Logistic Regression Basics
Interaction
Modeling Strategy
Polytomous and Ordinal Logistic Regression
Study Design Specifics
100

A system for naming and organizing independent variables and their coefficients in a regression model

EVW Model

100

A useful way to see if the relationship between your exposure and outcome differs within strata of another variable

Interaction assessment

100

A way to describe a model where all lower order components of the variable must be included in the initial model

Hierarchically Well-Formulated (HWF)

100

Type of logistic regression that is appropriate when the outcome has >2 levels and the levels have an inherent order, and when requisite assumptions are met

Ordinal logistic regression

100

This type of regression is appropriate when the outcome is dichotomous, not rare, and when the study design is cross-sectional or a cohort study

Log binomial regression

200

Model to find a valid estimate between an exposure and a dichotomous health outcome

Logistic regression

200

When using regression, this is included in a model to assess interaction

Product term

200

If you were to follow the recommended strategy, this is the step you would perform after variable specification and collinearity assessment

Interaction assessment

200

This statistical test is used to evaluate whether the proportional odds assumption is met, and whether ordinal logistic regression can be performed

Score test

200

A method of confounding control whereby comparison group members are intentionally selected so that they are similar to the index group with respect to the confounder

Matching

300

Calculation to transform modeling probabilities to odds ratios

ln(odds) or ln(p/1-p)

300

Variables which represent nominal independent variables and cannot be separated in a model

Indicator (dummy) variables

300

During the confounding assessment, this is what you would conclude if the OR produced when dropping a potential confounder is within 10% of the OR produced from the gold standard model

No evidence of confounding

300

For this type of logistic regression, the analyst does not have to choose the reference category for the outcome

Ordinal logistic regression

300

These are the two measures of association that are produced when performing logistic regression for a risk-type cohort study and a cross-sectional study

ROR and POR

400

The effect of a one unit increase in the exposure variable on the outcome, controlling for confounders

e^(B1)

400

Used in a contrast statement to measure interaction with a nominal variable

Chunk test

400

Your exposure is a 4-level nominal variable. You decide to create 4 dummy variables and include them all in your model. This is the reason why your model does not run

Collinearity

400

You have a single, dichotomous exposure. Your outcome is nominal and has 3 levels. You also have an effect modifier with 4 levels. This is the number of ORs that can be estimated from polytomous logistic regression

(G-1)*(levels of EM) = (3-1)*(4) = 8

400

This is the primary advantage of mathematical modeling as opposed to Mantel Haenszel methods in the analysis of matched data

Can control of matched and unmatched factors

500

(1) Number of models required to conduct and (2) number of parameters that can be tested by the likelihood ratio test (LRT) and Wald test.

(1) LRT: 2; Wald: 1

(2) LRT: no limit; Wald: 1

500

The test statistic given when using a contrast statement in proc logistic

Wald chi-square

500

The process of backwards elimination

Evaluate the product terms in the model by running the model and assessing if any product terms have p > alpha. If so, remove the least significant term and run the model again. Repeat this process until all parameter terms are either significant or have been dropped from the model.

500

The degrees of freedom for the likelihood ratio test to determine the significance of a single exposure in polytomous logistic regression

1 less than the levels of the outcome (G-1)

500

The EOR estimated from a case-control study equals the ROR estimated from a cohort study when controls are sampled in this particular way

"Row 2 sampling" (truly free of disease)