Study reports breakthrough to measure plant improvements to help farmers boost production
CHAMPAIGN, Ill. — An international team is using advanced tools to develop crops that give farmers more options for sustainably producing more food on less land. To do this, thousands of plant prototypes must be carefully analyzed to figure out which genetic tweaks work best. Today, in a special issue of the journal Remote Sensing of Environment, scientists have shown a new technology can more quickly scan an entire field of plants to capture improvements in their natural capacity to harvest energy from the sun.
“The method we developed allows us to measure improvements we have engineered in a plant’s photosynthesis machinery in about ten seconds, compared to the traditional method that takes up 30 minutes,” Katherine Meacham-Hensold, a postdoctoral researcher at the University of Illinois, who led this work for a research project called Realizing Increased Photosynthetic Efficiency (RIPE). “That’s a major advance because it allows our team to analyze an enormous amount of genetic material to efficiently pinpoint traits that could greatly improve crop performance.”
RIPE, which is led by Illinois, is engineering crops to be more productive by improving photosynthesis, the natural process all plants use to convert sunlight into energy and yield. RIPE is supported by the Bill & Melinda Gates Foundation, the Foundation for Food and Agriculture Research (FFAR), and the U.K. Government’s Department for International Development (DFID).
The traditional method for assessing photosynthesis analyzes the exchange of gases through the leaf; it provides a huge amount of information, but it takes 30 minutes to measure each leaf. A faster, or “higher-throughput” method, called spectral analysis, analyzes the light that is reflected back from leaves to predict photosynthetic capacity in as little as 10 seconds.
“The question we set out to answer is: can we apply spectral techniques to predict photosynthetic capacity when we have genetically altered the photosynthetic machinery,” said RIPE research leader Carl Bernacchi, a scientist with the U.S. Department of Agriculture, Agricultural Research Service, who is based at Illinois’ Carl R. Woese Institute for Genomic Biology. “Before this study, we didn’t know if changing the plant’s photosynthetic pathways would change the signal that is detected by spectral measurements.”
Although they can prove this method can be used to screen crops that have been engineered to improve photosynthesis, researchers have not uncovered what spectral analysis measures exactly. “Spectral analysis requires custom-built models to translate spectral data into measurements of photosynthetic capacity that must be recreated each year,” Meacham said. “Our next challenge is to figure out what we are measuring so that we can build predictive models that can be used year after year to compare results over time.”
“While there are still hurdles ahead, spectral analysis is a game-changing technique that can be used to assess a variety of photosynthetic improvements to single out the changes that are most likely to substantially, and sustainably, increase crop yields,” said RIPE executive committee member Christine Raines, a professor of plant molecular physiology at the University of Essex, whose engineered crops were analyzed with the technique. “These tools can help us speed up our efforts to develop high-yielding crops for farmers working to help feed the world.”
Realizing Increased Photosynthetic Efficiency (RIPE) is engineering staple food crops to more efficiently turn the sun’s energy into food to sustainably increase worldwide food productivity, with support from the Bill & Melinda Gates Foundation, the Foundation for Food and Agriculture Research, and the U.K. Government's Department for International Development.
RIPE is led by the University of Illinois in partnership with The Australian National University, Chinese Academy of Sciences, Commonwealth Scientific and Industrial Research Organisation, Lancaster University, Louisiana State University, University of California, Berkeley, University of Essex, and U.S. Department of Agriculture, Agricultural Research Service.
A one-minute video about this work as well as photos and captions are available online.
The paper “High-throughput field phenotyping using hyperspectral reflectance and partial least squares regression (PLSR) reveals genetic modifications to photosynthetic capacity” is published by the journal Remote Sensing of Environment is available online (https://doi.org/10.1016/j.rse.2019.04.029) or by request. Co-authors of this publication include Christopher Montes; Jin Wu; Kaiyu Guan; Peng Fu; Elizabeth Ainsworth; Taylor Pederson; Caitlin Moore; Kenny L Brown; and Christine Raines.