| Literature DB >> 20973987 |
Karen L Saban1, Fred B Bryant, Domenic J Reda, Kevin T Stroupe, Denise M Hynes.
Abstract
BACKGROUND: Studies have demonstrated that perceived health-related quality of life (HRQOL) of patients receiving hemodialysis is significantly impaired. Since HRQOL outcome data are often used to compare groups to determine health care effectiveness it is imperative that measures of HRQOL are valid. However, valid HRQOL comparisons between groups can only be made if instrument invariance is demonstrated. The Kidney Disease Quality of Life-Short Form (KDQOL-SF) is a widely used HRQOL measure for patients with chronic kidney disease (CKD) however, it has not been validated in the Veteran population. Therefore, the purpose of this study was to examine the measurement invariance of the KDQOL-SF across Veterans and non-Veterans with CKD.Entities:
Mesh:
Year: 2010 PMID: 20973987 PMCID: PMC2984554 DOI: 10.1186/1477-7525-8-120
Source DB: PubMed Journal: Health Qual Life Outcomes ISSN: 1477-7525 Impact factor: 3.186
Demographics of VETERAN and DOPPS Samples
| VARIABLE | VETERAN N = 314 | DOPPS N = 3300 |
|---|---|---|
| Age | ||
| Mean years | 62.14 | 59.68 |
| Range | 28-85 years | 28-85 years |
| (Standard deviation) | (11.24) | (14.38) |
| Marital status | ||
| Married | 154 (49.36%) | 1965 (61.21%) |
| Single | 37 (11.85%) | 600 (18.70%) |
| Divorced/Separated | 86 (27.56%) | 419 (13.05%) |
| Widowed | 35 (11.22%) | 226 (7.04%) |
| Race | ||
| White | 153 (49.35%) | 1965 (59.5%) |
| Black | 150 (48.39%) | 1071 (32.5%) |
| Other | 7 (2.26%) | 260 (7.9%) |
| Education | ||
| Less than high school | 59 (18.91%) | 426 (15.91%) |
| Completed high school/trade school | 72 (23.08%) | 514 (19.19%) |
| Some college | 139 (44.55%) | 861 (32.15%) |
| Completed college | 35 (11.22%) | 596 (22.25%) |
| Graduate work | 7 (2.24%) | 281 (10.49%) |
| Employed | 26 (8.28%) | 357 (10.81%) |
| Annual income | ||
| $0 to $10,000 | 75 (23.89%) | 716 (21.71%) |
| $10,000 to $20,000 | 100 (31.85%) | 642 (19.45%) |
| $20,000 to $30,000 | 64 (20.38%) | 635 (19.24%) |
| > $30,000 | 64 (20.38%) | 778 (23.57%) |
| Not reported | 11 (3.50%) | 529 (16.03%) |
| Years since beginning dialysis | 2.50 ± 2.85 | 2.08 ± 3.47 |
Figure 1Subscales of KDQOL. The ellipses represent latent factors (i.e., the SF-36 and KDCS instruments), the rectangles represent measured indicators (i.e., the subscales for each instrument), the lines connecting instruments to subscales are factor loadings, and the curve connecting the two instruments represents a factor correlation. Four KDCS subscales (sexual function, work status, patient satisfaction, and staff encouragement) were not included in the confirmatory factor analysis models for this study). Because of large amounts of missing data from both the VETERANS and DOPPs samples for the sexual function subscale, sexual function was not included in the calculation of the KDCS for this study. In addition, a one-factor confirmatory factor analysis of the KDCS demonstrated weak factor loadings of the subscales of work status, patient satisfaction and dialysis staff encouragement suggesting that these three subscales measure something other than HRQOL. Therefore, these four subscales were not included in our measurement models (see data analysis section for further details).
