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ADDRESSING BETWEEN-STUDY HETEROGENEITY AND INCONSISTENCY IN MIXED TREATMENT COMPARISONS Application to stroke prevention treatments for Atrial Fibrillation patients. Nicola Cooper , Alex Sutton, Danielle Morris, Tony Ades, Nicky Welton. MIXED TREATMENT COMPARISON.
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ADDRESSING BETWEEN-STUDY HETEROGENEITY AND INCONSISTENCY IN MIXED TREATMENT COMPARISONS Application to stroke prevention treatments for Atrial Fibrillation patients. Nicola Cooper, Alex Sutton, Danielle Morris, Tony Ades, Nicky Welton
MIXED TREATMENT COMPARISON • MTC - extends meta-analysis methods to enable comparisons between all relevant comparators in the clinical area of interest. Option 1: Two pairwise M-A analyses (A v C, B v C) Option 2: MTC (A v B v C) provides probability each treatment is the ‘best’ of all treatments considered for treating condition x. A B C
HETEROGENIETY & INCONSISTENCY • As with M-A need to explore potential sources of variability: i) Heterogeneity - variation in treatment effects between trials within pairwise contrasts, and ii) Inconsistency - variation in treatment effects between pairwise contrasts • Random effect - allows for heterogeneity but does NOT ensure inconsistency is addressed • Incorporation of study-level covariates can reduce both heterogeneity and inconsistency by allowing systematic variability between trials to be explained
OBJECTIVE • To extend the MTC framework to allow for the incorporation of study-level covariates • 3 models: • Different regression coefficient for each treatment • Exchangeable regression coefficient • Common regression (slope) coefficient
EXAMPLE NETWORK 2 A B Stroke prevention treatments for Atrial Fibrillation patients (18 trials) A = Placebo B = Low dose anti-coagulant C = Standard dose anti-coagulant D = Standard dose aspirin 7 2 4 1 10 C D Covariate = publication date (proxy for factors relating to change in clinical practice over time)
MTC random effects model rjk = observed number of individuals experiencing an event out of njk; pjk = probability of an event; jb= log odds of an event in trial j on ‘baseline’ treatment b; jbk= trial-specific logodds ratio of treatment k relative to treatment b;dbk= pooled log odds ratios; σ2= between study variance
MODEL 1: Different regression coefficient for each treatment NOTE: Relative treatment effects for the active treatment versus placebo are allowed to vary independently with covariate; thus,ranking of effectiveness of treatments allowed to vary for different covariate values
MODEL 3: Common regression (slope) coefficient Note: Relative treatment effects only vary with the covariate when comparing active treatments to placebo.
FULL 17 TRT NETWORK 17 treatments 25 trials 60 data points
FULL 17 TRT NETWORK: ISSUES • Model becomes over-specified as number of parameters to be estimated approaches or exceeds the number of data points available • e.g. Model 1 - requires estimation of 25 baselines, 16 treatment means, 16 regression coefficients, & between-study variance (+ random effects). • May be sensible to consider treatments within classes • e.g. Anti-coagulant, Anti-platelet, Both • Best fitting model “exchangeable treatment x covariate effects by class” • Reference: Cooper NJ, Sutton AJ, Morris D, Ades AE, Welton NJ. Addressing between-study heterogeneity and inconsistency in mixed treatment comparisons: Application to stroke prevention treatments in individuals with non-rheumatic Atrial Fibrillation. Submitted to Statistics in Medicine
DISCUSSION • Number of different candidate models - especially for large treatment networks often with limited data • Need to be aware of limitations posed by available data & importance of ensuring model interpretability and relevance to clinicians • Uncertainty in the regression coefficients and the treatment differences not represented on graphs (which can be considerable) • Results from MTC increasingly used to inform economic decision models. Incorporation of covariates may allow separate decisions to be made for individuals with different characteristics