AI-Driven Livestock Biosensing for Prediction of Metabolic Diseases

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2025

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IEEE

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We report the development of a highly sensitive 3D-printed sensor for the on-farm, early detection of subclinical hypocalcemia (SHC) in dairy cows. The printed 3D sensing structure incorporates periodic micropatterns of ion-to-electron polymer-based transducing layer that enhances sensitivity when analyzing milk samples. This novel sensor detects radiometric targets of calcium (Ca2+) and phosphate (PO42-) in milk, enabling the identification of SHC in under a minute. We apply regression models, including k Nearest Neighbors (k-NN) and Logistic Regression, to predict livestock health, evaluating performance through accuracy, area under the curve (AUC), and confusion matrices. Unlike traditional tests, this sensor provides dairy farmers with a tool to monitor the health of transition dairy cows.

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