Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Hovinen, M.
Aisla, A.-M.
and
Pyörälä, S.
2006.
Accuracy and reliability of mastitis detection with electrical conductivity and milk colour measurement in automatic milking.
Acta Agriculturae Scandinavica, Section A - Animal Science,
Vol. 56,
Issue. 3-4,
p.
121.
Kamphuis, Claudia
Pietersma, Diederik
van der Tol, Rik
Wiedemann, Martin
and
Hogeveen, Henk
2008.
Using sensor data patterns from an automatic milking system to develop predictive variables for classifying clinical mastitis and abnormal milk.
Computers and Electronics in Agriculture,
Vol. 62,
Issue. 2,
p.
169.
Viguier, Caroline
Arora, Sushrut
Gilmartin, Niamh
Welbeck, Katherine
and
O’Kennedy, Richard
2009.
Mastitis detection: current trends and future perspectives.
Trends in Biotechnology,
Vol. 27,
Issue. 8,
p.
486.
Kamphuis, C.
Mollenhorst, H.
Heesterbeek, J.A.P.
and
Hogeveen, H.
2010.
Detection of clinical mastitis with sensor data from automatic milking systems is improved by using decision-tree induction.
Journal of Dairy Science,
Vol. 93,
Issue. 8,
p.
3616.
Hogeveen, Henk
Kamphuis, Claudia
Steeneveld, Wilma
and
Mollenhorst, Herman
2010.
Sensors and Clinical Mastitis—The Quest for the Perfect Alert.
Sensors,
Vol. 10,
Issue. 9,
p.
7991.
Hovinen, M.
and
Pyörälä, S.
2011.
Invited review: Udder health of dairy cows in automatic milking.
Journal of Dairy Science,
Vol. 94,
Issue. 2,
p.
547.
Millogo, Vinsoun
Norell, Lennart
Ouédraogo, Georges Anicet
Svennersten-Sjaunja, Kerstin
and
Agenäs, Sigrid
2012.
Effect of different hand-milking techniques on milk production and teat treatment in Zebu dairy cattle.
Tropical Animal Health and Production,
Vol. 44,
Issue. 5,
p.
1017.
Khatun, Momena
Clark, Cameron E. F.
Lyons, Nicolas A.
Thomson, Peter C.
Kerrisk, Kendra L.
and
García, Sergio C.
2017.
Early detection of clinical mastitis from electrical conductivity data in an automatic milking system.
Animal Production Science,
Vol. 57,
Issue. 7,
p.
1226.
Khatun, M.
Thomson, P.C.
Kerrisk, K.L.
Lyons, N.A.
Clark, C.E.F.
Molfino, J.
and
García, S.C.
2018.
Development of a new clinical mastitis detection method for automatic milking systems.
Journal of Dairy Science,
Vol. 101,
Issue. 10,
p.
9385.
Ryan, Elise Lauren
Klopfenstein, Joseph J.
and
Kutzler, Michelle Anne
2020.
Intramammary antibiotics with complementary acupuncture decreases milk serum N‐acetyl‐beta‐D‐glucosaminidase concentrations in dairy cattle with subclinical mastitis.
Reproduction in Domestic Animals,
Vol. 55,
Issue. 12,
p.
1747.
Hogeveen, Henk
Klaas, Ilka C.
Dalen, Gunnar
Honig, Hen
Zecconi, Alfonso
Kelton, David F.
and
Sánchez Mainar, Maria
2021.
Novel ways to use sensor data to improve mastitis management.
Journal of Dairy Science,
Vol. 104,
Issue. 10,
p.
11317.
Ebinghaus, Asja
Johns, Julia
and
Knierim, Ute
2023.
Blood in milk in horned dairy cows–Exploration of incidences and prevention opportunities.
Veterinary and Animal Science,
Vol. 21,
Issue. ,
p.
100307.
Ongom, Jonathan
Okella, Hedmon
Ferreira, Fernanda C.
and
Okello, Emmanuel
2024.
Association between automatic milking system parameters and intramammary infections in dairy cows at dry-off.
Frontiers in Animal Science,
Vol. 5,
Issue. ,
Stobernack, Tobias
Höper, Tessa
and
Herfurth, Uta M.
2024.
How processing affects marker peptide quantification – A comprehensive estimation on bovine material relevant for food and feed control.
Food Chemistry,
Vol. 454,
Issue. ,
p.
139768.