Register      Login
Animal Production Science Animal Production Science Society
Food, fibre and pharmaceuticals from animals

Articles citing this paper

Early detection of clinical mastitis from electrical conductivity data in an automatic milking system

Momena Khatun A C , Cameron E. F. Clark A , Nicolas A. Lyons B , Peter C. Thomson A , Kendra L. Kerrisk A and Sergio C. García A
+ Author Affiliations
- Author Affiliations

A School of Life and Environmental Sciences, Faculty of Science, The University of Sydney, Camden, NSW 2570, Australia.

B Intensive Livestock Industries, NSW Department of Primary Industries, Elizabeth Macarthur Agricultural Institute, Menangle, NSW 2568, Australia.

C Corresponding author. Email: mkha3293@uni.sydney.edu.au

Animal Production Science 57(7) 1226-1232 https://doi.org/10.1071/AN16707
Submitted: 14 July 2016  Accepted: 2 December 2016   Published: 23 February 2017



40 articles found in Crossref database.

Blood Metabolomic Phenotyping of Dry Cows Could Predict the High Milk Somatic Cells in Early Lactation—Preliminary Results
Haxhiaj Klevis, Li Zhili, Johnson Mathew, Dunn Suzanna M., Wishart David S., Ametaj Burim N.
Dairy. 2022 3(1). p.59
The Prediction of Clinical Mastitis in Dairy Cows Based on Milk Yield, Rumination Time, and Milk Electrical Conductivity Using Machine Learning Algorithms
Tian Hong, Zhou Xiaojing, Wang Hao, Xu Chuang, Zhao Zixuan, Xu Wei, Deng Zhaoju
Animals. 2024 14(3). p.427
Bacteria Isolated From Milk of Dairy Cows With and Without Clinical Mastitis in Different Regions of Australia and Their AMR Profiles
Al-harbi Hulayyil, Ranjbar Shahab, Moore Robert J., Alawneh John I.
Frontiers in Veterinary Science. 2021 8
A rapid method of identifying mastitis degrees of bovines based on dielectric spectra of raw milk
Zhu Zhuozhuo, Lin Biying, Zhu Xinhua, Guo Wenchuan
Food Quality and Safety. 2023 7
Quantitatively determining the somatic cell count of raw milk using dielectric spectra and support vector regression
Zhu Zhuozhuo, Zhu Xinhua, Guo Wenchuan
Journal of Dairy Science. 2022 105(1). p.772
Sensitivity and Specificity for the Detection of Clinical Mastitis by Automatic Milking Systems in Bavarian Dairy Herds
Bausewein Mathias, Mansfeld Rolf, Doherr Marcus G., Harms Jan, Sorge Ulrike S.
Animals. 2022 12(16). p.2131
Sustainability (2023)
Tzanidakis Christos, Simitzis Panagiotis, Panagakis Panagiotis
Assessment of the prevalence of Subclinical Mastitis through two on-farm tests in dual-purpose livestock system of Colombian Orinoquia
Salamanca-Carreño Arcesio, Vélez-Terranova Mauricio, Tamasaukas Rita, Jáuregui-Jiménez Raúl, Parés-Casanova Pere M., Arias-Landazábal José N.
Journal of Applied Animal Research. 2023 51(1). p.599
Practical challenges and potential approaches to predicting low-incidence diseases on farm using individual cow data: A clinical mastitis example
Liebe D.M., Steele N.M., Petersson-Wolfe C.S., De Vries A., White R.R.
Journal of Dairy Science. 2022 105(3). p.2369
Proceedings of 3rd International Conference on Recent Trends in Machine Learning, IoT, Smart Cities and Applications (2023)
Mate Sanjay, Dahiwale Prashant, Somani Vikas
Identification of Changes in Rumination Behavior Registered with an Online Sensor System in Cows with Subclinical Mastitis
Antanaitis Ramūnas, Juozaitienė Vida, Malašauskienė Dovilė, Televičius Mindaugas, Urbutis Mingaudas, Rutkaukas Arūnas, Šertvytytė Greta, Baumgartner Walter
