Engineering agricultural soil microbiomes and predicting plant phenotypes
- PMID: 38429182
- DOI: 10.1016/j.tim.2024.02.003
Engineering agricultural soil microbiomes and predicting plant phenotypes
Abstract
Plant growth-promoting rhizobacteria (PGPR) can improve crop yields, nutrient use efficiency, plant tolerance to stressors, and confer benefits to future generations of crops grown in the same soil. Unlocking the potential of microbial communities in the rhizosphere and endosphere is therefore of great interest for sustainable agriculture advancements. Before plant microbiomes can be engineered to confer desirable phenotypic effects on their plant hosts, a deeper understanding of the interacting factors influencing rhizosphere community structure and function is needed. Dealing with this complexity is becoming more feasible using computational approaches. In this review, we discuss recent advances at the intersection of experimental and computational strategies for the investigation of plant-microbiome interactions and the engineering of desirable soil microbiomes.
Keywords: community modeling; host–microbe interactions; machine learning; microbiome-associated phenotype; plant microbiome; rhizosphere engineering.
Copyright © 2024 Elsevier Ltd. All rights reserved.
Conflict of interest statement
Declaration of interests No interests are declared.
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