2022
DOI: 10.1016/j.heliyon.2022.e12005
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Bibliometric analysis of publications discussing the use of the artificial intelligence technique agent-based models in sustainable agriculture

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Cited by 13 publications
(7 citation statements)
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References 103 publications
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“…Looking ahead, AI in lung imaging is poised for further expansion with advancements in multimodal models integrating patient data streams, foundational AI models trained on extensive datasets, and specialized medical AI models tailored for specific conditions such as lung cancer. However, addressing challenges such as regulation, quality assurance, data diversity, and transparency in AI algorithms will be critical for maximizing the potential benefits of AI in lung imaging while safeguarding patient safety and ensuring equitable access to advanced healthcare technologies [ 60 - 62 ]. Figure 3 shows challenges and limitations.…”
Section: Reviewmentioning
confidence: 99%
“…Looking ahead, AI in lung imaging is poised for further expansion with advancements in multimodal models integrating patient data streams, foundational AI models trained on extensive datasets, and specialized medical AI models tailored for specific conditions such as lung cancer. However, addressing challenges such as regulation, quality assurance, data diversity, and transparency in AI algorithms will be critical for maximizing the potential benefits of AI in lung imaging while safeguarding patient safety and ensuring equitable access to advanced healthcare technologies [ 60 - 62 ]. Figure 3 shows challenges and limitations.…”
Section: Reviewmentioning
confidence: 99%
“…In the context of identifying research gaps, ML techniques may facilitate the discovery of research gaps by analyzing large volumes of scientific evidence in a systematic, scalable, and efficient manner. To understand the current status quo of scientific evidence available, several studies leveraged ML to perform natural language processing, bibliometric analysis, and text mining, which have yielded promising results in several domains, including health care [9][10][11][12], social sciences [16][17][18][19], and environmental sciences [20]. However, the application of ML and its potential for identifying research gaps in rapidly evolving fields remains underexplored.…”
Section: Research Problem and Aimmentioning
confidence: 99%
“…In ref. [6], a literature review was conducted on artificial intelligence and agriculture. To explore research on technology adoption in agriculture and understand the determinants of technology adoption using models, such as the technology acceptance model, a bibliometric analysis was conducted [7].…”
Section: Bibliometric Survey On Digital Agriculturementioning
confidence: 99%