Species-independent analytical tools for next-generation agriculture

被引:0
|
作者
Tedrick Thomas Salim Lew
Rajani Sarojam
In-Cheol Jang
Bong Soo Park
Naweed I. Naqvi
Min Hao Wong
Gajendra P. Singh
Rajeev J. Ram
Oded Shoseyov
Kazuki Saito
Nam-Hai Chua
Michael S. Strano
机构
[1] Massachusetts Institute of Technology,Department of Chemical Engineering
[2] 1 Research Link,Temasek Life Sciences Laboratory
[3] National University of Singapore,Disruptive & Sustainable Technologies for Agricultural Precision
[4] Singapore-MIT Alliance for Research and Technology,Research Laboratory of Electronics
[5] Massachusetts Institute of Technology,The Faculty of Agriculture, Food and Environment
[6] The Hebrew University of Jerusalem,Metabolomics Research Group
[7] RIKEN Center for Sustainable Resource Science,undefined
来源
Nature Plants | 2020年 / 6卷
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摘要
Innovative approaches are urgently required to alleviate the growing pressure on agriculture to meet the rising demand for food. A key challenge for plant biology is to bridge the notable knowledge gap between our detailed understanding of model plants grown under laboratory conditions and the agriculturally important crops cultivated in fields or production facilities. This Perspective highlights the recent development of new analytical tools that are rapid and non-destructive and provide tissue-, cell- or organelle-specific information on living plants in real time, with the potential to extend across multiple species in field applications. We evaluate the utility of engineered plant nanosensors and portable Raman spectroscopy to detect biotic and abiotic stresses, monitor plant hormonal signalling as well as characterize the soil, phytobiome and crop health in a non- or minimally invasive manner. We propose leveraging these tools to bridge the aforementioned fundamental gap with new synthesis and integration of expertise from plant biology, engineering and data science. Lastly, we assess the economic potential and discuss implementation strategies that will ensure the acceptance and successful integration of these modern tools in future farming practices in traditional as well as urban agriculture.
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页码:1408 / 1417
页数:9
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