Sensor systems have increasingly been explored as tools to support precision livestock farming, particularly in monitoring cow health and improving decision-making.This systematic literature review aims to evaluate advancements in sensor systems for detecting health conditions in dairy cows especially on mastitis, fertility, locomotion, and metabolic disorders.Relevant articles published between 2014 and 2024 were identified from Scopus.Each article was categorized by health condition and assigned to one of four development levels: sensor technique (Level I), data interpretation (Level II), integration of information (Level III), and decision making (Level IV).Relevant information from the articles was systematically reviewed and discussed.We identified 132 articles published in the past 10 years, describing a total of 151 sensor systems.Most sensor systems were aimed at mastitis and reproduction, followed by locomotion and metabolic disorders.The far majority of the articles were at level II (data interpretation) presenting research on (novel) algorithms to detect disease.A large number of different statistical, machine-learning or deep-learning models were described and evaluated, among others random forests.Level II systems applied statistical analysis or machine-learning/deep-learning models (e.g., random forests, you only look once, support vector machine, or convolutional neural network).These algorithms used a wide range of sensor data.Only few articles aimed at level III research, integration of information and decision support.The Level III sensor systems integrated information from the sensor with economic information and other information (i.e., medication dosage, cost per disease, and supplier selection) and simulated various treatment scenarios.This review highlights the need for sensor systems research to be driven by real-world requirements for on-farm decision making.To move from proof-of-concept toward practical, future research must integrate sensor outputs with herd records and financial models, validate systems across multiple farms and at higher data frequencies, and embed economic evaluation alongside sensitivity and specificity metrics.Addressing these technical, integration, and economic challenges is essential before sensor systems can fully support automated, value-driven health management on commercial dairy farms.
Sani et al. (Wed,) studied this question.