| Literature DB >> 32381030 |
James A Watson1,2, Chris C Holmes3,4.
Abstract
BACKGROUND: Exploration and modelling of heterogeneous treatment effects as a function of baseline covariates is an important aspect of precision medicine in randomised controlled trials (RCTs). Randomisation generally guarantees the internal validity of an RCT, but heterogeneity in treatment effect can reduce external validity. Estimation of heterogeneous treatment effects is usually done via a predictive model for individual outcomes, where one searches for interactions between treatment allocation and important patient baseline covariates. However, such models are prone to overfitting and multiple testing and typically demand a transformation of the outcome measurement, for example, from the absolute risk in the original RCT to log-odds of risk in the predictive model.Entities:
Keywords: Heterogeneous treatment effects; Prognostic risk score; Randomised controlled trials; Reference class forecasting
Mesh:
Substances:
Year: 2020 PMID: 32381030 PMCID: PMC7204233 DOI: 10.1186/s13063-020-04306-1
Source DB: PubMed Journal: Trials ISSN: 1745-6215 Impact factor: 2.279
Fig. 1Two local kernel weighting schemes for ITE estimation and one global reweighting scheme for CATE estimation, as compared to ATE estimation. The ITE and CATE reweighting schemes represented all reduce the effective sample size of the original data and target an average risk corresponding to the 25th risk quantile. The scale of the y-axis is chosen so that the sum of the weights is equal to the effective sample size, or equivalently that the effective sample size is equal to the area under the curve. The effective sample sizes as a percentage of the original data are shown in the legend
Fig. 2A graphical comparison of four approaches to reference class forecasting of ITEs (thick blue lines with the pointwise 95% confidence intervals [CIs] shown as shaded blue areas) for patients enrolled in the AQUAMAT study [18]. In each panel the ATE (95% CI) from the original trial (n=5483) is shown by the dashed red line (red shaded area). The left column shows fixed bandwidth predictors (fixed effective sample sizes approximately equal to one fifth of the original sample size), and the right column shows varying bandwidth predictors (varying effective sample sizes). a Risk-based quintile partitioning. This does not interpolate between average risks in each subgroup. There is some minor variation in effective sample size due to ties in the multivariable risk scores. b Exponential tilting with free parameter λ as a global reweighting scheme with varying effective sample size (top x-axis). This is centred around the overall treatment effect corresponding to the value λ=0. c1 Epanechnikov kernel with fixed bandwidth chosen for an effective sample size of n=1097 (20% of the original sample size). c2 Epanechnikov kernel with maximal bandwidth reference class. Note that the 50% risk quantile has an effective sample size reduction of 17% with respect to the original trial sample size due to the decay in weights. This contrasts with panel b, where the ITE prediction at the 50% empirical risk quantile equals that of the ATE