非生物成分
非生物胁迫
生物逆境
物候学
生物
环境科学
人工智能
计算机科学
生态学
基因组学
生物化学
基因组
基因
作者
Caiming Gou,Sara Zafar,Zuhair Hasnain,Nazia Aslam,Naeem Iqbal,Sammar Abbas,Hui Li,Jia Li,Bo Chen,Arthur J. Ragauskas,Manzar Abbas
标识
DOI:10.31083/j.fbl2901020
摘要
Biotic and abiotic stresses significantly affect plant fitness, resulting in a serious loss in food production. Biotic and abiotic stresses predominantly affect metabolite biosynthesis, gene and protein expression, and genome variations. However, light doses of stress result in the production of positive attributes in crops, like tolerance to stress and biosynthesis of metabolites, called hormesis. Advancement in artificial intelligence (AI) has enabled the development of high-throughput gadgets such as high-resolution imagery sensors and robotic aerial vehicles, i.e., satellites and unmanned aerial vehicles (UAV), to overcome biotic and abiotic stresses. These High throughput (HTP) gadgets produce accurate but big amounts of data. Significant datasets such as transportable array for remotely sensed agriculture and phenotyping reference platform (TERRA-REF) have been developed to forecast abiotic stresses and early detection of biotic stresses. For accurately measuring the model plant stress, tools like Deep Learning (DL) and Machine Learning (ML) have enabled early detection of desirable traits in a large population of breeding material and mitigate plant stresses. In this review, advanced applications of ML and DL in plant biotic and abiotic stress management have been summarized.
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