Artificial neural networks and job-specific modules to assess occupational exposure

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Abstract

Job-specific modules (JSMs) were used to collect information for expert retrospective exposure assessment in a community-based non-Hodgkins Lymphoma study in New South Wales, Australia. Using exposure assessment by a hygienist, artificial neural networks were developed to predict overall and intermittent benzene exposure among the module of tanker drivers. Even with a small data set (189 drivers), neural networks could assess benzene exposure with an average of 90% accuracy. By appropriate choice of cutoff (decision threshold), the neural networks could reliably reduce the expert's workload by ∼60% by identifying negative JSMs. The use of artificial neural networks shows promise in future applications to occupational assessment by JSMs and expert assessment.

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Black, J., Benke, G., Smith, K., & Fritschi, L. (2004). Artificial neural networks and job-specific modules to assess occupational exposure. Annals of Occupational Hygiene, 48(7), 595–600. https://doi.org/10.1093/annhyg/meh064

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