Plants exhibit remarkable abilities to learn, communicate, memorize, and develop stimulus-dependent decision-making circuits. Unlike animals, plant memory is uniquely rooted in cellular, molecular, and biochemical networks, lacking specialized organs for these functions. Consequently, plants can effectively learn and respond to diverse challenges, becoming used to recurring signals. Artificial intelligence (AI) and machine learning (ML) represent the new frontiers of biological sciences, offering the potential to predict crop behavior under environmental stresses associated with climate change. Epigenetic mechanisms, serving as the foundational blueprints of plant memory, are crucial in regulating plant adaptation to environmental stimuli. They achieve this adaptation by modulating chromatin structure and accessibility, which contribute to gene expression regulation and allow plants to adapt dynamically to changing environmental conditions. In this review, we describe novel methods and approaches in AI and ML to elucidate how plant memory occurs in response to environmental stimuli and priming mechanisms. Furthermore, we explore innovative strategies exploiting transgenerational memory for plant breeding to develop crops resilient to multiple stresses. In this context, AI and ML can aid in integrating and analyzing epigenetic data of plant stress responses to optimize the training of the parental plants.

Gaining insights into epigenetic memories through artificial intelligence and omics science in plants / Dobránszki, Judit; Vassileva, Valya; Agius, Dolores R.; Moschou, Panagiotis Nikolaou; Gallusci, Philippe; Berger, Margot M.J.; Farkas, Dóra; Basso, Marcos Fernando; Martinelli, Federico. - In: JOURNAL OF INTEGRATIVE PLANT BIOLOGY. - ISSN 1672-9072. - ELETTRONICO. - 67:(2025), pp. 9.2320-9.2349. [10.1111/jipb.13953]

Gaining insights into epigenetic memories through artificial intelligence and omics science in plants

Vassileva, Valya;Gallusci, Philippe;Basso, Marcos Fernando;Martinelli, Federico
2025

Abstract

Plants exhibit remarkable abilities to learn, communicate, memorize, and develop stimulus-dependent decision-making circuits. Unlike animals, plant memory is uniquely rooted in cellular, molecular, and biochemical networks, lacking specialized organs for these functions. Consequently, plants can effectively learn and respond to diverse challenges, becoming used to recurring signals. Artificial intelligence (AI) and machine learning (ML) represent the new frontiers of biological sciences, offering the potential to predict crop behavior under environmental stresses associated with climate change. Epigenetic mechanisms, serving as the foundational blueprints of plant memory, are crucial in regulating plant adaptation to environmental stimuli. They achieve this adaptation by modulating chromatin structure and accessibility, which contribute to gene expression regulation and allow plants to adapt dynamically to changing environmental conditions. In this review, we describe novel methods and approaches in AI and ML to elucidate how plant memory occurs in response to environmental stimuli and priming mechanisms. Furthermore, we explore innovative strategies exploiting transgenerational memory for plant breeding to develop crops resilient to multiple stresses. In this context, AI and ML can aid in integrating and analyzing epigenetic data of plant stress responses to optimize the training of the parental plants.
2025
67
2320
2349
Goal 3: Good health and well-being
Dobránszki, Judit; Vassileva, Valya; Agius, Dolores R.; Moschou, Panagiotis Nikolaou; Gallusci, Philippe; Berger, Margot M.J.; Farkas, Dóra; Basso, Ma...espandi
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1452977
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