YoVDO

SAS Essential Training: 2 Regression Analysis for Healthcare Research

Offered By: LinkedIn Learning

Tags

SAS Courses Data Analysis Courses Sass Courses Linear Regression Courses Regression Analysis Courses Logistic Regression Courses

Course Description

Overview

Deepen your SAS knowledge by learning how to conduct a regression analysis of a health survey data center using this popular data analytics platform.

Syllabus

Introduction
  • Introduction to the course
  • What you should know
1. Preparing for Linear Regression
  • Linear regression and hypothesis review
  • Plots for testing assumptions
  • Stepwise linear regression modeling
  • Basic PROC GLM code
  • Reading PROC GLM output
2. Linear Regression Modeling
  • Linear regression model presentation
  • Linear regression: Early models
  • Linear regression: Round 1
  • Linear regression: The final model
  • Linear regression model metadata
  • Linear regression model fit
  • Interpreting linear regression model
3. Preparing for Logistic Regression
  • Hypothesis and odds ratio review
  • Outcome distribution
  • Basic PROC LOGISTIC code
  • Basic PROC LOGISTIC output
  • Stepwise logistic regression modeling
4. Logistic Regression Modeling
  • Logistic regression: Early models
  • Logistic regression: Round 1
  • Logistic regression: The final model
  • Logistic regression model metadata
  • AIC and AUC for model fit
  • Interpreting the logistic regression model
5. Model Presentation
  • Presenting linear regression models
  • Excel for linear regression models
  • Presenting logistic regression models
  • Excel for logistic regression models
6. Issues in Regression
  • Collinearity in stepwise regression
  • Interaction review
  • Interactions in linear regression
  • Interactions in logistic regression
  • Interactions: Stratum-specific estimates
  • -2 log likelihood for model fit
7. Regression Tips
  • Categorizing continuous outcomes
  • Categorizing continuous covariates
  • Flags for ordinal value levels
  • Strategically collapsing categories
  • Choosing reference groups
  • Describe your regression analysis
Conclusion
  • Review of the process
  • Next steps

Taught by

Monika Wahi

Related Courses

Advanced Statistics for Data Science
Johns Hopkins University via Coursera
Analizar e incrementar - Parte 1
Tecnológico de Monterrey via Coursera
The Analytics Edge
Massachusetts Institute of Technology via edX
Aprendizaje de máquinas
Universidad Nacional Autónoma de México via Coursera
Big Data Analytics
University of Adelaide via edX