• Precision technology, machine learning l

    From ScienceDaily@1:317/3 to All on Fri Jul 14 22:30:26 2023
    Precision technology, machine learning lead to early diagnosis of calf pneumonia
    Wearable sensors, automatic feeders yield clues about onset of bovine respiratory disease

    Date:
    July 14, 2023
    Source:
    Penn State
    Summary:
    Monitoring dairy calves with precision technologies based on the
    'internet of things,' or IoT, leads to the earlier diagnosis of
    calf- killing bovine respiratory disease, according to a new
    study. The novel approach -- a result of crosscutting -- will
    offer dairy producers an opportunity to improve the economies of
    their farms, according to researchers.


    Facebook Twitter Pinterest LinkedIN Email

    ==========================================================================
    FULL STORY ========================================================================== Monitoring dairy calves with precision technologies based on the "internet
    of things," or IoT, leads to the earlier diagnosis of calf-killing bovine respiratory disease, according to a new study. The novel approach -- a
    result of crosscutting collaboration by a team of researchers from Penn
    State, University of Kentucky and University of Vermont -- will offer
    dairy producers an opportunity to improve the economies of their farms, according to researchers.

    This is not your grandfather's dairy farming strategy, notes lead
    researcher Melissa Cantor, assistant professor of precision dairy science
    in Penn State's College of Agricultural Sciences. Cantor noted that
    new technology is becoming increasingly affordable, offering farmers opportunities to detect animal health problems soon enough to intervene,
    saving the calves and the investment they represent.

    IoT refers to embedded devices equipped with sensors, processing and communication abilities, software, and other technologies to connect
    and exchange data with other devices over the Internet. In this study,
    Cantor explained, IoT technologies such as wearable sensors and automatic feeders were used to closely watch and analyze the condition of calves.

    Such IoT devices generate a huge amount of data by closely monitoring
    the cows' behavior. To make such data easier to interpret, and provide
    clues to calf health problems, the researchers adopted machine learning
    -- a branch of artificial intelligence that learns the hidden patterns
    in the data to discriminate between sick and healthy calves, given the
    input from the IoT devices.

    "We put leg bands on the calves, which record activity behavior data
    in dairy cattle, such as the number of steps and lying time," Cantor
    said. "And we used automatic feeders, which dispense milk and grain and
    record feeding behaviors, such as the number of visits and liters of
    consumed milk. Information from those sources signaled when a calf's
    condition was on the verge of deteriorating." Bovine respiratory
    disease is an infection of the respiratory tract that is the leading
    reason for antimicrobial use in dairy calves and represents 22% of calf mortalities. The costs and effects of the ailment can severely damage
    a farm's economy, since raising dairy calves is one of the largest
    economic investments.

    "Diagnosing bovine respiratory disease requires intensive and specialized
    labor that is hard to find," Cantor said. "So, precision technologies
    based on IoT devices such as automatic feeders, scales and accelerometers
    can help detect behavioral changes before outward clinical signs of
    the disease are manifested." In the study, data was collected from 159
    dairy calves using precision livestock technologies and by researchers
    who performed daily physical health exams on the calves at the University
    of Kentucky. Researchers recorded both automatic data-collection results
    and manual data-collection results and compared the two.

    In findings recently published in IEEE Access, a peer-reviewed
    open-access scientific journal published by the Institute of Electrical
    and Electronics Engineers, the researchers reported that the proposed
    approach is able to identify calves that developed bovine respiratory
    disease sooner. Numerically, the system achieved an accuracy of 88%
    for labeling sick and healthy calves.

    Seventy percent of sick calves were predicted four days prior to
    diagnosis, and 80% of calves that developed a chronic case of the disease
    were detected within the first five days of sickness.

