Basic epidemiologic analysis with Stata Biostatistics 212 Lecture 5.

Slides:



Advertisements
Similar presentations
Analytical epidemiology
Advertisements

Dr Eva Batistatou. Outline of this presentation… What is epidemiology? The Fundamentals of Epidemiology course What is biostatistics? The Biostatistics.
Do files, log files, and workflow in Stata Biostatistics 212 Lecture 2.
M2 Medical Epidemiology
Using Excel Biostatistics 212 Lecture 4. Housekeeping Questions about Lab 3? –replace vs. recode Final Project Dataset! –“Housekeeping” commands vs. data.
Using Excel Biostatistics 212 Lecture 4. Housekeeping Finish Lab 2 today and/or start Lab 3 Mac Addendum Copying and pasting from Stata.
Presentation and interpretation of epidemiological data: objectives Raj Bhopal, Bruce and John Usher Professor of Public Health, Public Health Sciences.
Basic epidemiologic analysis with Stata Biostatistics 212 Lecture 5.
Chapter 19 Stratified 2-by-2 Tables
Chance, bias and confounding
12 March 2007 Andy Bogart. 12 March 2007 Andy Bogart A cooperative effort: University of North Dakota National Resource Center on Native American Aging.
Introduction to Statistical Computing in Clinical Research Biostatistics 212 Course director: Mark Pletcher Teaching Assistant: Lee Zane.
Winter Electives Molecular and Genetic Epidemiology
Basic epidemiologic analysis with Stata
1June In Chapter 19: 19.1 Preventing Confounding 19.2 Simpson’s Paradox (Severe Confounding) 19.3 Mantel-Haenszel Methods 19.4 Interaction.
BIOST 536 Lecture 12 1 Lecture 12 – Introduction to Matching.
Reporting Results P9419 Class #6 November 17, 2003.
Epidemiology Kept Simple
Study Design and Measures of Disease Frequency Intermediate Epidemiology.
Applied Epidemiology: Poplhlth 304
Assessing Survival: Cox Proportional Hazards Model Peter T. Donnan Professor of Epidemiology and Biostatistics Statistics for Health Research.
EPIDEMIOLOGY Why is it so damn confusing?. Disease or Outcome Exposure ab cd n.
Analytic Epidemiology
Stratification and Adjustment
INTRODUCTION TO EPIDEMIOLO FOR POME 105. Lesson 3: R H THEKISO:SENIOR PAT TIME LECTURER INE OF PRESENTATION 1.Epidemiologic measures of association 2.Study.
Analysis of Categorical Data
Making a figure, dates, and other advanced topics Biostatistics 212 Lecture 6.
Tim Wiemken PhD MPH CIC Assistant Professor Division of Infectious Diseases University of Louisville, Kentucky Confounding.
Basic epidemiologic analysis with Stata Biostatistics 212 Lecture 5.
Evidence-Based Medicine 3 More Knowledge and Skills for Critical Reading Karen E. Schetzina, MD, MPH.
Making a figure with Stata or Excel Biostatistics 212 Lecture 7.
EPI 811 – Work Group Exercise #2 Team Honey Badgers Alex Montoye Kellie Mayfield Michele Fritz Anton Frattaroli.
 Is there a comparison? ◦ Are the groups really comparable?  Are the differences being reported real? ◦ Are they worth reporting? ◦ How much confidence.
Assessing Survival: Cox Proportional Hazards Model
Making Tables and Figures with Stata Biostatistics 212 Lecture 6.
Organizing a project, making a table Biostatistics 212 Lecture 7.
Organizing a project, making a table Biostatistics 212 Session 5.
Basic epidemiologic analysis with Stata Part II Biostatistics 212 Lecture 6.
Basic epidemiologic analysis with Stata Biostatistics 212 Lecture 5.
October 15. In Chapter 19: 19.1 Preventing Confounding 19.2 Simpson’s Paradox 19.3 Mantel-Haenszel Methods 19.4 Interaction.
Organizing a project, making a table Biostatistics 212 Lecture 7.
April 4 Logistic Regression –Lee Chapter 9 –Cody and Smith 9:F.
Stata 9, Epi tables, Survey, Factor Tables for epidemiologists Survey commands Factor analysis H.S.1.
Introduction to Statistical Computing in Clinical Research Biostatistics 212.
Analytical epidemiology Disease frequency Study design: cohorts & case control Choice of a reference group Biases Alain Moren, 2006 Impact Causality Effect.
Making Tables and Figures with Stata Biostatistics 212 Lecture 6.
Research Techniques Made Simple: Multivariable Analysis Marlies Wakkee Loes Hollestein Tamar Nijsten Department of Dermatology, Erasmus University Medical.
Tim Wiemken PhD MPH CIC Assistant Professor Division of Infectious Diseases University of Louisville, Kentucky Confounding.
11/20091 EPI 5240: Introduction to Epidemiology Confounding: concepts and general approaches November 9, 2009 Dr. N. Birkett, Department of Epidemiology.
Basics of Biostatistics for Health Research Session 3 – February 21, 2013 Dr. Scott Patten, Professor of Epidemiology Department of Community Health Sciences.
Basics of Biostatistics for Health Research Session 1 – February 7 th, 2013 Dr. Scott Patten, Professor of Epidemiology Department of Community Health.
01/20151 EPI 5344: Survival Analysis in Epidemiology Confounding and Effect Modification March 24, 2015 Dr. N. Birkett, School of Epidemiology, Public.
Handout Eight: Two-Way Between- Subjects Design with Interaction- Assumptions, & Analyses EPSE 592 Experimental Designs and Analysis in Educational Research.
1 Week 3 Association and correlation handout & additional course notes available at Trevor Thompson.
Basics of Biostatistics for Health Research Session 4 – February 28, 2013 Dr. Scott Patten, Professor of Epidemiology Department of Community Health Sciences.
Matched Case-Control Study Duanping Liao, MD, Ph.D Phone:
Confounding Biost/Stat 579 David Yanez Department of Biostatistics University of Washington July 7, 2005.
EPI 811 WORK GROUP EXERCISE #1 Team Honey Badgers Alex Montoye Kellie Mayfield Michele Fritz Anton Frattaroli.
Introduction to Biostatistics, Harvard Extension School, Fall, 2005 © Scott Evans, Ph.D.1 Contingency Tables.
Measures of disease frequency Simon Thornley. Measures of Effect and Disease Frequency Aims – To define and describe the uses of common epidemiological.
Matched Case-Control Study
Epidemiology 503 Confounding.
BMTRY 747: Introduction Jeffrey E. Korte, PhD
Statistical models for categorical responses
Jeffrey E. Korte, PhD BMTRY 747: Foundations of Epidemiology II
Evaluating Effect Measure Modification
Presentation and interpretation of epidemiological data: objectives Raj Bhopal, Bruce and John Usher Professor of Public Health, Public Health Sciences.
Discussion Week 1 (4/1/13 – 4/5/13)
Presentation transcript:

