Abstract
Bibliometric mapping is a tool that allows you to visualize the academic production, as well as the publication trends over the years. In this study, we carried out the bibliometric mapping of citation, co-occurrence of keywords, co-citation, and bibliographic coupling for “animal genetic resources” and “climate change.” Scopus was used to obtain the publication information and VOSViewer software to produce the maps. A total of 1171 documents were found from authors in 129 countries from 1975 to 2022. The USA, UK, and China are the top three countries producing scientific research on the topics of animal genetic resources and climate change. China is the country with the most recent publications. The USA, the UK, and China stood out in almost all the analyses, but other Asian and Latin American countries appear more recently and are becoming more important in this scenario. Most of the work is related to studies involving animal adaptation, conservation, and genetic diversity; however, in recent years, there has been an increasing amount of research involving genetic engineering, such as the use of genetic sequencing and single nucleotide polimorphism (SNP). This study can help to understand new research trends in the area of animal genetic resources and climate change and can assist in the development of future actions within the research community.
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Data availability
The datasets generated during and/or analyzed during the current study are not publicly available because they are data that were collected manually during the experiment and stored by the researchers in their personal files but are available from the corresponding author upon reasonable request.
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Acknowledgements
The authors acknowledge the Coordination for the Improvement of Higher-Level Personnel (CAPES), Brazil.
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All authors contributed to the study conception and design. Renata A. Vieira: formal analysis, investigation, writing – original draft, writing – review. Concepta McManus: conceptualization, methodology, formal analysis, investigation, writing – original draft, writing – review & editing, visualization, supervision.
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Annex
TITLE-ABS-KEY (climate AND change) OR TITLE-ABS-KEY (animal AND resources) OR TITLE-ABS-KEY (genetic AND resources) AND TITLE-ABS-KEY (sheep) OR TITLE-ABS-KEY (horse) OR TITLE-ABS-KEY (goat) OR TITLE-ABS-KEY (cattle) OR TITLE-ABS-KEY (bovine) OR TITLE-ABS-KEY (ovine) OR TITLE-ABS-KEY (equine) OR TITLE-ABS-KEY (caprine) AND NOT TITLE-ABS-KEY (bacteria) AND NOT TITLE-ABS-KEY (buffalo) AND NOT TITLE-ABS-KEY (mountain sheep) AND NOT TITLE-ABS-KEY (llama) AND NOT TITLE-ABS-KEY (virus) AND NOT TITLE-ABS-KEY (rat) AND NOT TITLE-ABS-KEY(helminth) AND NOT TITLE-ABS-KEY(fish) AND NOT TITLE-ABS-KEY(ibex) AND NOT TITLE-ABS-KEY(alpine) AND NOT TITLE-ABS-KEY(antelope) AND NOT TITLE-ABS-KEY(wildlife) AND NOT TITLE-ABS-KEY(seagrass) AND NOT TITLE-ABS-KEY(chicken) AND NOT TITLE-ABS-KEY(warms)) AND NOT TITLE-ABS-KEY (peat) AND NOT TITLE-ABS-KEY (tree) AND NOT TITLE-ABS-KEY (primate) AND NOT TITLE-ABS-KEY (crop) AND NOT TITLE-ABS-KEY (soil) AND NOT TITLE-ABS-KEY (topography) AND NOT