Literature DB >> 27808657

The fractal characteristic of facial anthropometric data for developing PCA fit test panels for youth born in central China.

Lei Yang1, Ran Wei2, Henggen Shen3.   

Abstract

New principal component analysis (PCA) respirator fit test panels had been developed for current American and Chinese civilian workers based on anthropometric surveys. The PCA panels used the first two principal components (PCs) obtained from a set of 10 facial dimensions. Although the PCA panels for American and Chinese subjects adopted the bivairate framework with two PCs, the number of the PCs retained in the PCA analysis was different between Chinese subjects and Americans. For the Chinese youth group, the third PC should be retained in the PCA analysis for developing new fit test panels. In this article, an additional number label (ANL) is used to explain the third PC in PCA analysis when the first two PCs are used to construct the PCA half-facepiece respirator fit test panel for Chinese group. The three-dimensional box-counting method is proposed to estimate the ANLs by calculating fractal dimensions of the facial anthropometric data of the Chinese youth. The linear regression coefficients of scale-free range R2 are all over 0.960, which demonstrates that the facial anthropometric data of the Chinese youth has fractal characteristic. The youth subjects born in Henan province has an ANL of 2.002, which is lower than the composite facial anthropometric data of Chinese subjects born in many provinces. Hence, Henan youth subjects have the self-similar facial anthropometric characteristic and should use the particular ANL (2.002) as the important tool along with using the PCA panel. The ANL method proposed in this article not only provides a new methodology in quantifying the characteristics of facial anthropometric dimensions for any ethnic/racial group, but also extends the scope of PCA panel studies to higher dimensions.

Keywords:  Additional number label; Chinese youth; PCA panel; fractal characteristic; half-facepiece respirator

Mesh:

Year:  2017        PMID: 27808657     DOI: 10.1080/15459624.2016.1207778

Source DB:  PubMed          Journal:  J Occup Environ Hyg        ISSN: 1545-9624            Impact factor:   2.155


  2 in total

1.  Characterization of small-to-medium head-and-face dimensions for developing respirator fit test panels and evaluating fit of filtering facepiece respirators with different faceseal design.

Authors:  Yi-Chun Lin; Chen-Peng Chen
Journal:  PLoS One       Date:  2017-11-27       Impact factor: 3.240

2.  The relationship between the filtering facepiece respirator fit and the facial anthropometric dimensions among Chinese people.

Authors:  Xueyan Zhang; Ning Jia; Zhongxu Wang
Journal:  Ind Health       Date:  2019-11-30       Impact factor: 2.179

  2 in total

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