Literature DB >> 33889928

Testing and Validating Semi-automated Approaches to the Occupational Exposure Assessment of Polycyclic Aromatic Hydrocarbons.

Albeliz Santiago-Colón1, Carissa M Rocheleau1, Stephen Bertke1, Annette Christianson1,2, Devon T Collins3,4, Emma Trester-Wilson3, Wayne Sanderson3, Martha A Waters1, Jennita Reefhuis5.   

Abstract

INTRODUCTION: When it is not possible to capture direct measures of occupational exposure or conduct biomonitoring, retrospective exposure assessment methods are often used. Among the common retrospective assessment methods, assigning exposure estimates by multiple expert rater review of detailed job descriptions is typically the most valid, but also the most time-consuming and expensive. Development of screening protocols to prioritize a subset of jobs for expert rater review can reduce the exposure assessment cost and time requirement, but there is often little data with which to evaluate different screening approaches. We used existing job-by-job exposure assessment data (assigned by consensus between multiple expert raters) from a large, population-based study of women to create and test screening algorithms for polycyclic aromatic hydrocarbons (PAHs) that would be suitable for use in other population-based studies.
METHODS: We evaluated three approaches to creating a screening algorithm: a machine-learning algorithm, a set of a priori decision rules created by experts based on features (such as keywords) found in the job description, and a hybrid algorithm incorporating both sets of criteria. All coded jobs held by mothers of infants participating in National Birth Defects Prevention Study (NBDPS) (n = 35,424) were used in developing or testing the screening algorithms. The job narrative fields considered for all approaches included job title, type of product made by the company, main activities or duties, and chemicals or substances handled. Each screening approach was evaluated against the consensus rating of two or more expert raters.
RESULTS: The machine-learning algorithm considered over 30,000 keywords and industry/occupation codes (separate and in combination). Overall, the hybrid method had a similar sensitivity (87.1%) as the expert decision rules (85.5%) but was higher than the machine-learning algorithm (67.7%). Specificity was best in the machine-learning algorithm (98.1%), compared to the expert decision rules (89.2%) and hybrid approach (89.1%). Using different probability cutoffs in the hybrid approach resulted in improvements in sensitivity (24-30%), without the loss of much specificity (7-18%).
CONCLUSION: Both expert decision rules and the machine-learning algorithm performed reasonably well in identifying the majority of jobs with potential exposure to PAHs. The hybrid screening approach demonstrated that by reviewing approximately 20% of the total jobs, it could identify 87% of all jobs exposed to PAHs; sensitivity could be further increased, albeit with a decrease in specificity, by adjusting the algorithm. The resulting screening algorithm could be applied to other population-based studies of women. The process of developing the algorithm also provides a useful illustration of the strengths and potential pitfalls of these approaches to developing exposure assessment algorithms. Published by Oxford University Press on behalf of The British Occupational Hygiene Society 2021.

Entities:  

Keywords:  National Birth Defects Prevention Study; exposure assessment; female worker; jobs; machine-learning algorithm; occupation; polycyclic aromatic hydrocarbons; population-based; prediction model; regularized logistic regression

Mesh:

Substances:

Year:  2021        PMID: 33889928      PMCID: PMC8435754          DOI: 10.1093/annweh/wxab002

Source DB:  PubMed          Journal:  Ann Work Expo Health        ISSN: 2398-7308            Impact factor:   2.179


  28 in total

1.  Use of narrative analysis for comparisons of the causes of fatal accidents in three countries: New Zealand, Australia, and the United States.

Authors:  A Williamson; A M Feyer; N Stout; T Driscoll; H Usher
Journal:  Inj Prev       Date:  2001-09       Impact factor: 2.399

2.  Inter-rater reliability of assessed prenatal maternal occupational exposures to solvents, polycyclic aromatic hydrocarbons, and heavy metals.

Authors:  Carissa M Rocheleau; Christina C Lawson; Martha A Waters; Misty J Hein; Patricia A Stewart; Adolfo Correa; Diana Echeverria; Jennita Reefhuis
Journal:  J Occup Environ Hyg       Date:  2011-12       Impact factor: 2.155

Review 3.  Cost-efficient design of occupational exposure assessment strategies--a review.

Authors:  Mahmoud Rezagholi; Svend Erik Mathiassen
Journal:  Ann Occup Hyg       Date:  2010-10-06

4.  Combining Decision Rules from Classification Tree Models and Expert Assessment to Estimate Occupational Exposure to Diesel Exhaust for a Case-Control Study.

Authors:  Melissa C Friesen; David C Wheeler; Roel Vermeulen; Sarah J Locke; Dennis D Zaebst; Stella Koutros; Anjoeka Pronk; Joanne S Colt; Dalsu Baris; Margaret R Karagas; Nuria Malats; Molly Schwenn; Alison Johnson; Karla R Armenti; Nathanial Rothman; Patricia A Stewart; Manolis Kogevinas; Debra T Silverman
Journal:  Ann Occup Hyg       Date:  2016-01-04

5.  Bayesian methods: a useful tool for classifying injury narratives into cause groups.

Authors:  M Lehto; H Marucci-Wellman; H Corns
Journal:  Inj Prev       Date:  2009-08       Impact factor: 2.399

Review 6.  Machine learning approaches to analysing textual injury surveillance data: a systematic review.

Authors:  Kirsten Vallmuur
Journal:  Accid Anal Prev       Date:  2015-03-19

7.  OccIDEAS - occupational exposure assessment in community-based studies.

Authors:  Lin Fritschi
Journal:  Occup Med (Lond)       Date:  2019-05-25       Impact factor: 1.611

8.  Statistical Modeling of Occupational Exposure to Polycyclic Aromatic Hydrocarbons Using OSHA Data.

Authors:  Derrick G Lee; Jérôme Lavoué; John J Spinelli; Igor Burstyn
Journal:  J Occup Environ Hyg       Date:  2015       Impact factor: 2.155

9.  Rule-based exposure assessment versus case-by-case expert assessment using the same information in a community-based study.

Authors:  Susan Peters; Deborah C Glass; Elizabeth Milne; Lin Fritschi
Journal:  Occup Environ Med       Date:  2013-11-12       Impact factor: 4.402

10.  Inter-rater Agreement Between Exposure Assessment Using Automatic Algorithms and Using Experts.

Authors:  Ines Florath; Deborah C Glass; Mounia Senhaji Rhazi; Marie-Elise Parent; Lin Fritschi
Journal:  Ann Work Expo Health       Date:  2019-01-07       Impact factor: 2.179

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