Cargando…
An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review
Improving the tolerance of crop species to abiotic stresses that limit plant growth and productivity is essential for mitigating the emerging problems of global warming. In this context, imaged data analysis represents an effective method in the 4.0 technology era, where this method has the non-dest...
Autores principales: | , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10660044/ https://www.ncbi.nlm.nih.gov/pubmed/38027954 http://dx.doi.org/10.1016/j.heliyon.2023.e21650 |
_version_ | 1785137678009761792 |
---|---|
author | Anshori, Muhammad Fuad Dirpan, Andi Sitaresmi, Trias Rossi, Riccardo Farid, Muh Hairmansis, Aris Sapta Purwoko, Bambang Suwarno, Willy Bayuardi Nugraha, Yudhistira |
author_facet | Anshori, Muhammad Fuad Dirpan, Andi Sitaresmi, Trias Rossi, Riccardo Farid, Muh Hairmansis, Aris Sapta Purwoko, Bambang Suwarno, Willy Bayuardi Nugraha, Yudhistira |
author_sort | Anshori, Muhammad Fuad |
collection | PubMed |
description | Improving the tolerance of crop species to abiotic stresses that limit plant growth and productivity is essential for mitigating the emerging problems of global warming. In this context, imaged data analysis represents an effective method in the 4.0 technology era, where this method has the non-destructive and recursive characterization of plant phenotypic traits as selection criteria. So, the plant breeders are helped in the development of adapted and climate-resilient crop varieties. Although image-based phenotyping has recently resulted in remarkable improvements for identifying the crop status under a range of growing conditions, the topic of its application for assessing the plant behavioral responses to abiotic stressors has not yet been extensively reviewed. For such a purpose, bibliometric analysis is an ideal analytical concept to analyze the evolution and interplay of image-based phenotyping to abiotic stresses by objectively reviewing the literature in light of existing database. Bibliometricy, a bibliometric analysis was applied using a systematic methodology which involved data mining, mining data improvement and analysis, and manuscript construction. The obtained results indicate that there are 554 documents related to image-based phenotyping to abiotic stress until 5 January 2023. All document showed the future development trends of image-based phenotyping will be mainly centered in the United States, European continent and China. The keywords analysis major focus to the application of 4.0 technology and machine learning in plant breeding, especially to create the tolerant variety under abiotic stresses. Drought and saline become an abiotic stress often using image-based phenotyping. Besides that, the rice, wheat and maize as the main commodities in this topic. In conclusion, the present work provides information on resolutive interactions in developing image-based phenotyping to abiotic stress, especially optimizing high-throughput sensors in image-based phenotyping for the future development. |
format | Online Article Text |
id | pubmed-10660044 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-106600442023-11-02 An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review Anshori, Muhammad Fuad Dirpan, Andi Sitaresmi, Trias Rossi, Riccardo Farid, Muh Hairmansis, Aris Sapta Purwoko, Bambang Suwarno, Willy Bayuardi Nugraha, Yudhistira Heliyon Review Article Improving the tolerance of crop species to abiotic stresses that limit plant growth and productivity is essential for mitigating the emerging problems of global warming. In this context, imaged data analysis represents an effective method in the 4.0 technology era, where this method has the non-destructive and recursive characterization of plant phenotypic traits as selection criteria. So, the plant breeders are helped in the development of adapted and climate-resilient crop varieties. Although image-based phenotyping has recently resulted in remarkable improvements for identifying the crop status under a range of growing conditions, the topic of its application for assessing the plant behavioral responses to abiotic stressors has not yet been extensively reviewed. For such a purpose, bibliometric analysis is an ideal analytical concept to analyze the evolution and interplay of image-based phenotyping to abiotic stresses by objectively reviewing the literature in light of existing database. Bibliometricy, a bibliometric analysis was applied using a systematic methodology which involved data mining, mining data improvement and analysis, and manuscript construction. The obtained results indicate that there are 554 documents related to image-based phenotyping to abiotic stress until 5 January 2023. All document showed the future development trends of image-based phenotyping will be mainly centered in the United States, European continent and China. The keywords analysis major focus to the application of 4.0 technology and machine learning in plant breeding, especially to create the tolerant variety under abiotic stresses. Drought and saline become an abiotic stress often using image-based phenotyping. Besides that, the rice, wheat and maize as the main commodities in this topic. In conclusion, the present work provides information on resolutive interactions in developing image-based phenotyping to abiotic stress, especially optimizing high-throughput sensors in image-based phenotyping for the future development. Elsevier 2023-11-02 /pmc/articles/PMC10660044/ /pubmed/38027954 http://dx.doi.org/10.1016/j.heliyon.2023.e21650 Text en © 2023 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Review Article Anshori, Muhammad Fuad Dirpan, Andi Sitaresmi, Trias Rossi, Riccardo Farid, Muh Hairmansis, Aris Sapta Purwoko, Bambang Suwarno, Willy Bayuardi Nugraha, Yudhistira An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review |
title | An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review |
title_full | An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review |
title_fullStr | An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review |
title_full_unstemmed | An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review |
title_short | An overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: A bibliometric and literature review |
title_sort | overview of image-based phenotyping as an adaptive 4.0 technology for studying plant abiotic stress: a bibliometric and literature review |
topic | Review Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10660044/ https://www.ncbi.nlm.nih.gov/pubmed/38027954 http://dx.doi.org/10.1016/j.heliyon.2023.e21650 |
work_keys_str_mv | AT anshorimuhammadfuad anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT dirpanandi anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT sitaresmitrias anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT rossiriccardo anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT faridmuh anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT hairmansisaris anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT saptapurwokobambang anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT suwarnowillybayuardi anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT nugrahayudhistira anoverviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT anshorimuhammadfuad overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT dirpanandi overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT sitaresmitrias overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT rossiriccardo overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT faridmuh overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT hairmansisaris overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT saptapurwokobambang overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT suwarnowillybayuardi overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview AT nugrahayudhistira overviewofimagebasedphenotypingasanadaptive40technologyforstudyingplantabioticstressabibliometricandliteraturereview |