Citations (6)
Keep up to date with the latest research on this topic with citation updates for this article.
Read on this site (1)
Ožbalt Podpečan, Petra Zrimšek, Janko Mrkun, Marko Goličnik, Anita Radovanović, Ljubomir Jovanović, Ivan Vujanac, Radiša Prodanović & Danijela Kirovski. (2020) Tresholds of blood variables obtained by receiver operating characteristic analysis for indication of fat and glycogen content in the liver of postpartum dairy cows. Italian Journal of Animal Science 19:1, pages 303-309.
Read now
Read now
Articles from other publishers (5)
Sergey S. Yurochka, Igor M. Dovlatov, Dmitriy Y. Pavkin, Vladimir A. Panchenko, Aleksandr A. Smirnov, Yuri A. Proshkin & Igor Yudaev. (2023) Technology of Automatic Evaluation of Dairy Herd Fatness. Agriculture 13:7, pages 1363.
Crossref
Crossref
Jana Lasser, Caspar Matzhold, Christa Egger-Danner, Birgit Fuerst-Waltl, Franz Steininger, Thomas Wittek & Peter Klimek. (2021) Integrating diverse data sources to predict disease risk in dairy cattle—a machine learning approach. Journal of Animal Science 99:11.
Crossref
Crossref
J. Schenkenfelder & C. Winckler. (2021) Animal welfare outcomes and associated risk indicators on Austrian dairy farms: A cross-sectional study. Journal of Dairy Science 104:10, pages 11091-11107.
Crossref
Crossref
V.A.E. Becker, E. Stamer & G. Thaller. (2021) Liability to diseases and their relation to dry matter intake and energy balance in German Holstein and Fleckvieh dairy cows. Journal of Dairy Science 104:1, pages 628-643.
Crossref
Crossref
Marianne Cockburn. (2020) Review: Application and Prospective Discussion of Machine Learning for the Management of Dairy Farms. Animals 10:9, pages 1690.
Crossref
Crossref