Within-Group Completely Standardized Factor Loadings and Squared Multiple Correlations for VETERAN (N = 314) and DOPPS (N = 3,300) Samples for the Two-Factor CFA Model
| Subscales | Factors | Squared Multiple Correlations | ||||
|---|---|---|---|---|---|---|
| KDCS | SF-36 | |||||
| VETERAN | DOPPS | VETERAN | DOPPS | VETERAN | DOPPS | |
| Burden of Kidney Disease | .593 | .697 | - - | - - | .351 | .485 |
| Quality of Social Interaction | .628 | .591 | - - | - - | .394 | .349 |
| Cognitive Functioning | .655 | .631 | - - | - - | .429 | .398 |
| Symptoms/Problems | .750 | .747 | - - | - - | .562 | .558 |
| Effects of Kidney Disease | .728 | .733 | - - | - - | .530 | .537 |
| Sleep | .618 | .584 | - - | - - | .382 | .341 |
| Social Support | .516 | .392 | - - | - - | .266 | .154 |
| PF | - - | - - | .523 | .580 | .273 | .336 |
| RP | - - | - - | .614 | .611 | .377 | .373 |
| BP | - - | - - | .714 | .678 | .510 | .459 |
| GH | - - | - - | .676 | .725 | .457 | .526 |
| MH | - - | - - | .743 | .713 | .551 | .508 |
| RE | - - | - - | .564 | .586 | .318 | .344 |
| SF | - - | - - | .761 | .784 | .579 | .614 |
| VT | - - | - - | .718 | .763 | .516 | .583 |
Note. CFA = confirmatory factor analysis. Completely standardized factor loadings are regression coefficients obtained in predicting subscale scores when factors and subscales are both standardized. Squared multiple correlations represent the proportion of variance in each subscale that the underlying factor explains. Blank loadings were fixed at zero in the CFA model. PF = Physical Functioning. RP = Role Physical. BP = Bodily Pain. GH = General Health. MH = Mental Health. RE = Role Emotional. SF = Social Functioning. VT = Vitality.
Results of tests of invariance for the VETERAN (N = 314) and DOPPS (N = 3,300) samples
| Comparative Statistics | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| Model | Contrast with Model # | Δ | Unadj. | Bonf. Adj. | ΔCFI | ||||
| 1. Baseline model: Two factors (KDCS & SF-36) with no invariance constraints | 2796.225 | 178 | - - | - - | - - | - - | - - | - - | - - |
| 2. KDCS factor loadings invariant | 2819.092 | 184 | 1 | 22.867 | 6 | .00085 | .025 | .0003 | .08 |
| 3. SF-36 factor loadings invariant | 2804.771 | 185 | 1 | 8.546 | 7 | .29 | ns | .0002 | .05 |
| 4. KDCS Burden subscale loading invariant | 2796.239 | 179 | 1 | 0.014 | 1 | .91 | ns | <.0001 | <.01 |
| 5. KDCS Social Interaction subscale loading invariant | 2799.730 | 179 | 1 | 3.505 | 1 | .062 | ns | .0004 | .03 |
| 6. KDCS Cognitive subscale loading invariant | 2796.928 | 179 | 1 | 0.703 | 1 | .41 | ns | <.0001 | .01 |
| 7. KDCS Effects subscale loading invariant | 2798.687 | 179 | 1 | 2.462 | 1 | .12 | ns | .0005 | .03 |
| 8. KDCS Sleep subscale loading invariant | 2811.091 | 179 | 1 | 14.866 | 1 | .00012 | .0036 | .0003 | .06 |
| 9. KDCS Social Support subscale loading invariant | 2803.528 | 179 | 1 | 7.303 | 1 | .0069 | ns | .0001 | .04 |
| 10. Partially metric invariant model (factor loadings for KDCS Sleep & Social Support subscales noninvariant) | 2810.567 | 189 | 1 | 14.342 | 11 | .22 | ns | .0003 | .06 |
| 11. Partially invariant model with 5 metric invariant KDCS subscale intercepts invariant | 2894.471 | 194 | 10 | 83.904 | 5 | .000001 | .00005 | .0019 | .15 |
| 12. Partially invariant model with 8 metric invariant SF36 subscale intercepts invariant | 2964.251 | 197 | 10 | 153.684 | 8 | .000001 | .00005 | .0040 | .21 |
| 13. Partially invariant model with intercept of KDCS Burden subscale invariant | 2812.836 | 190 | 10 | 2.269 | 1 | .14 | ns | .0003 | .03 |
| 14. Partially invariant model with intercept of KDCS Social Interaction subscale invariant | 2838.461 | 190 | 10 | 27.894 | 1 | .000001 | .00005 | .0008 | .09 |
| 15. Partially invariant model with intercept of KDCS Cognitive subscale invariant | 2835.202 | 190 | 10 | 24.635 | 1 | .000001 | .00005 | .0007 | .08 |
| 16. Partially invariant model with intercept of KDCS Symptoms subscale invariant | 2877.711 | 190 | 10 | 67.144 | 1 | .000001 | .00005 | .0015 | .14 |
| 17. Partially invariant model with intercept of KDCS Effects subscale invariant | 2839.951 | 190 | 10 | 29.384 | 1 | .000001 | .00005 | .0008 | .09 |
