Showing 61 - 80 results of 163 for search 'farm is (((((resolved. OR removedddddds.) OR resolved.) OR revolves.) OR involved.) OR involves.)', query time: 0.12s Refine Results
  1. 61

    Image 4_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.tiff by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  2. 62

    Image 2_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.tiff by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  3. 63

    Image 9_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.tiff by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  4. 64

    Image 5_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.tiff by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  5. 65

    Image 3_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.tiff by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  6. 66

    Image 6_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.tiff by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  7. 67
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  10. 70

    Data Sheet 1_Swine influenza surveillance in Italy uncovers regional and farm-based genetic clustering.pdf by L. Cavicchio (21751946)

    Published 2025
    “…</p>Material and methods<p>Passive surveillance, conducted from 2013 to 2022, involved 253 farms located in three regions, collecting over 3,000 samples that were tested for swIAV. …”
  11. 71

    Data Sheet 1_Biosecurity implementation in poultry farms across Europe and neighboring countries: a systematic review.zip by Ronald Vougat Ngom (18239415)

    Published 2025
    “…Despite relatively broad geographical coverage, including eight multi-country studies involving 36 national assessments, the distribution of studies was uneven. …”
  12. 72

    Table 6_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  13. 73

    Table 4_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  14. 74

    Table 5_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  15. 75

    Table 1_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  16. 76

    Table 2_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  17. 77

    Table 3_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  18. 78

    Table 7_AI-based predictive modeling for enteric methane mitigation: cross-farm validation using an allicin based essential oil.docx by Yaniv Altshuler (645084)

    Published 2025
    “…Since the wide variety of feed additives available in the market, validating the model across a diverse range of additives is critical for its adoption in commercial farming practices. In this study, we extensively validate the model across ten commercial farms over a three-month period, involving 339 Holstein cows, and using an allicin-based essential oil (Allimax), an organosulfur compound obtained from garlic with potential to reduce enteric methane emissions. …”
  19. 79

    Supplementary file 1_A novel multilayer cultivation strategy improves light utilization and fruit quality in plant factories for tomato production.docx by Hanaka Furuta (21810740)

    Published 2025
    “…The conventional I-shaped method involved vertical growth on the top tier with downward lighting, while the novel S-shaped method trained each plant horizontally across the second to fourth tiers with lateral lighting on each level. …”
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