    "We were really surprised to find out that the relationship with the
    behavioral changes in those animals was very different than animals that
    got better with one treatment," she said. "And nobody had ever looked at
    that before. We came up with the concept that if these animals actually
    behave differently, then there's probably a chance that IoT technologies empowered with machine learning inference techniques could actually
    identify them sooner, before anybody can with the naked eye. That offers producers options." Contributing to the research were: Enrico Casella, Department of Animal and Dairy Science, University of Wisconsin-Madison; Melissa Cantor, Department of Animal Science, Penn State University;
    Megan Woodrum Setser, Department of Animal and Food Sciences, University
    of Kentucky; Simone Silvestri, Department of Computer Science, University
    of Kentucky; and Joao Costa, Department of Animal and Veterinary Sciences, University of Vermont.

    This work was supported by the U.S. Department of Agriculture and the
    National Science Foundation.

    * RELATED_TOPICS
    o Plants_&_Animals
    # Cows,_Sheep,_Pigs # Veterinary_Medicine #
    Agriculture_and_Food
    o Earth_&_Climate
    # Floods # Wildfires # Earth_Science
    o Computers_&_Math
    # Information_Technology # Hacking #
    Computers_and_Internet
    * RELATED_TERMS
    o Dairy_cattle o Gross_domestic_product o Vegetarianism o
    Bovine_spongiform_encephalopathy o Voice_over_IP o Cattle o
    Pollution o World_Wide_Web

    ==========================================================================

    Print

    Email

    Share ========================================================================== ****** 1 ****** ***** 2 ***** **** 3 ****
    *** 4 *** ** 5 ** Breaking this hour ==========================================================================
    * Sports_Safety:_Liquid_Cushioning_Technology *
    First-Ever_'Dark_Stars' * Genes_for_Learning:_650_Million_Years_Old
    * Stellar_Cradles_and_Graves_in_Faraway_Galaxy *
    Overflowing_Cosmic_'Jug' * Ghost_Stars_in_Our_Galaxy *
    Multiple_Ecosystems_in_Hot_Water * How_an_'AI-Tocracy'_Emerges
    * Building_a_Better_Tree_With_CRISPR_Gene_Editing *
    Unprecedented_Control_Of_Every_Finger_of_...


    Trending Topics this week ========================================================================== PLANTS_&_ANIMALS Biology Nature Biotechnology EARTH_&_CLIMATE Environmental_Awareness Oceanography Water FOSSILS_&_RUINS Fossils Early_Mammals Ancient_Civilizations


    ==========================================================================

    Strange & Offbeat ========================================================================== PLANTS_&_ANIMALS Fungi_Blaze_a_Trail_to_Fireproof_Cladding Ice_Age_Saber-Tooth_Cats_and_Dire_Wolves_Suffered_from_Diseased_Joints Tiny_Fish_Surprise_Scientists_in_'Volunteer's_Dilemma' EARTH_&_CLIMATE Why_There_Are_No_Kangaroos_in_Bali_(and_No_Tigers_in_Australia) Turning_Old_Maps_Into_3D_Digital_Models_of_Lost_Neighborhoods Squash_Bugs_Are_Attracted_to_and_Eat_Each_Other's_Poop_to_Stock_Their Microbiome FOSSILS_&_RUINS Giant_Stone_Artefacts_Found_on_Rare_Ice_Age_Site_in_Kent,_UK Fossils_Reveal_How_Ancient_Birds_Molted_Their_Feathers_--_Which_Could_Help Explain_Why_Ancestors_of_Modern_Birds_Survived_When_All_the_Other_Dinosaurs Died Apex_Predator_of_the_Cambrian_Likely_Sought_Soft_Over_Crunchy_Prey
    Story Source: Materials provided by Penn_State. Original written by Jeff Mulhollem. Note: Content may be edited for style and length.


    ========================================================================== Journal Reference:
    1. Enrico Casella, Melissa C. Cantor, Megan M Woodrum Setser, Simone
    Silvestri, Joao H.C. Costa. A Machine Learning and Optimization
    Framework for the Early Diagnosis of Bovine Respiratory
    Disease. IEEE Access, 2023; 1 DOI: 10.1109/ACCESS.2023.3291348 ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2023/07/230714131136.htm

    --- up 1 year, 19 weeks, 4 days, 10 hours, 50 minutes
    * Origin: -=> Castle Rock BBS <=- Now Husky HPT Powered! (1:317/3)