Negative Control Outcome Design
The negative control design uses a deliberately chosen outcome (or exposure) that cannot plausibly be caused by the exposure under study, yet is subject to the same unmeasured confounding, selection, or measurement processes as the real research question. If the exposure appears to 'affect' something it cannot possibly affect, that spurious association is a signature of residual bias. Lipsitch, Tchetgen Tchetgen, and Cohen formalized this falsification logic for epidemiology in 2010, specifying the conditions a valid negative control must satisfy. Shi, Miao, and Tchetgen Tchetgen's 2020 review extended the idea from detection toward correction, showing how pairs of negative control variables underpin proximal causal inference, which can recover an unbiased effect estimate even when the confounder is never measured.
방법 전문 읽기
무료 계정으로 로그인하면 이 섹션을 읽을 수 있습니다.
방법 지도
관련 방법들로 이루어진 인접 영역 — 노드를 선택해 살펴보세요.
출처
- Lipsitch, M., Tchetgen Tchetgen, E., & Cohen, T. (2010). Negative Controls: A Tool for Detecting Confounding and Bias in Observational Studies. Epidemiology, 21(3), 383-388. DOI: 10.1097/EDE.0b013e3181d61eeb ↗
- Shi, X., Miao, W., & Tchetgen Tchetgen, E. J. (2020). A Selective Review of Negative Control Methods in Epidemiology. Current Epidemiology Reports, 7(4), 190-202. DOI: 10.1007/s40471-020-00243-4 ↗
이 페이지 인용 방법
ScholarGate. (2026, June 23). Negative Control Outcomes and Exposures for Detecting and Correcting Unmeasured Confounding. ScholarGate. https://scholargate.app/ko/social-epidemiology/negative-control-outcome-design
어떤 방법일까요?
이 방법을 가장 가까운 동류의 방법들과 나란히 놓고 비교해 보세요 — 라이브러리는 책을 펼쳐 놓을 뿐, 선택은 여러분의 몫입니다.
- E-Value Sensitivity AnalysisSocial Epidemiology↔ 비교
- Four-Way DecompositionSocial Epidemiology↔ 비교
- Marginal Structural Model (IPTW)Social Epidemiology↔ 비교
- Self-Controlled Case SeriesSocial Epidemiology↔ 비교