LGOct 7, 2021

PRRS Outbreak Prediction via Deep Switching Auto-Regressive Factorization Modeling

arXiv:2110.03147v11 citations
Originality Synthesis-oriented
AI Analysis

This addresses a costly viral disease in the livestock industry, but it is incremental as it applies existing modeling techniques to a specific domain.

The paper tackles the problem of predicting PRRS virus outbreaks in swine farms by capturing spatio-temporal dynamics of infection transmission, resulting in a model that forecasts virus spread progression with an average error of NRMSE = 2.5%.

We propose an epidemic analysis framework for the outbreak prediction in the livestock industry, focusing on the study of the most costly and viral infectious disease in the swine industry -- the PRRS virus. Using this framework, we can predict the PRRS outbreak in all farms of a swine production system by capturing the spatio-temporal dynamics of infection transmission based on the intra-farm pig-level virus transmission dynamics, and inter-farm pig shipment network. We simulate a PRRS infection epidemic based on the shipment network and the SEIR epidemic model using the statistics extracted from real data provided by the swine industry. We develop a hierarchical factorized deep generative model that approximates high dimensional data by a product between time-dependent weights and spatially dependent low dimensional factors to perform per farm time series prediction. The prediction results demonstrate the ability of the model in forecasting the virus spread progression with average error of NRMSE = 2.5\%.

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