EcoBOT: an AI/ML enabled automated phenotyping capability for model plants.
Peter F Andeer, Petrus H Zwart, Daniela Ushizima, Marcus M Noack, Lloyd T Cornmesser, Thomas M Vess, Zineb Sordo, Stephen Tan, Joseph Zorzi, Chelsea Hernandez, Vlastimil Novak, Yezhang Ding, John P Vogel, Benjamin P Bowen, James A Sethian
Abstract
Open AccessIntroduction: Advances in automation and AI/ML offer new opportunities for plant science, including design, modeling, and analysis. This study aimed to develop an automated platform for researching small model plants under axenic conditions and integrate it with AI/ML tools. Methods: The EcoBOT platform was developed, which consists of sterile containers (EcoFABs) for growing plants and imaging for monitoring plant growth and health. Brachypodium distachyon was grown on the EcoBOT, and its response to nutrient limitation and copper stress was evaluated. Results: The results showed that Brachypodium distachyon grown in the EcoBOT maintained sterility and responded to nutrient limitation and copper stress. Analysis of over 6,500 root and shoot images revealed varying sensitivity and response rates to copper. Bayesian Optimization was used to improve model accuracies relating copper concentrations to plant biomass via sequential experiments, resulting in a >30% improvement. Discussion: The findings of this study demonstrate the potential of the EcoBOT platform for researching plant responses to environmental factors. Future experiments could focus on relating other chemical stresses and microbial interactions to create generalized models of plant responses.