| Literature DB >> 22992327 |
Kristian Thorlund1, Edward J Mills.
Abstract
BACKGROUND: Network meta-analysis is becoming increasingly popular for establishing comparative effectiveness among multiple interventions for the same disease. Network meta-analysis inherits all methodological challenges of standard pairwise meta-analysis, but with increased complexity due to the multitude of intervention comparisons. One issue that is now widely recognized in pairwise meta-analysis is the issue of sample size and statistical power. This issue, however, has so far only received little attention in network meta-analysis. To date, no approaches have been proposed for evaluating the adequacy of the sample size, and thus power, in a treatment network.Entities:
Mesh:
Year: 2012 PMID: 22992327 PMCID: PMC3514119 DOI: 10.1186/2046-4053-1-41
Source DB: PubMed Journal: Syst Rev ISSN: 2046-4053
The required number of indirect comparison trials required to produce the same precision as a given number of direct (head-to-head) trials
| 1:1 | 4 | ||||||
| 1:2 | 4.5 | 6 (2:4) | 15 (5:10) | 24 (8:16) | |||
| 1:3 | 5.33 | 8 (2:6) | 12 (3:9) | 24 (6:18) | 28 (7:21) | 56 (14:42) | |
| 1:4 | 6.25 | 10 (2:8) | 15 (3:12) | 20 (4:16) | 35 (7:28) | 65 (13:52) | |
| 1:5 | 7.2 | 12 (2:10) | 18 (3:15) | 24 (4:20) | 30 (5:25) | ||
| 1:6 | 8.17 | 14 (2:12) | 21 (3:18) | 28 (4:24) | 35 (5:30) | 42 (6:36) | 84 (12:72) |
| 1:7 | 9.14 | 16 (2:14) | 24 (3:21) | 32 (4:28) | 40 (5:35) | 48 (6:42) | 96 (12:84) |
| 1:8 | 10.13 | 18 (2:16) | 27 (3:24) | 36 (4:32) | 45 (5:40) | 54 (6:48) | 108 (12:96) |
| 1:9 | 11.11 | 20 (2:18) | 30 (3:27) | 40 (4:36) | 50 (5:45) | 60 (6:54) | 120 (12:108) |
| 1:10 | 12.1 | 22 (2:20) | 33 (3:30) | 44 (4:40) | 55 (5:50) | 66 (6:60) | |
Effective heterogeneity-corrected sample sizes of indirect comparison scenarios with varying degrees of patient count ratios and heterogeneity in each comparison (A vs. C and B vs. C), but with fixed total sample size of 10,000
| 5,000:5,000 (1:1) | 4.00 | 0% | 0% | 4.00 | 2,500 |
| | | 0% | 25% | 4.60 | 2,188 |
| | | 0% | 50% | 5.33 | 1,875 |
| | | 25% | 50% | 6.40 | 1,563 |
| | | 50% | 50% | 8.00 | 1,250 |
| 3,333:6,667 (1:2) | 4.50 | 0% | 0% | 4.50 | 2,222 |
| | | 0% | 25% | 5.40 | 1,852 |
| | | 0% | 50% | 6.75 | 1,481 |
| | | 25% | 0% | 4.91 | 2,037 |
| | | 25% | 25% | 6.00 | 1,667 |
| | | 25% | 50% | 7.72 | 1,296 |
| | | 50% | 0% | 5.40 | 1,852 |
| | | 50% | 25% | 6.75 | 1,482 |
| | | 50% | 50% | 9.00 | 1,111 |
| 2,500:7,500 (1:3) | 5.33 | 0% | 0% | 5.33 | 1,876 |
| | | 0% | 25% | 6.56 | 1,524 |
| | | 0% | 50% | 8.53 | 1,173 |
| | | 25% | 0% | 5.69 | 1,759 |
| | | 25% | 25% | 7.11 | 1,407 |
| | | 25% | 50% | 9.48 | 1,055 |
| | | 50% | 0% | 6.09 | 1,642 |
| | | 50% | 25% | 7.75 | 1,290 |
| | | 50% | 50% | 10.7 | 938 |
| 2,000:8,000 (1:4) | 6.25 | 0% | 0% | 6.25 | 1,600 |
| | | 0% | 25% | 7.81 | 1,280 |
| | | 0% | 50% | 10.4 | 960 |
| | | 25% | 0% | 6.58 | 1,520 |
| | | 25% | 25% | 8.33 | 1,200 |
| | | 25% | 50% | 11.4 | 880 |
| | | 50% | 0% | 6.94 | 1,440 |
| | | 50% | 25% | 8.93 | 1,120 |
