NATIONAL CHIAO TUNG UNIVERSITY
INSTITUTE OF STATISTICS
STATISTICAL METHODS FOR EPIDEMIOLOGY
SPRING 2005
Instructor: |
Guan-Hua Huang, Ph.D. |
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Office: 423 Assembly Building 1 |
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Phone: 03-513-1334 |
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Email: ghuang@stat.nctu.edu.tw |
Class meetings: |
Thursday 1:30-4:30 pm at 406 Joint Education Hall |
Office hours: |
By appointment |
Class website: |
http://www.stat.nctu.edu.tw/subhtml/source/teachers/ghuang/course/statepi05/ |
Credit: |
Three (3) credits |
This course will cover statistical methods for design, conduct, and analysis of epidemiologic studies such as case-control and cohort studies. Topics include overview of designs for research studies; epidemiologic study design; rates and risk; measures of association; classical contingency table methods; logistic and Poisson regression; and proportional hazard regression. Examples from the literature and data from a number of well-known epidemiologic studies will be used for illustration of the concepts involved.
Handouts corresponding to each lecture will be available on the class website before each class. There is no required textbook for this course. Following books are recommended for further reading:
Nicholas P. Jewell (2003). Statistics for Epidemiology. CRC Press.
Breslow NE, Day NE (1980). Statistical Methods in Cancer Research, Vol. I, The Analysis of Case-Control Studies. International Agency for Research on Cancer, Lyon.
Breslow NE, Day NE (1987). Statistical Methods in Cancer Research, Vol. II, The Design and Analysis of Cohort Studies. International Agency for Research on Cancer, Lyon.
Hosmer DW, Lemeshow S (1989). Applied Logistic Regression, John Wiley & Sons.
Students are expected to be familiar with basic epidemiologic concepts. The prerequisite for this course is “Introduction to Epidemiology”, or equivalent.
The course grade will be based on three homework assignments (30%), one midterm exam (30%), and one final exam (40%).
COURSE OUTLINE
Readings refer to:
Nicholas P. Jewell (2003): Statistics for Epidemiology (Jewell),
Breslow NE, Day NE (1980): Statistical Methods in Cancer Research, Vol. I (Breslow & Day I), Breslow NE, Day NE (1987): Statistical Methods in Cancer Research, Vol. II (Breslow & Day II), Hosmer DW, Lemeshow S (1989): Applied Logistic Regression (Hosmer & Lemeshow).
Module |
Topic |
Reading |
1 |
Introduction and overview of goals of epidemiologic research and epidemiologic study designs |
Jewell Chapter 1, 5 Breslow & Day I Chapter 1 Breslow & Day II Chapter 1 |
2 |
Measures of disease occurrence and association: a. Different rates b. Inferences for rates c. Comparing two rates d. 2×2 table e. c2 test and Fisher’s exact test f. R×C table g. Relative risk and odds ratio h. Inferences for relative risk and odds ratio |
Jewell Chapters 2, 4, 6, 7 Breslow & Day I Chapter 2, 4 |
3 |
Control of extraneous factors: a. Confounding and interaction b. Mantel-Haenszel method c. Analysis of matched data- McNemar’s test d. Measure of agreement- Kappa statistic |
Jewell Chapter 8, 9, 10, 11 |
4 |
Logistic regression: a. Concepts b. Model and assumption c. Interpretation of regression coefficients d. Inferences e. Likelihood ratio test f. Goodness-of-fit test g. Residual plot |
Jewell Chapter 12, 13 Hosmer & Lemeshow Chapter 1, 2 |
5 |
Confounding and interaction in logistic regression: a. Modeling b. Assumption c. Interpretation |
Jewel Chapter 14 |
6 |
Logistic regression for contingency tables: a. Modeling of 2×2 table b. Modeling of 2×2×2 table c. Modeling of K×2 table d. Modeling of M×2×2 table |
No reading |
7 |
Logistic regression for case-control and matched data: a. Risk and odds ratio in case-control studies b. Logistic regression for case-control data c. When there are many strata with few observations in each d. Conditional logistic regression for matched data |
Jewell Chapter 16 Hosmer & Lemeshow Chapter 7 |
8 |
Poisson regression for count data: a. Introduction to generalized linear model b. Poisson regression c. Application to cohort study d. Log linear model for contingency table |
Breslow & Day II Chapter 4 |
9 |
Analysis of survival data: a. Examples of survival data b. Survival, hazard and cumulative hazard functions c. Censoring and truncation d. Kaplan-Meier estimator |
Breslow & Day II Chapter 5 |
10 |
Proportional hazards model: a. Assumption of the model b. Testing and estimation c. Computing programs and interpreting results d. Time dependent covariates |
Breslow & Day II Chapter 5, 6 |