| 18. Partially invariant model with intercept of SF-36 PF subscale invariant | 2815.734 | 190 | 10 | 5.167 | 1 | .024 | ns | .0004 | .04 |
| 19. Partially invariant model with intercept of SF-36 RP subscale invariant | 2846.345 | 190 | 10 | 35.778 | 1 | .000001 | .00005 | .0001 | .10 |
| 20. Partially invariant model with intercept of SF-36 BP subscale invariant | 2819.639 | 190 | 10 | 9.072 | 1 | .0026 | ns | .0004 | .05 |
| 21. Partially invariant model with intercept of SF-36 GH subscale invariant | 2810.568 | 190 | 10 | 0.001 | 1 | .98 | ns | .0003 | <.01 |
| 22. Partially invariant model with intercept of SF-36 MH subscale invariant | 2837.769 | 190 | 10 | 27.202 | 1 | .000001 | .00005 | .0008 | .09 |
| 23. Partially invariant model with intercept of SF-36 RE subscale invariant | 2900.352 | 190 | 10 | 89.785 | 1 | .000001 | .00005 | .0018 | .16 |
| 24. Partially invariant model with intercept of SF-36 SF subscale invariant | 2831.587 | 190 | 10 | 21.020 | 1 | .000005 | .00016 | .0007 | .08 |
| 25. Partially invariant model with intercept of SF-36 VT subscale invariant | 2810.914 | 190 | 10 | 0.347 | 1 | .56 | ns | .0003 | <.01 |
| 26. Partially metric invariant model with two-factor variances & covariance invariant | 2816.786 | 192 | 10 | 6.219 | 3 | .11 | ns | .0005 | .04 |
| 27. Partially metric invariant model with factor variances-covariance & unique error variances for KDCS subscales invariant | 2866.086 | 199 | 26 | 49.300 | 7 | .000001 | .00005 | .0007 | .12 |
| 28. Partially metric invariant model with factor variances-covariance & unique error variances for SF-36 subscales invariant | 2840.570 | 200 | 26 | 23.784 | 8 | .0025 | ns | <.0001 | .09 |
| 29. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Burden subscale invariant | 2827.202 | 193 | 26 | 10.416 | 1 | .0013 | .036 | .0003 | .07 |
| 30. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Social Interaction subscale invariant | 2816.909 | 193 | 26 | 0.123 | 1 | .73 | ns | .0006 | .01 |
| 31. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Cognitive subscale invariant | 2821.228 | 193 | 26 | 4.442 | 1 | .036 | ns | .0001 | .04 |
| 32. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Symptoms subscale invariant | 2825.083 | 193 | 26 | 8.297 | 1 | .004 | ns | .0001 | .05 |
| 33. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Effects subscale invariant | 2816.917 | 193 | 26 | 0.131 | 1 | .72 | ns | .0006 | .01 |
| 34. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Sleep subscale invariant | 2838.330 | 193 | 26 | 21.544 | 1 | .000004 | .00013 | <.0001 | .08 |
| 35. Partially metric invariant model with factor variances-covariance & unique error variance for KDCS Social Support subscale invariant | 2821.074 | 193 | 26 | 4.288 | 1 | .039 | ns | .0009 | .03 |
| 36. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 PF subscale invariant | 2817.060 | 193 | 26 | 0.274 | 1 | .61 | ns | .0006 | .01 |
| 37. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 RP subscale invariant | 2818.194 | 193 | 26 | 1.408 | 1 | .24 | ns | .0004 | .02 |
| 38. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 BP subscale invariant | 2816.855 | 193 | 26 | 0.069 | 1 | .80 | ns | .0007 | <.01 |
| 39. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 GH subscale invariant | 2819.464 | 193 | 26 | 2.678 | 1 | .11 | ns | .0003 | .03 |
| 40. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 MH subscale invariant | 2817.791 | 193 | 26 | 1.005 | 1 | .32 | ns | .0009 | .02 |
| 41. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 RE subscale invariant | 2821.873 | 193 | 26 | 5.087 | 1 | .025 | ns | .0011 | .09 |
| 42. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 SF subscale invariant | 2821.253 | 193 | 26 | 4.467 | .035 | ns | .0002 | .04 | |
| 43. Partially metric invariant model with factor variances-covariance & unique error variance for SF-36 VT subscale invariant | 2826.729 | 193 | 26 | 9.943 | .0017 | .045 | .0002 | .05 | |
Note: CFI = Comparative fit index. W2 = ratio of chi-square divided by N [68], which is analogous to R-squared (i.e., the proportion of explained variance) in multiple regression. Cohen [68] suggested that w2 ≤ 0.01 is small, w2 = 0.09 is medium, and w2 ≥ 0.25 is large.