TITLE-ABS-KEY(antimicrobials) AND NOT TITLE-ABS-KEY (grass) AND NOT TITLE-ABS-KEY (pasture) AND NOT TITLE-ABS-KEY(dominance) AND NOT TITLE-ABS-KEY (methane) AND NOT TITLE-ABS-KEY (crop lands) AND NOT TITLE-ABS-KEY(oil) AND TITLE-ABS-KEY (oilseed) AND NOT TITLE-ABS-KEY (seed) AND NOT TITLE-ABS-KEY(rangeland) AND NOT TITLE-ABS-KEY(ranch) AND NOT TITLE-ABS-KEY(farmer) AND NOT TITLE-ABS-KEY (biogas) AND NOT TITLE-ABS-KEY (vehicular) AND NOT TITLE-ABS-KEY (carbon) AND NOT TITLE-ABS-KEY (vaccination) AND NOT TITLE-ABS-KEY (glycation) AND NOT TITLE-ABS-KEY (isotope) AND NOT TITLE-ABS-KEY (taxonomic) AND NOT TITLE-ABS-KEY(nutrition) AND NOT TITLE-ABS-KEY(wind) AND NOT TITLE-ABS-KEY(rain) AND NOT TITLE-ABS-KEY(prion) AND NOT TITLE-ABS-KEY(protein) AND NOT TITLE-ABS-KEY(marine) AND NOT TITLE-ABS-KEY(river) AND NOT TITLE-ABS-KEY(forests) AND NOT TITLE-ABS-KEY(vegetation) AND ( EXCLUDE ( SUBJAREA,"BUSI") OR EXCLUDE ( SUBJAREA,"PHAR") OR EXCLUDE ( SUBJAREA,"DECI") OR EXCLUDE ( SUBJAREA,"MATE") OR EXCLUDE ( SUBJAREA,"NURS") OR EXCLUDE ( SUBJAREA,"PSYC") OR EXCLUDE ( SUBJAREA,"HEAL") OR EXCLUDE ( SUBJAREA,"DENT") OR EXCLUDE ( SUBJAREA,"ARTS") OR EXCLUDE ( SUBJAREA,"NEUR") OR EXCLUDE ( SUBJAREA,"MEDI")) AND ( EXCLUDE ( PUBYEAR,1970) OR EXCLUDE ( PUBYEAR,1969) OR EXCLUDE ( PUBYEAR,1968) OR EXCLUDE ( PUBYEAR,1967) OR EXCLUDE ( PUBYEAR,1938)) AND ( EXCLUDE ( EXACTSRCTITLE,"Iop Conference Series Earth And Environmental Science") OR EXCLUDE ( EXACTSRCTITLE,"Acta Horticulturae") OR EXCLUDE ( EXACTSRCTITLE,"International Journal Of Machine Learning And Cybernetics") OR EXCLUDE ( EXACTSRCTITLE,"Korean Journal Of Mycology") OR EXCLUDE ( EXACTSRCTITLE,"Land") OR EXCLUDE ( EXACTSRCTITLE,"Manual Of Animal Andrology") OR EXCLUDE ( EXACTSRCTITLE,"Proceedings Of The 36th Aaai Conference On Artificial Intelligence Aaai 2022")) AND ( LIMIT-TO ( LANGUAGE,"English")) AND ( EXCLUDE ( EXACTKEYWORD,"Human") OR EXCLUDE ( EXACTKEYWORD,"Humans") OR EXCLUDE ( EXACTKEYWORD,"Agricultural Land") OR EXCLUDE ( EXACTKEYWORD,"Agricultural Worker") OR EXCLUDE ( EXACTKEYWORD,"Pasture") OR EXCLUDE ( EXACTKEYWORD,"Questionnaire") OR EXCLUDE ( EXACTKEYWORD,"Fertilizers") OR EXCLUDE ( EXACTKEYWORD,"Priority Journal") OR EXCLUDE ( EXACTKEYWORD,"Wild Animal") OR EXCLUDE ( EXACTKEYWORD,"Farmers") OR EXCLUDE ( EXACTKEYWORD,"Nonhuman") OR EXCLUDE ( EXACTKEYWORD,"Agriculture") OR EXCLUDE ( EXACTKEYWORD,"Rangeland") OR EXCLUDE ( EXACTKEYWORD,"Heat-Shock Response") OR EXCLUDE ( EXACTKEYWORD,"Grassland") OR EXCLUDE ( EXACTKEYWORD,"Pastoralism") OR EXCLUDE ( EXACTKEYWORD,"Cryopreservation") OR EXCLUDE ( EXACTKEYWORD,"Greenhouse Gas") OR EXCLUDE ( EXACTKEYWORD,"Greenhouse Gases") OR EXCLUDE (EXACTKEYWORD,"Land Use") OR EXCLUDE ( EXACTKEYWORD,"Management") OR EXCLUDE ( EXACTKEYWORD,"Management Practice") OR EXCLUDE ( EXACTKEYWORD,"Food Security") OR EXCLUDE ( EXACTKEYWORD,"Lakes") OR EXCLUDE ( EXACTKEYWORD,"Life Cycle Analysis") OR EXCLUDE ( EXACTKEYWORD,"Rainfall") OR EXCLUDE ( EXACTKEYWORD,"Remote Sensing")).
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Vieira, R.A., McManus, C. Bibliographic mapping of animal genetic resources and climate change in farm animals. Trop Anim Health Prod 55, 259 (2023). https://doi.org/10.1007/s11250-023-03671-8
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DOI: https://doi.org/10.1007/s11250-023-03671-8