| Literature DB >> 14670092 |
Abstract
BACKGROUND: This paper demonstrates how structural equation modelling (SEM) can be used as a tool to aid in carrying out power analyses. For many complex multivariate designs that are increasingly being employed, power analyses can be difficult to carry out, because the software available lacks sufficient flexibility. Satorra and Saris developed a method for estimating the power of the likelihood ratio test for structural equation models. Whilst the Satorra and Saris approach is familiar to researchers who use the structural equation modelling approach, it is less well known amongst other researchers. The SEM approach can be equivalent to other multivariate statistical tests, and therefore the Satorra and Saris approach to power analysis can be used.Entities:
Mesh:
Year: 2003 PMID: 14670092 PMCID: PMC317297 DOI: 10.1186/1471-2288-3-27
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Results of multivariate F test, and χ2 difference test, for multivariate regression
| GLM Results | SEM results | |||
| Multivariate F (df = 2, 263) | p | χ2 (df = 2) | p | |
| Rules | 0.23 | 0.794 | 0.47 | 0.791 |
| Demands | 5.3 | 0.005 | 10.6 | 0.005 |
| Warmth | 10.7 | <0.001 | 20.9 | <0.001 |
Means and covariances of warmth, demands and rules (variances are shown in the diagonal)
| Warmth (1) | 0.37168421 | ||
| Demands (2) | 0.17187970 | 0.24575725 | |
| Rules (3) | -0.21171930 | -0.05423559 | 0.24814035 |
| μ | 1.9700 | 2.6571 | 2.9733 |
| Warmth (1) | Demands (2) | Rules (3) |
Comparison of results from GLM test carried out using SPSS and test using SEM framework, using Mx.
| GLM Test | Mx Test | |||
| Null Hypothesis | F (df) | p | χ2 (df) | p |
| 1. μ1 = μ2 = μ3 | 16.530 (2, 18) | 0.000084 | 19.8 (2) | 0.000050 |
| 2. μ1 = μ2 (rules = demands) | 34.5 (1, 19) | 0.00012 | 19.7 (1) | 0.000009 |
| 3. μ1 = μ3 (rules = warmth) | 19.29 (1, 19) | 0.00031 | 13.31 (1) | 0.00026 |
| 4. μ2 = μ3 (demands = warmth) | 3.32 (1, 19) | 0.084 | 3.06 (1) | 0.080 |
Notes: 1Result from multivariate test 2Large number of decimal places have been given to illustrate similarity of probability values based on two methods.
Results of multivariate F test, and χ2 difference test, for multivariate regression
| Multivariate F (df = 1, 266) | p | χ2 given by: | χ2 (df = 1) | p | |
| Sex | 1.4 | 0.310 | Model 2 - Model 1 | 0.73 | 0.393 |
| Type (rules vs demands) | 739.1 | <0.001 | Model 3 - Model 2 | 355.8 | <0.001 |
| Sex x Type | 1.76 | 0.186 | Model 3 - Model 0 | 1.76 | 0.184 |
χ2, df and p for models 0 to 4. Differences between these models are used to test hypotheses of main effects and interactions)
| Model | χ2 (df) | p |
| 1 ( | 358.25 (3) | <0.0001 |
| 2 ( | 357.52 (2) | <0.0001 |
| 3 ( | 1.764 (1) | 0.184 |
| 0 (no restrictions) | 0 (0) | 1.00 |
Power to detect a population correlation r = 0.3, by three programs
| Power | Mx (SEM approach) | GPower | nQuery |
| .25 | 18 | 19 | 21 |
| .50 | 41 | 41 | 44 |
| .75 | 74 | 73 | 76 |
| .80 | 84 | 82 | 85 |
| .90 | 113 | 109 | 113 |
| .95 | 139 | 134 | 139 |
| .99 | 197 | 188 | 195 |
Standardised population covariance matrix for example 2
| 1.0 | ||||
| y1 | 0.5 | 1.0 | ||
| y2 | 0.5 | 0.2 | 1.0 | |
| y3 | 0.5 | 0.2 | 0.2 | 1.0 |
| y1 | y2 | y3 |
Power for univariate and multivariate tests
| Sample size required for 80% power | ||
| Mx | NQuery | |
| Test that | 28 | 26 |
| Multivariate test (df = 3) | 14 | Note 1 |
Notes: 1 Power for a multivariate test cannot be calculated using standard software.
Relationship between correlation between DVs and Sample size required for 80% power, in multivariate ANOVA.
| Correlation between DVs | Sample size required for 80% Power |
| 0.0 | 8 |
| 0.2 | 14 |
| 0.4 | 21 |
| 0.6 | 27 |
| 0.8 | 33 |
Variation in power for repeated measures design given different level of correlation between measurements.
| Size of correlations between variables | Sample size required for 80% power |
| 0.0 | 125 |
| 0.2 | 101 |
| 0.5 | 65 |
| 0.8 | 29 |
| -0.2 | 149 |