TY - JOUR
T1 - Mediation analysis with intermediate confounding
T2 - Structural equation modeling viewed through the causal inference lens
AU - De Stavola, Bianca L.
AU - Daniel, Rhian M.
AU - Ploubidis, George B.
AU - Micali, Nadia
N1 - Publisher Copyright:
© 2014 The Author.
PY - 2015/1/1
Y1 - 2015/1/1
N2 - The study of mediation has a long tradition in the social sciences and a relatively more recent one in epidemiology. The first school is linked to path analysis and structural equation models (SEMs), while the second is related mostly to methods developed within the potential outcomes approach to causal inference. By giving model-free definitions of direct and indirect effects and clear assumptions for their identification, the latter school has formalized notions intuitively developed in the former and has greatly increased the flexibility of the models involved. However, through its predominant focus on nonparametric identification, the causal inference approach to effect decomposition via natural effects is limited to settings that exclude intermediate confounders. Such confounders are naturally dealt with (albeit with the caveats of informality and modeling inflexibility) in the SEM framework. Therefore, it seems pertinent to revisit SEMs with intermediate confounders, armed with the formal definitions and (parametric) identification assumptions from causal inference. Here we investigate: 1) how identification assumptions affect the specification of SEMs, 2) whether the more restrictive SEM assumptions can be relaxed, and 3) whether existing sensitivity analyses can be extended to this setting. Data from the Avon Longitudinal Study of Parents and Children (1990-2005) are used for illustration.
AB - The study of mediation has a long tradition in the social sciences and a relatively more recent one in epidemiology. The first school is linked to path analysis and structural equation models (SEMs), while the second is related mostly to methods developed within the potential outcomes approach to causal inference. By giving model-free definitions of direct and indirect effects and clear assumptions for their identification, the latter school has formalized notions intuitively developed in the former and has greatly increased the flexibility of the models involved. However, through its predominant focus on nonparametric identification, the causal inference approach to effect decomposition via natural effects is limited to settings that exclude intermediate confounders. Such confounders are naturally dealt with (albeit with the caveats of informality and modeling inflexibility) in the SEM framework. Therefore, it seems pertinent to revisit SEMs with intermediate confounders, armed with the formal definitions and (parametric) identification assumptions from causal inference. Here we investigate: 1) how identification assumptions affect the specification of SEMs, 2) whether the more restrictive SEM assumptions can be relaxed, and 3) whether existing sensitivity analyses can be extended to this setting. Data from the Avon Longitudinal Study of Parents and Children (1990-2005) are used for illustration.
KW - Eating disorders
KW - Estimation by combination
KW - G-computation
KW - Parametric identification
KW - Path analysis
KW - Sensitivity analysis
UR - http://www.scopus.com/inward/record.url?scp=84922457780&partnerID=8YFLogxK
U2 - 10.1093/aje/kwu239
DO - 10.1093/aje/kwu239
M3 - Article
C2 - 25504026
AN - SCOPUS:84922457780
SN - 0002-9262
VL - 181
SP - 64
EP - 80
JO - American Journal of Epidemiology
JF - American Journal of Epidemiology
IS - 1
ER -