Authors
Zhengxian Fan, Qianqian Yang, Yifan Hu, Goodarz Danaei, George Davey Smith, Shishir Rao, Kazem Rahimi
Published in
Nature communications. Jul 13, 2026. Epub Jul 13, 2026.
Abstract
Target trial emulation (TTE) is increasingly used for causal inference from observational data, but remains vulnerable to confounding by indication, and whether advanced adjustment methods mitigate this bias is unclear. Using Clinical Practice Research Datalink Aurum, we emulate target trials of beta-blockers (positive control) and digoxin (negative control) versus usual care on two-year all-cause mortality in patients with heart failure with reduced ejection fraction. We apply four adjustment strategies: propensity score matching, inverse probability of treatment weighting, targeted maximum likelihood estimation, and a Transformer-based deep learning approach. No method reproduces the randomised controlled trial (RCT) benchmarks: all suggest neutral or harmful effects for beta-blockers and elevated mortality for digoxin. In semi-synthetic simulation, all methods recover the true effects when confounders are observed, yet fail in real-world data. TTE, even with advanced adjustment, may not yield trial-equivalent estimates when confounding is strong; randomised evidence remains essential for clinical and policy decisions.
PMID:
42443168
Bibliographic data and abstract were imported from PubMed on 14 Jul 2026.
Read full publication at:
Please sign in
to see all details.
Advertisement
Stats
- Recommendations n/a n/a positive of 0 vote(s)
- Views 5
- Comments 0