The University of Western Australia's Institute of Agriculture has collaborated with international researchers to develop a roadmap to fast-forward breeding for accelerated crop improvement and rapid delivery systems, which will lead to a food-secure world.
Two papers, recently published in Trends in Genetics and Nature Biotechnology, were the result of a Perth-based workshop organised by The UWA Institute of Agriculture and the International Crops Research Institute for the Semi-Arid Tropics (ICRISAT), and attended by research institutions from Australia, India, Austria, China, Mexico and the United Kingdom.
The current world population of 7.8 billion is predicted to reach 10 billion by 2057. Future access to affordable and healthy food will be challenging, with malnutrition already affecting one in three people worldwide. The papers recognized that global crop production systems need to expand their outputs sustainably to feed this rapidly growing human population.
The fast-forward breeding framework provided a strategy for integrating advanced technology in crop genome sequencing, phenotyping and systems biology, together with efficient trait mapping procedures and genomic prediction (including machine learning and artificial intelligence).
This would lead to establishing rapid delivery systems into global farming practices, which is required to achieve sustainable food security in the developing world.
Hackett Professor Kadambot Siddique, the Director of UWA Institute of Agriculture, worked with ICRISAT's Accelerated Crop Improvement Research Program Director and Adjunct Professor from UWA and Murdoch University, Rajeev Varshney, to develop the strategy and opinion papers.
"Realizing desired productivity gains in the field is imperative for securing an adequate future food supply for 10 billion people," Professor Siddique said.
"We need to establish and deploy rapid delivery systems to ensure farmers can access high quality seeds and appropriate agronomy packages."
Professor Varshney said increasing adoption of machine learning algorithms would provide valuable data about the genetic basis and molecular mechanisms of crops.
Click here to see more...