Li, Bing Gatsonis, Constantine Dahabreh, Issa J Steingrimsson, Jon A
Published in
Biometrics
We propose methods for estimating the area under the receiver operating characteristic (ROC) curve (AUC) of a prediction model in a target population that differs from the source population that provided the data used for original model development. If covariates that are associated with model performance, as measured by the AUC, have a different d...
Webster-Clark, Michael Keil, Alexander P
Published in
American journal of epidemiology
Epidemiologic researchers generalizing or transporting effect estimates from a study to a target population must account for effect-measure modifiers (EMMs) on the scale of interest. However, little attention is paid to how the EMMs required may vary depending on the mathematical nuances of each effect measure. We defined 2 types of EMMs: a margina...
Dahabreh, Issa J Robins, James M Haneuse, Sebastien J-P A Saeed, Iman Robertson, Sarah E Stuart, Elizabeth A Hernán, Miguel A
Published in
Statistics in medicine
Extending (i.e., generalizing or transporting) causal inferences from a randomized trial to a target population requires assumptions that randomized and nonrandomized individuals are exchangeable conditional on baseline covariates. These assumptions are made on the basis of background knowledge, which is often uncertain or controversial, and need t...
Dahabreh, Issa J Robertson, Sarah E Petito, Lucia C Hernán, Miguel A Steingrimsson, Jon A
Published in
Biometrics
We present methods for causally interpretable meta-analyses that combine information from multiple randomized trials to draw causal inferences for a target population of substantive interest. We consider identifiability conditions, derive implications of the conditions for the law of the observed data, and obtain identification results for transpor...
Lee, Dasom Yang, Shu Dong, Lin Wang, Xiaofei Zeng, Donglin Cai, Jianwen
Published in
Biometrics
Complementary features of randomized controlled trials (RCTs) and observational studies (OSs) can be used jointly to estimate the average treatment effect of a target population. We propose a calibration weighting estimator that enforces the covariate balance between the RCT and OS, therefore improving the trial-based estimator's generalizability. ...
Vo, Tat-Thang
Published in
Research synthesis methods
In a recent issue of the Journal; Remiro-Azócar et al. introduce a new method to adjust for population difference between two trials; when the individual patient data (IPD) are only accessible for one study. The proposed method generates the covariate data for the trial without IPD; then using a G-computation approach to transport information about...
Degtiar, Irina Rose, Sherri
Published in
Annual Review of Statistics and its Application
When assessing causal effects, determining the target population to which the results are intended to generalize is a critical decision. Randomized and observational studies each have strengths and limitations for estimating causal effects in a target population. Estimates from randomized data may have internal validity but are often not representa...
Moreno-Betancur, Margarita Lynch, John W Pilkington, Rhiannon M Schuch, Helena S Gialamas, Angela Sawyer, Michael G Chittleborough, Catherine R Schurer, Stefanie Gurrin, Lyle C
Published in
International journal of epidemiology
Populations willing to participate in randomized trials may not correspond well to policy-relevant target populations. Evidence of effectiveness that is complementary to randomized trials may be obtained by combining the 'target trial' causal inference framework with whole-of-population linked administrative data. We demonstrate this approach in an...
Steingrimsson, Jon A Gatsonis, Constantine Li, Bing Dahabreh, Issa J
Published in
American journal of epidemiology
We considered methods for transporting a prediction model for use in a new target population, both when outcome and covariate data for model development are available from a source population that has a different covariate distribution compared with the target population and when covariate data (but not outcome data) are available from the target p...
Colnet, Bénédicte Mayer, Imke Chen, Guanhua Dieng, Awa Li, Ruohong Varoquaux, Gaël Vert, Jean-Philippe Josse, Julie Yang, Shu
With increasing data availability, causal effects can be evaluated across different data sets, both randomized controlled trials (RCTs) and observational studies. RCTs isolate the effect of the treatment from that of unwanted (confounding) co-occurring effects but they may suffer from un- representativeness, and thus lack external validity. On the ...