Veterinary Sciences. 2022 9(9). p.454
Evaluation of reticuloruminal temperature for the prediction of clinical mastitis in dairy cows challenged with Streptococcus uberis
Rodriguez Zelmar, Kolar Quinn K., Krogstad Kirby C., Swartz Turner H., Yoon Ilkyu, Bradford Barry J., Ruegg Pamela L.
Journal of Dairy Science. 2023 106(2). p.1360
Suitability of somatic cell count, electrical conductivity, and lactate dehydrogenase activity in foremilk before versus after alveolar milk ejection for mastitis detection
Khatun M., Bruckmaier R.M., Thomson P.C., House J., García S.C.
Journal of Dairy Science. 2019 102(10). p.9200
Changes in electrical conductivity, milk production rate and milk flow rate prior to clinical mastitis confirmation
Inzaghi Virginia, Zucali Maddalena, Thompson Paul D., Penry John F., Reinemann Douglas J.
Italian Journal of Animal Science. 2021 20(1). p.1554
Mastitis Control in Automatic Milking Systems
Penry John F.
Veterinary Clinics of North America: Food Animal Practice. 2018 34(3). p.439
Invited review: Hygienic quality, composition, and technological performance of raw milk obtained by robotic milking of cows
Hogenboom J.A., Pellegrino L., Sandrucci A., Rosi V., D'Incecco P.
Journal of Dairy Science. 2019 102(9). p.7640
Precision livestock farming technologies: Novel direction of information flow
TEKİN Koray, YURDAKÖK DİKMEN Begüm, KANCA Halit, GUATTEO Raphael
Ankara Üniversitesi Veteriner Fakültesi Dergisi. 2021 68(2). p.193
The relationships between udder-quarter somatic-cell counts and milk and milking parameters in cows managed with an automatic milking system
Sitkowska Beata, Piwczyński Dariusz, Kolenda Magdalena
Animal Production Science. 2020 60(15). p.1830
Contribution of Precision Livestock Farming Systems to the Improvement of Welfare Status and Productivity of Dairy Animals
Simitzis Panagiotis, Tzanidakis Christos, Tzamaloukas Ouranios, Sossidou Evangelia
Dairy. 2021 3(1). p.12
Mastitis Detection and Prediction of Milk Composition Using Gas Sensor and Electrical Conductivity
Lima Renan S., Danielski Guilherme C., Pires Ana Clarissa S.
Food and Bioprocess Technology. 2018 11(3). p.551
Forecasting chronic mastitis using automatic milking system sensor data and gradient-boosting classifiers
Bonestroo John, Voort Mariska van der, Hogeveen Henk, Emanuelson Ulf, Klaas Ilka Christine, Fall Nils
Computers and Electronics in Agriculture. 2022 198 p.107002
Use of milk electrical conductivity for the differentiation of mastitis causing pathogens in Holstein cows
Paudyal S., Melendez P., Manriquez D., Velasquez-Munoz A., Pena G., Roman-Muniz I.N., Pinedo P.J.
Animal. 2020 14(3). p.588
Precision dairy farming: Opportunities and challenges for India
RATHOD PRAKASH KUMAR, DIXIT SREENATH
The Indian Journal of Animal Sciences. 2021 90(8). p.1083
A Literature Review of Modeling Approaches Applied to Data Collected in Automatic Milking Systems
Ozella Laura, Brotto Rebuli Karina, Forte Claudio, Giacobini Mario
Animals. 2023 13(12). p.1916
Mastitis: What It Is, Current Diagnostics, and the Potential of Metabolomics to Identify New Predictive Biomarkers
Haxhiaj Klevis, Wishart David S., Ametaj Burim N.
Dairy. 2022 3(4). p.722
Advanced Analytics and Learning on Temporal Data (2023)
Jin Changhong, Upton John, Mac Namee Brian
