Wenda Tu’s scientific contributions

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Publications (2)


FIGURE 6 | Forest plot of sample and shrinkage estimates of RR for each subgroup separately-Case study 4.
Rate of exacerbations/year for overall population and subgroups-Case study 4.
Hazard ratio for overall population and subgroups-Case study 1.
Bayesian Hierarchical Models for Subgroup Analysis
  • Article
  • Full-text available

July 2024

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114 Reads

Pharmaceutical Statistics

Yun Wang

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Wenda Tu

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William Koh

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[...]

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In conventional subgroup analyses, subgroup treatment effects are estimated using data from each subgroup separately without considering data from other subgroups in the same study. The subgroup treatment effects estimated this way may be heterogenous with high variability due to small sample sizes in some subgroups and much different from the treatment effect in the overall population. A Bayesian hierarchical model (BHM) can be used to derive more precise, and less heterogenous estimates of subgroup treatment effects that are closer to the treatment effect in the overall population. BHM assumes exchangeability in treatment effect across subgroups after adjusting for effect modifiers and other relevant covariates. In this article, we will discuss the technical details for applying one-way and multi-way BHM using summary-level statistics, and patient-level data for subgroup analysis. Four case studies based on four new drug applications are used to illustrate the application of these models in subgroup analyses for continuous, dichotomous, time-to- event, and count endpoints.

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Statistical methods for handling missing data to align with treatment policy strategy

March 2023

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74 Reads

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10 Citations

Pharmaceutical Statistics

The International Council for Harmonization (ICH) E9(R1) addendum recommends choosing an appropriate estimand based on the study objectives in advance of trial design. One defining attribute of an estimand is the intercurrent event, specifically what is considered an intercurrent event and how it should be handled. The primary objective of a clinical study is usually to assess a product's effectiveness and safety based on the planned treatment regimen instead of the actual treatment received. The estimand using the treatment policy strategy, which collects and analyzes data regardless of the occurrence of intercurrent events, is usually utilized. In this article, we explain how missing data can be handled using the treatment policy strategy from the authors' viewpoint in connection with antihyperglycemic product development programs. The article discusses five statistical methods to impute missing data occurring after intercurrent events. All five methods are applied within the framework of the treatment policy strategy. The article compares the five methods via Markov Chain Monte Carlo simulations and showcases how three of these five methods have been applied to estimate the treatment effects published in the labels for three antihyperglycemic agents currently on the market.

Citations (1)


... In cases where missing data still arise despite these precautions, the imputation of missing values will be conducted in a manner that reflects the likely real-world values that would have been observed had the data been collected. Methods to impute missing values under the treatment policy strategy have been discussed recently (Wang et al., 2023;He et al., 2023). These methods impute all missing values in a clinical study uniformly using one single approach, in a fashion consistent with what the values would have been had they been collected while off treatment. ...

Reference:

Retrieved dropout imputation considering administrative study withdrawal
Statistical methods for handling missing data to align with treatment policy strategy
  • Citing Article
  • March 2023

Pharmaceutical Statistics