| | | 50% | 50% | 12.5 | 800 |
| 1,667:8,333 (1:5) | 7.20 | 0% | 0% | 7.20 | 1,389 |
| | | 0% | 25% | 9.09 | 1,100 |
| | | 0% | 50% | 12.4 | 810 |
| | | 25% | 0% | 7.51 | 1,331 |
| | | 25% | 25% | 9.60 | 1,042 |
| | | 25% | 50% | 13.3 | 752 |
| | | 50% | 0% | 7.86 | 1,273 |
| | | 50% | 25% | 10.2 | 984 |
| | | 50% | 50% | 14.4 | 694 |
| 1,000:9,000 (1:9) | 11.11 | 0% | 0% | 11.1 | 900 |
| | | 0% | 25% | 14.3 | 698 |
| | | 0% | 50% | 20.2 | 495 |
| | | 25% | 0% | 11.4 | 878 |
| | | 25% | 25% | 14.8 | 675 |
| | | 25% | 50% | 21.1 | 473 |
| | | 50% | 0% | 11.7 | 855 |
| | | 50% | 25% | 15.3 | 653 |
| 50% | 50% | 22.2 | 450 |
Strengths and limitations of the three approaches for gauging the effective degree of power and precision in indirect comparisons
| Effective number of trials | 1. Easy and fast to calculate | 1. Only valid to the extent trial sample sizes are equal and heterogeneity is absent |
| 2. Lacks flexibility for approximate trial count ratios | ||
| Effective sample size (ignoring heterogeneity) | 1. Easy and fast to calculate | 1. Does not account for heterogeneity |
| 2. Exact calculations for all trial count ratios | 2. Assumes equal meta-analysis population variances across comparisons | |
| 3. Sample size (no. of patients) resonates well with clinicians | ||
| Effective sample size (correcting for heterogeneity) | 1. Exact calculations for all precision ratios | 1. Assumes equal meta-analysis population variances across comparisons |
| 2. Accounts for heterogeneity | 2. Depends on precise heterogeneity estimation | |
| 3. Easy to calculate | ||
| 4. Sample size (no. of patients) resonates well with clinicians | 1. Statistical information does not resonate well with a clinical audience | |
| Effective statistical information | 1. Theoretically statistically exact | |
| 2. Not straight forward to calculate | ||
| 3. Depends on precise heterogeneity variance estimation or requires elicitation of Bayesian variance priors |
Figure 1The number of trials, number of patients and degree of heterogeneity (I2) for each comparison in the treatment network that is informed by head-to-head evidence.
Figure 2The sources and strength of direct and indirect evidence (by crude sample size) for the four comparisons of newer treatments versus low-dose NRT. The thickened solid lines indicate the direct evidence for the comparison of interest. The thickened dashed lines indicate the indirect evidence that adds to the total effective sample size. The thickened dot-dashed lines indicate a (sparse) source of indirect evidence that can be ignored.
The effective sample sizes and corresponding information fractions and power estimates from the four comparisons of newer treatments vs. low-dose NRT
| Combination NRT | 1,664 | 1,691 | 3,355 | 53% | 66% | - | 1.05 (0.76 – 1.41) |
| High-dose NRT | 3,605 | 2,211 | 5,816 | 92% | 88% | >99% | 1.32 (1.11 – 1.57) |
| Buproprion | - | 7,707 | 7,707 | >100% | 95% | - | 0.99 (0.86 – 1.14) |
| Varenicline | 720 | 3,625 | 4,268 | 68% | 76% | >99% | 1.38 (1.15 – 1.64) |