Cluster-based exposure variation analysis

被引:10
|
作者
Samani, Afshin [1 ]
Mathiassen, Svend Erik [2 ]
Madeleine, Pascal [1 ]
机构
[1] Aalborg Univ, Lab Ergon & Work Related Disorders, Ctr Sensory Motor Interact SMI, Dept Hlth Sci & Technol, DK-9220 Aalborg, Denmark
[2] Univ Gavle, Ctr Musculoskeletal Res, Dept Occupat & Publ Hlth Sci, Fac Hlth & Occupat Studies, SE-80176 Gavle, Sweden
来源
关键词
Ergonomics; Physical work load; Linear discriminant analysis; Work-related musculoskeletal disorders; Principle component analysis; RAPID HUMAN MOVEMENTS; MUSCLE-ACTIVITY; MUSCULOSKELETAL DISORDERS; MECHANICAL EXPOSURE; PHYSICAL WORKLOAD; KINEMATIC THEORY; ASSEMBLY WORK; RISK-FACTORS; PART II; LOAD;
D O I
10.1186/1471-2288-13-54
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Static posture, repetitive movements and lack of physical variation are known risk factors for work-related musculoskeletal disorders, and thus needs to be properly assessed in occupational studies. The aims of this study were (i) to investigate the effectiveness of a conventional exposure variation analysis (EVA) in discriminating exposure time lines and (ii) to compare it with a new cluster-based method for analysis of exposure variation. Methods: For this purpose, we simulated a repeated cyclic exposure varying within each cycle between "low" and "high" exposure levels in a "near" or "far" range, and with "low" or "high" velocities (exposure change rates). The duration of each cycle was also manipulated by selecting a "small" or "large" standard deviation of the cycle time. Theses parameters reflected three dimensions of exposure variation, i. e. range, frequency and temporal similarity. Each simulation trace included two realizations of 100 concatenated cycles with either low (rho = 0.1), medium (rho = 0.5) or high (rho = 0.9) correlation between the realizations. These traces were analyzed by conventional EVA, and a novel cluster-based EVA (C-EVA). Principal component analysis (PCA) was applied on the marginal distributions of 1) the EVA of each of the realizations (univariate approach), 2) a combination of the EVA of both realizations (multivariate approach) and 3) C-EVA. The least number of principal components describing more than 90% of variability in each case was selected and the projection of marginal distributions along the selected principal component was calculated. A linear classifier was then applied to these projections to discriminate between the simulated exposure patterns, and the accuracy of classified realizations was determined. Results: C-EVA classified exposures more correctly than univariate and multivariate EVA approaches; classification accuracy was 49%, 47% and 52% for EVA (univariate and multivariate), and C-EVA, respectively (p < 0.001). All three methods performed poorly in discriminating exposure patterns differing with respect to the variability in cycle time duration. Conclusion: While C-EVA had a higher accuracy than conventional EVA, both failed to detect differences in temporal similarity. The data-driven optimality of data reduction and the capability of handling multiple exposure time lines in a single analysis are the advantages of the C-EVA.
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页数:10
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