Department of Chemical Engineering, Minerals to Metals Initiative, University of Cape Town, Cape Town 7701, South Africa.
Department of Chemical Engineering, Centre for Minerals Research, University of Cape Town, Cape Town 7701, South Africa.
Environ Sci Technol. 2024 Jan 23;58(3):1636-1647. doi: 10.1021/acs.est.3c08732. Epub 2024 Jan 7.
Mine dust has been linked to the development of pneumoconiotic diseases such as silicosis and coal workers' pneumoconiosis. Currently, it is understood that the physicochemical and mineralogical characteristics drive the toxic nature of dust particles; however, it remains unclear which parameter(s) account for the differential toxicity of coal dust. This study aims to address this issue by demonstrating the use of the partial least squares regression (PLSR) machine learning approach to compare the influence of D sub 10 μm coal particle characteristics against markers of cellular damage. The resulting analysis of 72 particle characteristics against cytotoxicity and lipid peroxidation reflects the power of PLSR as a tool to elucidate complex particle-cell relationships. By comparing the relative influence of each characteristic within the model, the results reflect that physical characteristics such as shape and particle roughness may have a greater impact on cytotoxicity and lipid peroxidation than composition-based parameters. These results present the first multivariate assessment of a broad-spectrum data set of coal dust characteristics using latent structures to assess the relative influence of particle characteristics on cellular damage.
矿尘已被证实与尘肺病(如矽肺和煤工尘肺)等肺部疾病的发生有关。目前,人们已经认识到粉尘颗粒的物理化学和矿物质特性决定了其毒性;然而,尚不清楚哪些参数导致了煤尘的毒性差异。本研究旨在通过证明偏最小二乘回归(PLSR)机器学习方法的应用来解决这一问题,该方法用于比较 D sub 10 μm 煤颗粒特性对细胞损伤标志物的影响。对 72 个颗粒特性的细胞毒性和脂质过氧化分析反映了 PLSR 作为阐明复杂颗粒-细胞关系的工具的强大功能。通过比较模型中每个特性的相对影响,结果表明物理特性(如形状和颗粒粗糙度)对细胞毒性和脂质过氧化的影响可能大于基于成分的参数。这些结果首次使用潜在结构对广泛的煤尘特性数据集进行了多元评估,以评估颗粒特性对细胞损伤的相对影响。