Introduction to Medical Statistics
Keywords
Medical Statistics, OUCRU, Biostatistics, R Programming, Clinical Research
Welcome!
Course Objectives
- Concepts: Hypothesis tests, p-values, & confidence intervals.
- Methods: t-tests, chi-square, linear & logistic regression.
- Skills: Perform and interpret basic statistical analyses.
Welcome to the OUCRU Introduction to Medical Statistics 2026. This course is designed to provide clinicians and researchers with the fundamental statistical tools required for medical research.
Note📅 Logistics & Schedule
- Time: 09:15 – 16:45 (UTC +7) daily
- Lunch Break: 12:30 – 13:30 (UTC +7)
- Full Schedule: Timetable
- Note: Lunch is provided for in-person attendees.
Contributors
- Prof. Ronald Geskus
- Dr. Duc Du Hong
- Dr. Hoang Van Thuan
- Dr. Nguyen Lam Vuong
- Dr. Tran Thai Hung
1 Pre-course Setup
Tip🛠️ Choose Your Environment
You have two ways to follow the course exercises:
- Zero Setup: Use the Web-R versions directly in your browser.
- Local Setup: If you prefer using RStudio, please complete the Pre-course Setup Handout before joining.
2 Course Topics
Course handout: Course handout; Dictionary
Day 1: Descriptive and Exploratory Data Analysis
Click to view the materials
Contents
- Data characteristics & Variable types
- Numerical & Graphical summaries
- Intro to R and RStudio
Materials
- Lecture: Slides
- Exercises:
- Answers:
Contents
- Baseline tables
- Graphs for categorical variables
- Numeric variables by group
- 2-variable numeric plots
Materials
- Lecture: Slides
- Exercises:
- Answers:
Day 2: Statistical analysis principles, Distributions, Confidence Intervals
Day 3: Comparing continuous variables and Simple linear regression
Click to view the materials
Day 4: Multivariable linear and logistic regression
Click to view the materials
Contents
- Model formulation
- Estimation
- Testing
Materials
- Lecture: Slides
- Exercises:
- Answers:
Contents
- Risk/odds, risk ratio (RR)/odds ratio (OR)
- Logistic regression model
- Interpreting Univariable Logistic Regression
- Interpreting Multivariable Logistic Regression
Materials
- Lecture: Slides
- Exercises:
- Answers: