Structural Equation Models

What is SEM

Structural equation modeling (SEM) = a framework for modeling relationships among observed and latent variables.

Key Components

Observed Variables

= variables measured directly, e.g. blood pressure, biomarker levels, questionnaire items

Latent Variables

= unobserved constructs inferred from multiple indicators, e.g. frailty, depression, socioeconomic status

Measurement Model

= defines how observed indicators measure latent variables

Structural Model

= defines relationships among observed or latent variables

Important

SEM arrows encode specified directional relationships, but they do not establish causality without appropriate study design and assumptions. See Causal inference and Probabilistic Graphical Models.

When to Use SEM

Latent Growth Curve Models

= longitudinal SEMs that represent change over time using latent growth factors

Health example:

Model baseline cognition and rate of cognitive decline from repeated cognitive-test scores, then test whether APOE-e4 predicts faster decline.

Advantages

Limitations

Model Fit

Common fit measures:

Tip

Do not select a model from one cutoff alone. Consider theory, parameter estimates, residuals, and several fit indices together.

Practical Workflow

  1. Define the theoretical model.
  2. Identify observed and latent variables.
  3. Specify the measurement and structural models.
  4. Check identification and sample size.
  5. Fit the model.
  6. Review fit indices, residuals, and parameter estimates.
  7. Modify only when theoretically justified.
  8. Validate the model in new data when possible.