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Comparison of Discriminant Analysis Methods: Application to Occupational Exposure to Particulate Matter

机译:判别分析方法的比较:职业暴露于颗粒物质的应用

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Health effects associated with occupational exposure to particulate matter have been studied by several authors. In this study were selected six industries of five different areas: Cork company 1, Cork company 2, poultry, slaughterhouse for cattle, riding arena and production of animal feed. The measurements tool was a portable device for direct reading. This tool provides information on the particle number concentration for six different diameters, namely 0.3 μm, 0.5 μm, 1 μm, 2.5 μm, 5 μm and 10 μm. The focus on these features is because they might be more closely related with adverse health effects. The aim is to identify the particles that better discriminate the industries, with the ultimate goal of classifying industries regarding potential negative effects on workers' health. Several methods of discriminant analysis were applied to data of occupational exposure to particulate matter and compared with respect to classification accuracy. The selected methods were linear discriminant analyses (LDA); linear quadratic discriminant analysis (QDA), robust linear discriminant analysis with selected estimators (MLE (Maximum Likelihood Estimators), MVE (Minimum Volume Elipsoid), "t", MCD (Minimum Covariance Determinant), MCD-A, MCD-B), multinomial logistic regression and artificial neural networks (ANN). The predictive accuracy of the methods was accessed through a simulation study. ANN yielded the highest rate of classification accuracy in the data set under study. Results indicate that the particle number concentration of diameter size 0.5 μm is the parameter that better discriminates industries.
机译:几个作者研究了与职业暴露于颗粒物质的健康效果。在这项研究中被选中了六个不同地区的行业:科克公司1,科克公司2,家禽,牛屠宰场,骑行舞台和动物饲料生产。测量工具是用于直接读数的便携式设备。该工具提供有关六个不同直径的粒子数浓度的信息,即0.3μm,0.5μm,1μm,2.5μm,5μm和10μm。关注这些特征是因为它们可能与不良健康效果更密切相关。目的是识别更好地歧视行业的颗粒,归类于对工人健康潜在负面影响的巨大态度。将几种判别分析方法应用于临床暴露于颗粒物质的数据,并与分类准确性相比。所选方法是线性判别分析(LDA);线性二次判别分析(QDA),采用选定估计的鲁棒线性判别分析(MLE(最大似然估计),MVE(最小卷ELIPSOID),“T”,MCD(最小协方差),MCD-A,MCD-B),多项式物流回归和人工神经网络(ANN)。通过模拟研究访问了这些方法的预测准确性。 Ann在研究中的数据集中产生了最高的分类准确率。结果表明,直径大小0.5μm的粒子数浓度是更好地辨别行业的参数。

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