Intelligent multi-modeling reveals biological mechanisms and adaptive phenotypes in hair sheep lambs from a semi-arid region (2025)
- Authors:
- Silveira, Robson Mateus Freitas

- Ribeiro, Fábio Augusto

- Santos, João Pedro dos
- Fávero, Luiz Paulo Lopes

- Tedeschi, Luis Orlindo
- Alves, Anderson Antonio Carvalho
- Sarti, Danilo Augusto
- Primo, Anaclaudia Alves
- Costa, Hélio Henrique Araújo
- Ribeiro, Neila Lidiany
- Reitenbach, Amanda Felipe
- Carvalho, Fabianno Cavalcante de
- Landim, Aline Vieira
- Silveira, Robson Mateus Freitas
- USP affiliated authors: FAVERO, LUIZ PAULO LOPES - FEA ; RIBEIRO, FABIO AUGUSTO - ESALQ ; SANTOS, JOÃO PEDRO DOS - ESALQ ; SILVEIRA, ROBSON MATEUS FREITAS - ESALQ
- Unidades: FEA; ESALQ
- DOI: 10.3390/genes16070812
- Subjects: ADAPTAÇÃO ANIMAL; BIOMARCADORES; CARCAÇA; CARNES E DERIVADOS; CORDEIROS; FENÓTIPOS; REGULAÇÃO DA TEMPERATURA CORPORAL ANIMAL; ZONAS SEMIÁRIDAS
- Keywords: Análise avançada
- Agências de fomento:
- Language: Inglês
- Imprenta:
- Source:
- Este periódico é de acesso aberto
- Este artigo NÃO é de acesso aberto
-
ABNT
SILVEIRA, Robson Mateus Freitas et al. Intelligent multi-modeling reveals biological mechanisms and adaptive phenotypes in hair sheep lambs from a semi-arid region. Genes, v. 16, p. 1-22, 2025Tradução . . Disponível em: https://doi.org/10.3390/genes16070812. Acesso em: 03 mar. 2026. -
APA
Silveira, R. M. F., Ribeiro, F. A., Santos, J. P. dos, Fávero, L. P. L., Tedeschi, L. O., Alves, A. A. C., et al. (2025). Intelligent multi-modeling reveals biological mechanisms and adaptive phenotypes in hair sheep lambs from a semi-arid region. Genes, 16, 1-22. doi:10.3390/genes16070812 -
NLM
Silveira RMF, Ribeiro FA, Santos JP dos, Fávero LPL, Tedeschi LO, Alves AAC, Sarti DA, Primo AA, Costa HHA, Ribeiro NL, Reitenbach AF, Carvalho FC de, Landim AV. Intelligent multi-modeling reveals biological mechanisms and adaptive phenotypes in hair sheep lambs from a semi-arid region [Internet]. Genes. 2025 ; 16 1-22.[citado 2026 mar. 03 ] Available from: https://doi.org/10.3390/genes16070812 -
Vancouver
Silveira RMF, Ribeiro FA, Santos JP dos, Fávero LPL, Tedeschi LO, Alves AAC, Sarti DA, Primo AA, Costa HHA, Ribeiro NL, Reitenbach AF, Carvalho FC de, Landim AV. Intelligent multi-modeling reveals biological mechanisms and adaptive phenotypes in hair sheep lambs from a semi-arid region [Internet]. Genes. 2025 ; 16 1-22.[citado 2026 mar. 03 ] Available from: https://doi.org/10.3390/genes16070812 - Physiological adaptability of livestock to climate change: a global model-based assessment for the 21st century
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Informações sobre o DOI: 10.3390/genes16070812 (Fonte: oaDOI API)
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