Publication Abstract

Title
Probing Norwalk-like Virus Presence in Shellfish with Artificial Neural Networks
Publication Abstract

Probing Norwalk-like Virus Presence in Shellfish with Artificial Neural Networks

G.M. Brion, S. Lingireddy, T.R. Neelakantan, M. Wang, R. Girones, D. Lees, A. Allard and A. Vantarakis

A database was examined using artificial neural network (ANN) models to investigate the efficacy of predicting PCR-identified Norwalk-like virus presence and absence in shellfish. The relative importance of variables in the model and the predictive power obtained by application of ANN modelling methods were compared with previously developed logistic regression models. In addition, two country-specific datasets were analysed separately with ANN models to determine if the relative importance of the input variables was similar for geographically diverse regions. The results of this analysis found that ANN models predicted Norwalk-like virus presence and absence in shellfish with equivalent, and better, precision than logistic regression models. For overall classification performance, ANN modelling had a rate of 93%, vs 75% for the logistic regression. ANN models were able to illuminate the site-specific relationships between indicators and pathogens.

Reference:

G.M. Brion, S. Lingireddy, T.R. Neelakantan, M. Wang, R. Girones, D. Lees, A. Allard, A. Vantarakis (2004). Probing Norwalk-like Virus Presence in Shellfish with Artificial Neural Networks. Water, Science, and Technology, 50(1): 125-129

Publication Internet Address of the Data
Publication Authors
G.M. Brion, S. Lingireddy, T.R. Neelakantan, M. Wang, R. Girones, D. Lees*, A. Allard and A. Vantarakis
Publication Date
June 2004
Publication Reference
Water, Science, and Technology, 50(1): 125-129
Publication DOI: https://doi.org/