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Artificial intelligence exceeds humans in epidemiological job coding

Medicine and Health

Artificial intelligence exceeds humans in epidemiological job coding

M. A. Langezaal, E. L. V. D. Broek, et al.

Introducing OPERAS, a groundbreaking decision support system for epidemiological job coding that enhances the accuracy and efficiency of occupational exposure assessments! This innovative tool outshines expert coders and traditional coding methods, demonstrating remarkable improvements in exposure assessment accuracy and significant workload reductions. The research was conducted by Mathijs A Langezaal, Egon L van den Broek, Susan Peters, Marcel Goldberg, Grégoire Rey, Melissa C Friesen, Sarah J Locke, Nathaniel Rothman, Qing Lan, and Roel C H Vermeulen.... show more
Abstract
Background Work circumstances can substantially negatively impact health. To explore this, large occupational cohorts of free-text job descriptions are manually coded and linked to exposure. Although several automatic coding tools have been developed, accurate exposure assessment is only feasible with human intervention. Methods We developed OPERAS, a customizable decision support system for epidemiological job coding. Using 812,522 entries, we developed and tested classification models for the Professions et Catégories Socioprofessionnelles (PCS)2003, Nomenclature d’Activités Française (NAF)2008, International Standard Classifications of Occupation (ISCO) 88, and ISCO-68. Each code comes with an estimated correctness measure to identify instances potentially requiring expert review. Here, OPERAS’ decision support enables an increase in efficiency and accuracy of the coding process through code suggestions. Using the formaldehyde, Silica, ALOHA, and DOM job-exposure matrices, we assessed the classification models’ exposure assessment accuracy. Results We show that, using expert-coded job descriptions as gold standard, OPERAS realized a 0.66–0.84, 0.62–0.81, 0.60–0.79, and 0.57–0.78 inter-coder reliability (in Cohen’s Kappa) on the first, second, third, and fourth coding levels, respectively. These exceed the respective inter-coder reliability of expert coders ranging 0.59–0.76, 0.56–0.71, 0.46–0.63, 0.40–0.56 on the same levels, enabling a 75.0–98.4% exposure assessment accuracy and an estimated 19.7–55.7% minimum workload reduction. Conclusions OPERAS secures a high degree of accuracy in occupational classification and exposure assessment of free-text job descriptions, substantially reducing workload. As such, OPERAS significantly outperforms both expert coders and other current coding tools. This enables large-scale, efficient, and effective exposure assessment securing healthy work conditions.
Publisher
Communications Medicine
Published On
Nov 04, 2023
Authors
Mathijs A Langezaal, Egon L van den Broek, Susan Peters, Marcel Goldberg, Grégoire Rey, Melissa C Friesen, Sarah J Locke, Nathaniel Rothman, Qing Lan, Roel C H Vermeulen
Tags
decision support system
occupational exposure assessment
inter-coder reliability
coding accuracy
workload reduction
epidemiology
health conditions
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