Please use this identifier to cite or link to this item: http://223.31.159.10:8080/jspui/handle/123456789/1807
Title: An artificial neural network–based deep learning model to predict combined stress impact and interaction in plants
Authors: Priya, Piyush
Pandey, Prachi
Jain, Rubi
Kandpal, Manu
Jain, Shradha
Chaudhury, Rim
Ramegowda, Venkategowda
Senthil-Kumar, Muthappa
Keywords: artificial intelligence
artificial neural networks
combined stresses
computational phenomics
deep learning
digital plant phenomics
knowledge‐based systems
Issue Date: 2026
Publisher: John Wiley & Sons
Citation: Applications in Plant Sciences, (In Press)
Abstract: Premise: Plants are frequently exposed to combinations of abiotic and biotic stresses that pose a greater threat to yield and productivity than individual stresses. However, knowledge of the impact of many stress combinations in numerous plants is limited due to the lack of experimental data, which could take decades to generate. To overcome this limitation, we utilized existing literature data from various plant species and stress combinations to derive biological inferences, thereby gaining a comprehensive understanding of plant responses through a computational tool. Methods: Public databases were used to gather literature on the impact of various abiotic and biotic stress combinations. Then, a composite artificial neural network (ANN)–based multi-target classification and regression deep learning model was developed using machine learning algorithms. Results: The model predicted the impact of stress interactions in plants, including the morphological parameters affected and percentage changes in those parameters, with an overall accuracy of 76.33%. Predicted reductions in yield were validated in rice under combined drought and heat stress. Discussion: The ANN-based model developed in this study is a valuable resource for plant researchers seeking to understand the impact of stress combinations. The tool can make use of multivariate and complex combined stress datasets.
Description: Accepted date: 8 November 2025
URI: https://bsapubs.onlinelibrary.wiley.com/doi/10.1002/aps3.70047
http://223.31.159.10:8080/jspui/handle/123456789/1807
ISSN: 2168-0450
2168-0450
Appears in Collections:Institutional Publications

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