Mathijs A Langezaal, Egon L van den Broek, Grégoire Rey, Nicole Le Moual, Corinne Pilorget, Marcel Goldberg, Roel Vermeulen, Susan Peters
{"title":"opera决策支持系统与手工作业编码:编码时间和编码间可靠性的定量分析。","authors":"Mathijs A Langezaal, Egon L van den Broek, Grégoire Rey, Nicole Le Moual, Corinne Pilorget, Marcel Goldberg, Roel Vermeulen, Susan Peters","doi":"10.1136/oemed-2024-109823","DOIUrl":null,"url":null,"abstract":"<p><strong>Objectives: </strong>The manual coding of job descriptions is time-consuming, expensive and requires expert knowledge. Decision support systems (DSS) provide a valuable alternative by offering automated suggestions that support decision-making, improving efficiency while allowing manual corrections to ensure reliability. However, this claim has not been proven with expert coders. This study aims to fill this omission by comparing manual with decision-supported coding, using the new DSS OPERAS.</p><p><strong>Methods: </strong>Five expert coders proficient in using the French classification systems for occupations PCS2003 and activity sectors NAF2008 each successively coded two subsets of job descriptions from the CONSTANCES cohort manually and using OPERAS. Subsequently, we assessed coding time and inter-coder reliability of assigning occupation and activity sector codes while accounting for individual differences and the perceived usability of OPERAS, measured using the System Usability Scale (SUS; range 0-100).</p><p><strong>Results: </strong>OPERAS usage substantially outperformed manual coding for all coders on both coding time and inter-coder reliability. The median job description coding time was 38 s using OPERAS versus 60.8 s while manually coding. Inter-coder reliability (in Cohen's kappa) ranged 0.61-0.70 and 0.56-0.61 for the PCS, while ranging 0.38-0.61 and 0.34-0.61 for the NAF for OPERAS and manual coding, respectively. The average SUS score was 75.5, indicating good usability.</p><p><strong>Conclusions: </strong>Compared with manual coding, using OPERAS as DSS for occupational coding improved coding time and inter-coder reliability. Subsequent comparison studies could use OPERAS' ISCO-88 and ISCO-68 classification models. Consequently, OPERAS facilitates large, harmonised job coding in large-scale occupational health research.</p>","PeriodicalId":19459,"journal":{"name":"Occupational and Environmental Medicine","volume":" ","pages":""},"PeriodicalIF":3.9000,"publicationDate":"2025-06-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"OPERAS decision support system versus manual job coding: a quantitative analysis on coding time and inter-coder reliability.\",\"authors\":\"Mathijs A Langezaal, Egon L van den Broek, Grégoire Rey, Nicole Le Moual, Corinne Pilorget, Marcel Goldberg, Roel Vermeulen, Susan Peters\",\"doi\":\"10.1136/oemed-2024-109823\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objectives: </strong>The manual coding of job descriptions is time-consuming, expensive and requires expert knowledge. Decision support systems (DSS) provide a valuable alternative by offering automated suggestions that support decision-making, improving efficiency while allowing manual corrections to ensure reliability. However, this claim has not been proven with expert coders. This study aims to fill this omission by comparing manual with decision-supported coding, using the new DSS OPERAS.</p><p><strong>Methods: </strong>Five expert coders proficient in using the French classification systems for occupations PCS2003 and activity sectors NAF2008 each successively coded two subsets of job descriptions from the CONSTANCES cohort manually and using OPERAS. Subsequently, we assessed coding time and inter-coder reliability of assigning occupation and activity sector codes while accounting for individual differences and the perceived usability of OPERAS, measured using the System Usability Scale (SUS; range 0-100).</p><p><strong>Results: </strong>OPERAS usage substantially outperformed manual coding for all coders on both coding time and inter-coder reliability. The median job description coding time was 38 s using OPERAS versus 60.8 s while manually coding. Inter-coder reliability (in Cohen's kappa) ranged 0.61-0.70 and 0.56-0.61 for the PCS, while ranging 0.38-0.61 and 0.34-0.61 for the NAF for OPERAS and manual coding, respectively. The average SUS score was 75.5, indicating good usability.</p><p><strong>Conclusions: </strong>Compared with manual coding, using OPERAS as DSS for occupational coding improved coding time and inter-coder reliability. Subsequent comparison studies could use OPERAS' ISCO-88 and ISCO-68 classification models. 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OPERAS decision support system versus manual job coding: a quantitative analysis on coding time and inter-coder reliability.
Objectives: The manual coding of job descriptions is time-consuming, expensive and requires expert knowledge. Decision support systems (DSS) provide a valuable alternative by offering automated suggestions that support decision-making, improving efficiency while allowing manual corrections to ensure reliability. However, this claim has not been proven with expert coders. This study aims to fill this omission by comparing manual with decision-supported coding, using the new DSS OPERAS.
Methods: Five expert coders proficient in using the French classification systems for occupations PCS2003 and activity sectors NAF2008 each successively coded two subsets of job descriptions from the CONSTANCES cohort manually and using OPERAS. Subsequently, we assessed coding time and inter-coder reliability of assigning occupation and activity sector codes while accounting for individual differences and the perceived usability of OPERAS, measured using the System Usability Scale (SUS; range 0-100).
Results: OPERAS usage substantially outperformed manual coding for all coders on both coding time and inter-coder reliability. The median job description coding time was 38 s using OPERAS versus 60.8 s while manually coding. Inter-coder reliability (in Cohen's kappa) ranged 0.61-0.70 and 0.56-0.61 for the PCS, while ranging 0.38-0.61 and 0.34-0.61 for the NAF for OPERAS and manual coding, respectively. The average SUS score was 75.5, indicating good usability.
Conclusions: Compared with manual coding, using OPERAS as DSS for occupational coding improved coding time and inter-coder reliability. Subsequent comparison studies could use OPERAS' ISCO-88 and ISCO-68 classification models. Consequently, OPERAS facilitates large, harmonised job coding in large-scale occupational health research.
期刊介绍:
Occupational and Environmental Medicine is an international peer reviewed journal covering current developments in occupational and environmental health worldwide. Occupational and Environmental Medicine publishes high-quality research relating to the full range of chemical, physical, ergonomic, biological and psychosocial hazards in the workplace and to environmental contaminants and their health effects. The journal welcomes research aimed at improving the evidence-based practice of occupational and environmental research; including the development and application of novel biological and statistical techniques in addition to evaluation of interventions in controlling occupational and environmental risks.