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Continuous NHANES Web Tutorial

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Logistic Regression

Purpose

Logistic Regression is a statistical method used to assess the likelihood of a disease or health condition as a function of a risk factor (and covariates).   There are two kinds of logistic regression, simple and multiple.   Both simple and multiple logistic regression, assess the association between independent variable(s) (Xi) — sometimes called exposure or predictor variables — and a dichotomous dependent variable (Y)  — sometimes called the outcome or response variable.

 

Task 1: Describe Logistic Regression

Before setting up a logistic regression, you should understand the basic concepts and formulas used in Logistic Regression.

 

Task 2: Setting Up Logistic Regression of NHANES Data

SUDAAN, SAS Survey and Stata are statistical software packages that can be used to analyze complex survey data such as NHANES.

 

Task 3: Explain Differences Between SUDAAN and SAS Survey Procedures Logistic Regression Output

Reviewing the output from the SAS Survey Procedures and SUDAAN programs, you may have noticed slight differences caused by missing data in paired PSUs or how the programs handle degrees of freedom.

 

 

 

Page Last Modified: August 05, 2008

Additional Resources

National Center for Health Statistics
3311 Toledo Road
Hyattsville, MD 20782
Phone: 1-866-441-NCHS (6247)
For data inquiries, use
nchsquery@cdc.gov

 

Problems or comments about the Tutorial?
Email the Tutorial Team: NHANESWebTutorial@cdc.gov

Safer Healthier People

Centers for Disease Control and Prevention, 1600 Clifton Rd, Atlanta, GA 30333, U.S.A
Tel: (404) 639-3311 / Public Inquiries: (404) 639-3534 / (800) 311-3435