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评估移动应用程序在职业健康与安全噪声管理中的实用性:定量测量和专家启发研究。

Assessing the Usefulness of Mobile Apps for Noise Management in Occupational Health and Safety: Quantitative Measurement and Expert Elicitation Study.

机构信息

Adelaide Exposure Science and Health, School of Public Health, The University of Adelaide, Adelaide, Australia.

Adelaide Health Technology Assessment, School of Public Health, The University of Adelaide, Adelaide, Australia.

出版信息

JMIR Mhealth Uhealth. 2023 Nov 14;11:e46846. doi: 10.2196/46846.

Abstract

BACKGROUND

Overexposure to occupational noise can lead to hearing loss. Occupational noise mapping is conventionally performed with a calibrated sound level meter (SLM). With the rise of mobile apps, there is a growing number of SLM apps available on mobile phones. However, few studies have evaluated such apps for accuracy and usefulness to guide those with occupational noise detection needs in selecting a quality app.

OBJECTIVE

The purpose of this study was to evaluate the accuracy and usefulness of SLM mobile apps to guide workplace health and safety professionals in determining these apps' suitability for assessing occupational noise exposure.

METHODS

The following three iOS apps were assessed: the NIOSH (National Institute for Occupational Safety and Health) Sound Level Meter, Decibel X, and SoundMeter X apps. The selected apps were evaluated for their accuracy in measuring sound levels in low-, moderate-, and high-noise settings within both simulated environments and real-world environments by comparing them to a conventional SLM. The usefulness of the apps was then assessed by occupational health specialists using the Mobile App Rating Scale (MARS).

RESULTS

The NIOSH Sound Level Meter app accurately measured noise across a range of sound levels in both simulated settings and real-world settings. However, considerable variation was observed between readings. In comparison, the Decibel X and SoundMeter X apps showed more consistent readings but consistently underestimated noise levels, suggesting that they may pose a risk for workers. Nevertheless, none of the differences in sound measurements between the three apps and the conventional SLM were statistically significant (NIOSH Sound Level Meter: P=.78; Decibel X: P=.38; SoundMeter X: P=.40). The MARS scores for the three apps were all above 3.0, indicating the usefulness of these apps.

CONCLUSIONS

Under the conditions of this study, the NIOSH Sound Level Meter app had equivalent accuracy to the calibrated SLM and a degree of usefulness according to the MARS. This suggests that the NIOSH Sound Level Meter app may be suitable for mapping noise levels as part of a monitoring strategy in workplaces. However, it is important to understand its limitations. Mobile apps should complement but not replace conventional SLMs when trying to assess occupational noise exposure risk. Our outcomes also suggest that the MARS tool may have limited applicability to measurement-based apps and may be more suited to information-based apps that collect, record, and store information.

摘要

背景

职业性噪声暴露可导致听力损失。职业噪声测绘传统上使用经过校准的声级计(SLM)进行。随着移动应用程序的兴起,手机上可用的 SLM 应用程序越来越多。然而,很少有研究评估这些应用程序的准确性和实用性,以指导有职业噪声检测需求的人选择高质量的应用程序。

目的

本研究旨在评估 SLM 移动应用程序的准确性和实用性,以指导工作场所健康和安全专业人员确定这些应用程序是否适合评估职业噪声暴露。

方法

评估了以下三个 iOS 应用程序:NIOSH(美国国家职业安全与健康研究所)声级计、Decibel X 和 SoundMeter X 应用程序。通过将所选应用程序与传统 SLM 进行比较,评估它们在模拟环境和真实环境中测量低、中、高声级的准确性。然后,职业健康专家使用移动应用程序评级量表(MARS)评估应用程序的实用性。

结果

NIOSH 声级计应用程序在模拟环境和真实环境中均能准确测量各种声级范围内的噪声。然而,读数之间存在相当大的差异。相比之下,Decibel X 和 SoundMeter X 应用程序的读数更为一致,但均低估了噪声水平,这表明它们可能对工人构成风险。然而,三个应用程序与传统 SLM 之间的声音测量差异均无统计学意义(NIOSH 声级计:P=.78;Decibel X:P=.38;SoundMeter X:P=.40)。三个应用程序的 MARS 评分均高于 3.0,表明这些应用程序具有实用性。

结论

在本研究条件下,NIOSH 声级计应用程序的准确性与校准的 SLM 相当,并且根据 MARS 具有一定的实用性。这表明,NIOSH 声级计应用程序可能适合作为监测策略的一部分,用于测绘工作场所的噪声水平。然而,了解其局限性很重要。在评估职业噪声暴露风险时,移动应用程序应作为传统 SLM 的补充,而不是替代。我们的结果还表明,MARS 工具可能不适用于基于测量的应用程序,而更适合于收集、记录和存储信息的基于信息的应用程序。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f68f/10686533/dbb6164a1ed5/mhealth-v11-e46846-g001.jpg

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