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Advancing Poultry Health: The Role of Predictive Analytics in Disease Prevention

Escrito por: Talha Siddique
poultry

ADVANCING POULTRY HEALTH

Figure 1. Simple depiction of predictive analytics (Source: Ogirala et al., 2024).

Disease and inadequate hygiene are two of the many problems that confront the chicken production sector. Coccidiosis, Newcastle, Gumboro pullorum, and Salmonella are among the most prevalent diseases (Machuve et al., 2022).

Bacteriological testing on chicken excrement, for instance, can cost an average of $30 from American laboratories (e.g., GPLN and others), with pricing fluctuating based on the quantity of birds tested (GPLN, 2024; CEVDL, 2024).

This is where predictive analytics have provided a breakthrough solution for the poultry industry.

DATA COLLECTION AND MANAGEMENT

Figure 2. Overview of IoT and ML in poultry health management (Source: Ojo et al., 2022).

Health records, which include vaccination history, medication records, and previous medical diagnoses, are another important dataset.

The scale and complexity of these data types require reliable systems to process, validate, and use all this information for real-time conclusions.

Internet of Things (IoT) devices and sensors primarily automate data collection, providing continuous input to integrated management systems.

State-of-the-art databases and cloud storage solutions store the massive amount of data.

Data analytics platforms utilize advanced algorithms and machine learning models to analyze the data, look for hidden relationships or patterns in the processed ways, and predict possible outcomes (LeCun et al., 2015) (Figure 3).

Figure 3. The general workflow of machine learning-based chicken monitoring systems (Source: Okinda et al., 2020).

PREDICTIVE MODELS FOR DISEASE DETECTION

ML-based techniques employ feature extractors to transform raw data, such as pixel values from photos, into feature vectors.

Deep learning algorithms, derived from conventional machine learning techniques, have the ability to autonomously discover features or data representations from raw data, eliminating the need for knowledge in feature extraction engineering (LeCun et al., 2015).

Most machine learning systems use past data as input to project future output values. Learning algorithms (e.g., ANN, SVR, random forest, CNN, GLM) and many learning models (e.g., classification, regression, clustering) define ML as either supervised or unsupervised (Milosevic et al., 2019). Supervised learning methods ensure the correctness of their classifications or predictions by means of labelled data.

CASE STUDIES

BENEFITS OF EARLY DETECTION

IMPLEMENTATION CHALLENGES AND SOLUTIONS

Infrastructure problems, economic challenges and data governance concerns will be among the challenges facing the development of a standardized system to forecast the emergence of diseases in poultry.

The adoption of new technology on farms necessitates that farmers acquire knowledge and training in those areas. The problem of bias and noise in particular data sources is another obstacle that predictive algorithms will have to overcome.

Farmers might have experienced data governance problems when considering harmonized prediction models with several stakeholders. While models should include information from as many farms as feasible to predict disease development, producers might not wish their data made public.

Improving data quality, building technical expertise, and reducing economic and operational barriers can effectively implement predictive analytics, leading to enhanced disease management and improved operational efficiency (Figure 4).

Figure 4. Proposed Solutions.

The framework consists of several fundamental components, namely the deep learning (DL) module, Digital Twin module, cloud edge computing (cloud-fog-based) module, communication module, security module, and user-interface module (Figure 5).

Figure 5. Smart poultry health and welfare management framework (Source: Ojo et al. 2022).

FUTURE PROSPECTS AND INNOVATIONS

Integrated approaches in livestock science and engineering must address these challenges to improve the overall performance of chicken monitoring in a PLF and increase its resilience (Figure 6).

Figure 6. Prospects

LIVE WEIGHT ESTIMATION SYSTEMS

Monitoring animal weight over development helps one assess slaughter time and feeding plans. Should the measured weight deviate from the expected growth curve, it suggests a condition such as disease or other vitality issues requiring counteractions. Live weight thus defines the welfare of animals.

Flexible image sensors and illuminant invariant cameras for farms would address the changing light problem. Weight estimation makes advantage of IR-based depth cameras such as Microsoft Kinect (Mortensen et al. 2016).

LAMENESS DETECTION SYSTEMS

Mobility is crucial for living organisms. Being mobile is associated with fitness and wellness.

Birds with trouble walking can starve, decreasing their feed conversion ratio, weight and growth, chest soiling, hock burns, and be vulnerable to predators.

According to wellbeing-Quality® (2009), the foregoing variables indicate poor animal wellbeing. Thus, tracking a bird’s mobility indicates its welfare.

HEALTH STATUS CLASSIFICATION SYSTEMS

POULTRY TRACKING SYSTEMS

The evaluation of behavioral (types of activities) and physical (lameness and health) factors in poultry welfare depends critically on tracking of poultry.

Zhuang and Zhang (2019) have already implemented multi-object detection in unhealthy broiler detection, which has recently garnered significant attention.

INTEGRATING IOT AND BIG DATA

When we consider the integration of IoT devices with big data, it revolutionizes predictive analytics in poultry farming by providing farmers with more detailed information.

We hope that the increase in accuracy and efficiency of predictive models will continue to trend this way as solutions
combining bio-analytics, AI, and machine learning improve over time.

CONCLUSION

 

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