Cargando…

Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China

This study aims to develop a prognostic risk prediction model for the development of silicosis among workers exposed to silica dust in China. The prediction model was performed by using retrospective cohort of 3,492 workers exposed to silica in an iron ore, with 33 years of follow-up. We developed a...

Descripción completa

Detalles Bibliográficos
Autores principales: Tse, Lap Ah, Dai, Juncheng, Chen, Minghui, Liu, Yuewei, Zhang, Hao, Wong, Tze Wai, Leung, Chi Chiu, Kromhout, Hans, Meijer, Evert, Liu, Su, Wang, Feng, Yu, Ignatius Tak-sun, Shen, Hongbing, Chen, Weihong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4473532/
https://www.ncbi.nlm.nih.gov/pubmed/26090590
http://dx.doi.org/10.1038/srep11059
_version_ 1782377212441264128
author Tse, Lap Ah
Dai, Juncheng
Chen, Minghui
Liu, Yuewei
Zhang, Hao
Wong, Tze Wai
Leung, Chi Chiu
Kromhout, Hans
Meijer, Evert
Liu, Su
Wang, Feng
Yu, Ignatius Tak-sun
Shen, Hongbing
Chen, Weihong
author_facet Tse, Lap Ah
Dai, Juncheng
Chen, Minghui
Liu, Yuewei
Zhang, Hao
Wong, Tze Wai
Leung, Chi Chiu
Kromhout, Hans
Meijer, Evert
Liu, Su
Wang, Feng
Yu, Ignatius Tak-sun
Shen, Hongbing
Chen, Weihong
author_sort Tse, Lap Ah
collection PubMed
description This study aims to develop a prognostic risk prediction model for the development of silicosis among workers exposed to silica dust in China. The prediction model was performed by using retrospective cohort of 3,492 workers exposed to silica in an iron ore, with 33 years of follow-up. We developed a risk score system using a linear combination of the predictors weighted by the LASSO penalized Cox regression coefficients. The model’s predictive accuracy was evaluated using time-dependent ROC curves. Six predictors were selected into the final prediction model (age at entry of the cohort, mean concentration of respirable silica, net years of dust exposure, smoking, illiteracy, and no. of jobs). We classified workers into three risk groups according to the quartile (Q1, Q3) of risk score; 203 (23.28%) incident silicosis cases were derived from the high risk group (risk score ≥ 5.91), whilst only 4 (0.46%) cases were from the low risk group (risk score < 3.97). The score system was regarded as accurate given the range of AUCs (83–96%). This study developed a unique score system with a good internal validity, which provides scientific guidance to the clinicians to identify high-risk workers, thus has important cost efficient implications.
format Online
Article
Text
id pubmed-4473532
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher Nature Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-44735322015-07-13 Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China Tse, Lap Ah Dai, Juncheng Chen, Minghui Liu, Yuewei Zhang, Hao Wong, Tze Wai Leung, Chi Chiu Kromhout, Hans Meijer, Evert Liu, Su Wang, Feng Yu, Ignatius Tak-sun Shen, Hongbing Chen, Weihong Sci Rep Article This study aims to develop a prognostic risk prediction model for the development of silicosis among workers exposed to silica dust in China. The prediction model was performed by using retrospective cohort of 3,492 workers exposed to silica in an iron ore, with 33 years of follow-up. We developed a risk score system using a linear combination of the predictors weighted by the LASSO penalized Cox regression coefficients. The model’s predictive accuracy was evaluated using time-dependent ROC curves. Six predictors were selected into the final prediction model (age at entry of the cohort, mean concentration of respirable silica, net years of dust exposure, smoking, illiteracy, and no. of jobs). We classified workers into three risk groups according to the quartile (Q1, Q3) of risk score; 203 (23.28%) incident silicosis cases were derived from the high risk group (risk score ≥ 5.91), whilst only 4 (0.46%) cases were from the low risk group (risk score < 3.97). The score system was regarded as accurate given the range of AUCs (83–96%). This study developed a unique score system with a good internal validity, which provides scientific guidance to the clinicians to identify high-risk workers, thus has important cost efficient implications. Nature Publishing Group 2015-06-19 /pmc/articles/PMC4473532/ /pubmed/26090590 http://dx.doi.org/10.1038/srep11059 Text en Copyright © 2015, Macmillan Publishers Limited http://creativecommons.org/licenses/by/4.0/ This work is licensed under a Creative Commons Attribution 4.0 International License. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in the credit line; if the material is not included under the Creative Commons license, users will need to obtain permission from the license holder to reproduce the material. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/
spellingShingle Article
Tse, Lap Ah
Dai, Juncheng
Chen, Minghui
Liu, Yuewei
Zhang, Hao
Wong, Tze Wai
Leung, Chi Chiu
Kromhout, Hans
Meijer, Evert
Liu, Su
Wang, Feng
Yu, Ignatius Tak-sun
Shen, Hongbing
Chen, Weihong
Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China
title Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China
title_full Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China
title_fullStr Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China
title_full_unstemmed Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China
title_short Prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in China
title_sort prediction models and risk assessment for silicosis using a retrospective cohort study among workers exposed to silica in china
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4473532/
https://www.ncbi.nlm.nih.gov/pubmed/26090590
http://dx.doi.org/10.1038/srep11059
work_keys_str_mv AT tselapah predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT daijuncheng predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT chenminghui predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT liuyuewei predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT zhanghao predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT wongtzewai predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT leungchichiu predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT kromhouthans predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT meijerevert predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT liusu predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT wangfeng predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT yuignatiustaksun predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT shenhongbing predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina
AT chenweihong predictionmodelsandriskassessmentforsilicosisusingaretrospectivecohortstudyamongworkersexposedtosilicainchina