Kaydedildi:
Detaylı Bibliyografya
Yazar: Ravleen Kaur Badwal1*, Pavan Chouksey2, Rohit3
Materyal Türü: Recurso digital
Dil:
Baskı/Yayın Bilgisi: Zenodo 2025
Online Erişim:https://doi.org/10.5281/zenodo.17496152
Etiketler: Etiketle
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İçindekiler:
  • <p>Climate change threatens global agriculture through rising temperatures, unpredictable rainfall, and extreme weather, reducing crop yields. Genomic selection (GS), using high-throughput genotyping and predictive modelling, enables breeders to efficiently select traits like drought tolerance, heat resilience, and stable yield. This article reviews GS fundamentals, models, and the integration of machine learning and multi-omics data, with case studies in rice, while discussing challenges and opportunities for implementing GS in diverse and resource-limited environments.</p>