Invited review: Toward a common language in data-driven mastitis detection research
van der Voort M., Jensen D., Kamphuis C., Athanasiadis I.N., De Vries A., Hogeveen H.
Journal of Dairy Science. 2021 104(10). p.10449
IoT based Intelligent Cattle Shed Management
2022 International Interdisciplinary Humanitarian Conference for Sustainability (IIHC) (2022)
Akram Shaik Vaseem, Joshi Ankita
Challenges and Tendencies of Automatic Milking Systems (AMS): A 20-Years Systematic Review of Literature and Patents
Cogato Alessia, Brščić Marta, Guo Hao, Marinello Francesco, Pezzuolo Andrea
Animals. 2021 11(2). p.356
Pathogen-specific patterns of milking traits in automatic milking systems
Olofsson Charlott, Toftaker Ingrid, Rachah Amira, Reksen Olav, Kielland Camilla
Journal of Dairy Science. 2024
Precision Technologies to Address Dairy Cattle Welfare: Focus on Lameness, Mastitis and Body Condition
Silva Severiano, Araujo José, Guedes Cristina, Silva Flávio, Almeida Mariana, Cerqueira Joaquim
Animals. 2021 11(8). p.2253
Association between Udder and Quarter Level Indicators and Milk Somatic Cell Count in Automatic Milking Systems
Zucali Maddalena, Bava Luciana, Tamburini Alberto, Gislon Giulia, Sandrucci Anna
Animals. 2021 11(12). p.3485
Proceedings of the International Conference on Paradigms of Computing, Communication and Data Sciences (2023)
Mate Sanjay, Somani Vikas, Dahiwale Prashant
Development of a new clinical mastitis detection method for automatic milking systems
Khatun M., Thomson P.C., Kerrisk K.L., Lyons N.A., Clark C.E.F., Molfino J., García S.C.
Journal of Dairy Science. 2018 101(10). p.9385
Assessing animal welfare at the farm level: do we care sufficiently about the individual?
Winckler C
Animal Welfare. 2019 28(1). p.77
Welfare of dairy cows
Nielsen Søren Saxmose, Alvarez Julio, Bicout Dominique Joseph, Calistri Paolo, Canali Elisabetta, Drewe Julian Ashley, Garin‐Bastuji Bruno, Gonzales Rojas Jose Luis, Gortázar Schmidt Christian, Herskin Mette, Michel Virginie, Miranda Chueca Miguel Ángel, Padalino Barbara, Roberts Helen Clare, Spoolder Hans, Stahl Karl, Velarde Antonio, Viltrop Arvo, De Boyer des Roches Alice, Jensen Margit Bak, Mee John, Green Martin, Thulke Hans‐Hermann, Bailly‐Caumette Elea, Candiani Denise, Lima Eliana, Van der Stede Yves, Winckler Christoph
EFSA Journal. 2023 21(5).
The Relationship between Reticuloruminal Temperature, Reticuloruminal pH, Cow Activity, and Clinical Mastitis in Dairy Cows
Antanaitis Ramūnas, Anskienė Lina, Palubinskas Giedrius, Rutkauskas Arūnas, Baumgartner Walter
Animals. 2023 13(13). p.2134
Relationship among Milk Conductivity, Production Traits, and Somatic Cell Score in the Italian Mediterranean Buffalo
Matera Roberta, Di Vuolo Gabriele, Cotticelli Alessio, Salzano Angela, Neglia Gianluca, Cimmino Roberta, D’Angelo Danila, Biffani Stefano
Animals. 2022 12(17). p.2225
Prediction of quarter level subclinical mastitis by combining in-line and on-animal sensor data
Khatun Momena, Thomson Peter C., Clark Cameron E. F., García Sergio C.
Animal Production Science. 2020 60(1). p.180
Novel ways to use sensor data to improve mastitis management
Hogeveen Henk, Klaas Ilka C., Dalen Gunnar, Honig Hen, Zecconi Alfonso, Kelton David F., Sánchez Mainar Maria
Journal of Dairy Science. 2021 104(10). p.11317

Committee on Publication Ethics


Abstract Export Citation Get Permission