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  1. 61

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

    Pubblicazione 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 di L. Cavicchio (21751946)

    Pubblicazione 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 di L. Cavicchio (21751946)

    Pubblicazione 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 di L. Cavicchio (21751946)

    Pubblicazione 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 di L. Cavicchio (21751946)

    Pubblicazione 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 di L. Cavicchio (21751946)

    Pubblicazione 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
  8. 68
  9. 69
  10. 70

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

    Pubblicazione 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 di Ronald Vougat Ngom (18239415)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Yaniv Altshuler (645084)

    Pubblicazione 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 di Hanaka Furuta (21810740)

    Pubblicazione 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. ...”
  20. 80