Langkau ke kandunganScholarGate
PerpustakaanPerpustakaan sayaMejaReview StudioPembantu
Log masuk
Parametric g-Formula/Bukti
Rekod bukti kaedah

Parametric g-Formula

The parametric g-formula is the estimator James Robins introduced in 1986 to recover the causal effect of a time-varying exposure when time-varying confounders are themselves affected by past exposure — a setting where standard regression adjustment is guaranteed to give the wrong answer. Rather than conditioning on the troublesome confounders directly, the g-formula reconstructs the entire counterfactual world: it parametrically estimates how confounders and the outcome evolve over time, then Monte-Carlo simulates what would have happened to the population under a hypothetical exposure regime such as 'always exposed' versus 'never exposed.' Keil and colleagues' 2014 worked tutorial for time-to-event data made the algorithm concrete for epidemiologists. In social epidemiology it is the workhorse for questions like the cumulative effect of sustained neighborhood deprivation, employment, or income trajectories on health, where mediators and confounders are tangled across time.

Sources recorded, not reviewed

Rekod sumber

Petikan disalin secara verbatim daripada rekod sumber kaedah. Tiada pengesahan peringkat tuntutan disimpulkan daripadanya.

Parametric g-Formula (g-Computation for Time-Varying Exposures and Confounders)
Rekod kaedah taksonomik · process-pipeline / social-epidemiology
  • Robins, J. M. (1986). A new approach to causal inference in mortality studies with a sustained exposure period—application to control of the healthy worker survivor effect. Mathematical Modelling, 7(9-12), 1393-1512. · DOI 10.1016/0270-0255(86)90088-6
  • Keil, A. P., Edwards, J. K., Richardson, D. B., Naimi, A. I., & Cole, S. R. (2014). The parametric g-formula for time-to-event data: intuition and a worked example. Epidemiology, 25(6), 889-897. · DOI 10.1097/EDE.0000000000000160
Buka kaedah penuh

Tuntutan yang dikurasi

Tuntutan disimpan dalam lejar bukti, setiap satu dengan penilaiannya sendiri.

Tiada tuntutan terkurasi lagi

Pandangan ini tidak mencipta penilaian tuntutan apabila lejar tiada.

Kaedah berkaitan

Dijana daripada graf kaedah dan ditunjukkan sebagai perhubungan yang dicadangkan mesin — tiada tuntutan bukti disimpulkan.

Same method familyE-Value Sensitivity Analysismachine-suggested · Relational suggestion, not evidence.Taxonomic bucketMarginal Structural Model (IPTW)machine-suggested · Relational suggestion, not evidence.Often confused withTargeted Maximum Likelihood Estimation (Epidemiology)machine-suggested · Relational suggestion, not evidence.

Status bukti

Sources recorded, not reviewed

Bibliographic sources are present. Claim-level evidence review has not been performed.

Sumber

2 petikan direkodkan, disalin daripada rekod sumber kaedah.

Tindakan

Buka halaman kaedah
ScholarGate

Perpustakaan rujukan berteraskan kandungan untuk kaedah penyelidikan — apakah setiap kaedah, bagaimana ia berfungsi, dan dari mana asalnya.

Data terbuka (CC-BY)

Terokai

  • Perpustakaan
  • Cari kaedah…
  • Layari mengikut bidang
  • Bidang
  • Perjalanan
  • Bandingkan
  • Kaedah yang mana?

Rujukan

  • Bidang
  • Atlas
  • Glosari
  • Metodologi
  • Falsafah

Ruang kerja

  • Perpustakaan saya
  • Meja
  • Sembang

Syarikat

  • Perihal
  • Harga
  • Hubungi
  • Cadangkan kaedah

Entri disusun daripada sumber yang diterbitkan untuk rujukan. Pengesahan ketepatan dan kesesuaian sebarang maklumat untuk kegunaan anda sendiri kekal menjadi tanggungjawab anda.

© 2026 ScholarGate · Perpustakaan rujukan kaedah penyelidikan
  • Privasi
  • Kuki
Terma
  • Padam akaun