估计矿工职业性噪音引起的听力损失风险:对南非铂矿数据的回顾。

IF 1 Q3 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY
Liepollo Ntlhakana, Gill Nelson, Katijah Khoza-Shangase
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引用次数: 8

摘要

背景:职业性噪声引起的听力损失(ONIHL)是南非矿工的一个复杂但可预防的健康问题。精心收集的数据应用于设计解决这一健康问题的干预措施。目的:在二次数据审查中,对单个矿山的电子数据进行了审查,以确定听力保护从业者认为对识别“有风险”矿工有用的因素,并建立因素,为将2014年听力保护计划(HCP)里程碑整合到矿山当前的主动数据管理系统(PDMS)铺平道路。本文的目的是确定作为HCP的一部分,矿山听力保护从业人员如何管理与onhl相关的已公布危险因素的矿工;确定矿山听力保护从业人员是否可以使用基线听力损失百分比(PLH)作为听力保护措施来估计矿工患onhl的风险;并估计噪音暴露对ONIHL风险的贡献。方法:在二次数据回顾设计中,回顾了铂矿的两个电子数据集的记录:第一个包含诊断听力记录(N = 1938),第二个包含诊断为ONIHL的矿工子集(N = 73)。数据可用于2014-2017年期间,包括人口统计、职业、听力测定和ONIHL诊断数据。使用功能风险管理结构确定与ONIHL相关的矿工风险因素。对于基线PLH边际为0% - 40%(增量为5%),采用逻辑回归模型来估计有发生ONIHL风险的矿工的调整后预测。使用双向样本比例检验估计噪声暴露作为ONIHL风险的贡献。结果:矿工平均年龄(均为男性)为47±8.5岁;超过80%的人工作时间超过10年。只有34% (n = 669)的矿工有有效的基线听力学记录。基线PLH为0%的矿工预测患onhl的风险为20%,基线PLH为40%的矿工预测患onhl的风险为45%。噪声暴露风险排名显示,64.9% (n = 1250)的矿工暴露于91 - 105 dBA的噪声暴露水平,59名(80.8%)诊断为ONIHL的矿工暴露于高达104 dBA的噪声暴露水平。结论:这些发现表明矿山PDMS存在显著差距,需要引起重视。尽管如此,该矿目前的数据采集可用于识别有患onhl风险的矿工。矿井听力保护从业人员使用的PLH转诊分界点(≥2.5%),当与基线PLH位移结合使用时,是暴露于≥85 dBA噪声的矿工早期识别ONIHL的主要因素。建议制定一项包容性的综合数据管理方案,其中包括矿工的噪声暴露水平、职业、年龄以及结核病和人体免疫缺陷综合症的医疗监测数据集,因为这些是制定国家信息健康管理制度的重要风险指标,特别是在南非的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating miners at risk for occupational noise-induced hearing loss: A review of data from a South African platinum mine.

Estimating miners at risk for occupational noise-induced hearing loss: A review of data from a South African platinum mine.

Estimating miners at risk for occupational noise-induced hearing loss: A review of data from a South African platinum mine.

Background: Occupational noise-induced hearing loss (ONIHL) is a complex, but preventable, health problem for South African miners. Meticulously collected data should be made use of to design interventions to address this health issue.

Objectives: A single mine's electronic data were reviewed in a secondary data review to determine, from the records, factors that hearing conservation practitioners deemed useful for identifying 'at risk' miners and to establish factors that would pave the way for the integration of the 2014 hearing conservation programme (HCP) milestones into the mine's current proactive data management system (PDMS). The objectives of this article were to establish how miners with published risk factors associated with ONIHL were managed by the mine's hearing conservation practitioners as part of the HCP; to determine if the mine's hearing conservation practitioners could estimate miners' risk of ONIHL using baseline percentage loss of hearing (PLH) as a hearing conservation measure; and to estimate the contribution of noise exposure to ONIHL risk.

Method: In a secondary data review design, records in a platinum mine's two electronic data sets were reviewed: the first contained diagnostic audiometry records (N = 1938) and the second comprised a subset of miners diagnosed with ONIHL (n = 73). Data were available for the period 2014-2017 and included demographic, occupational, audiometry and ONIHL diagnosis data. Miners' risk factors associated with ONIHL were identified using the functional risk management structure. A logistic regression model was used for the baseline PLH margins of 0% - 40% (in 5% increments) to estimate the adjusted predictions for miners at risk of developing ONIHL. The contribution of noise exposure as a risk for ONIHL was estimated using a two-way sample proportion test.

Results: The mean age of the miners (all male candidates) was 47 ± 8.5 years; more than 80% had worked for longer than 10 years. Valid baseline audiometry records were available for only 34% (n = 669) of the miners. Miners with a 0% baseline PLH had a 20% predicted risk of ONIHL, and a 45% predicted risk if they had a 40% baseline PLH - these employees were referred. The noise exposure risk rankings revealed that 64.9% (n = 1250) of the miners were exposed to 91 dBA - 105 dBA noise exposure levels and that 59 (80.8%) diagnosed with ONIHL were exposed to noise levels of up to 104 dBA.

Conclusion: These findings indicate significant gaps in the mine's PDMS, requiring attention. Nonetheless, the mine's current data capturing may be used to identify miners at risk of developing ONIHL. The PLH referral cut-off point (≥2.5%) used by the mine's hearing conservation practitioners, when used in conjunction with baseline PLH shifts, was the major factor in early identification of ONIHL in miners exposed to ≥85 dBA noise. An inclusive integrative data management programme that includes the medical surveillance data set of the miners' noise exposure levels, occupations, ages and medical treatments for tuberculosis and human immunodeficiency syndrome is recommended, as these are important risk indicators for developing ONIHL, particularly within the South African context.

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来源期刊
SOUTH AFRICAN JOURNAL OF COMMUNICATION DISORDERS
SOUTH AFRICAN JOURNAL OF COMMUNICATION DISORDERS AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY-
CiteScore
2.10
自引率
36.40%
发文量
37
审稿时长
30 weeks
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