reviewed. Interactions between these genes have been described previously by qualitative network diagrams. We mathematically relate environmentally dependent transcription, RNA processing, translation, and protein–protein interaction rates to resultant phenotypes. We have developed models (reported elsewhere) based on these concepts that simulate flowering times for novel A. thaliana genotype–environment combinations. Here we draw 12 contrasts between genetic network (GN) models of this type and quantitative genetics (QG), showing that both have equal contributions to make to an ideal theory. Physiological dominance and additivity are examined as emergent properties in the context of feed-forwards networks, an instance of which is the signal-integration portion of the A. thaliana flowering time network. Additivity is seen to be a complex, multi-gene property with contributions from mass balance in transcript production, the feed-forwards structure itself, and downstream promoter reaction thermodynamics. Higher level emergent properties are exemplified by critical short daylength (CSDL), which we relate to gene expression dynamics in rice (Oryza sativa). Next to be discussed are synergies between QG and GN relating to the quantitative trait locus (QTL) mapping of model coefficients. This suggests a new verification test useful in GN model development and in identifying needed updates to existing crop models. Finally, the utility of simple models is evinced by 80 years of QG theory and mathematical ecology.

Keywords: regulation, differential equations, photothermal, pathways.


   
Subscriber Login
Username:
Password:  

    


 
Top  Email this page
 
Legal & Privacy | Contact Us | Help

CSIRO

© CSIRO 1996-2012