Health Hazards Prevention Branch, Pittsburgh Mining Research Division, National Institute for Occupational Safety and Health, Centers for Disease Control and Prevention, Pittsburgh, PA 15236, USA.
Health Hazards Prevention Branch, Pittsburgh Mining Research Division, National Institute for Occupational Safety and Health, Centers for Disease Control and Prevention, Pittsburgh, PA 15236, USA.
J Hazard Mater. 2024 May 5;469:133874. doi: 10.1016/j.jhazmat.2024.133874. Epub 2024 Feb 24.
This study presents a possible application of Fourier transform infrared (FTIR) spectrometry and multivariate data analysis, principal component analysis (PCA), and partial least squares-discriminant analysis (PLS-DA) for classifying asbestos and their nonasbestiform analogues. The objectives of the study are: 1) to classify six regulated asbestos types and 2) to classify between asbestos types and their nonasbestiform analogues. The respirable fraction of six regulated asbestos types and their nonasbestiform analogues were prepared in potassium bromide pellets and collected on polyvinyl chloride membrane filters for FTIR measurement. Both PCA and PLS-DA classified asbestos types and their nonasbestiform analogues on the score plots showed a very distinct clustering of samples between the serpentine (chrysotile) and amphibole groups. The PLS-DA model provided ∼95% correct prediction with a single asbestos type in the sample, although it did not provide all correct predictions for all the challenge samples due to their inherent complexity and the limited sample number. Further studies are necessary for a better prediction level in real samples and standardization of sampling and analysis procedures.
本研究提出了傅里叶变换红外(FTIR)光谱和多元数据分析、主成分分析(PCA)和偏最小二乘判别分析(PLS-DA)在分类石棉及其非石棉类似物方面的可能应用。该研究的目的是:1)对六种规定的石棉类型进行分类,2)对石棉类型与其非石棉类似物进行分类。六种规定的石棉类型及其非石棉类似物的可呼吸部分在溴化钾压片中制备,并收集在聚氯乙烯膜滤器上进行 FTIR 测量。PCA 和 PLS-DA 在得分图上对石棉类型及其非石棉类似物进行分类,结果表明蛇纹石(温石棉)和角闪石组之间的样品聚类非常明显。PLS-DA 模型对样品中的单一石棉类型提供了约 95%的正确预测,但由于其固有复杂性和有限的样本数量,并不是所有的挑战样本都能得到正确预测。需要进一步的研究以提高在实际样本中的预测水平,并标准化采样和分析程序。