Basic epidemiologic analysis with Stata Biostatistics 212 Lecture 5

Housekeeping Turning in Lab assignments: –“ PletcherMark_Lab2.do” “Window management” in Stata 9 Questions about Lab 2? Lab 3: do today, due 10/25/05 Lab 4 now available

Housekeeping Time to start thinking about Final Projects! –What data will you use? –Start cleaning, exploring, planning tables and figures

Today... What’s the difference between epidemiologic and statistical analysis? Interaction and confounding with 2 x 2’s Stata’s “Epitab” commands

Epi vs. Biostats Epidemiologic analysis – Interpreting clinical research data in the context of scientific knowledge Biostatistical analysis – Evaluating the role of chance

Epi vs. Biostats Epi –Confounding, interaction, and causal diagrams. –What to adjust for? –What do the adjusted estimates mean? A B C ABC

2 x 2 Tables “Contingency tables” are the traditional analytic tool of the epidemiologist Outcome Exposure ab cd OR = (a/b) /(c/d) = ad/bc RR = a/(a+b) / c/(c+d)

2 x 2 Tables Example Coronary calcium Binge drinking OR = 2.1 (1.6 – 2.7) RR = 1.9 (1.6 – 2.4)

2 x 2 Tables There is a statistically significant association, but is it causal? Does male gender confound the association? Binge drinking Coronary calcium Male

2 x 2 Tables First, stratify… CAC Binge CAC Binge CAC Binge In menIn women RR = 1.94 ( ) (34%)(14%) (15%)(7%) RR = 1.57 ( )RR = 1.50 ( )

2 x 2 Tables …compare strata-specific estimates… (they’re about the same) CAC Binge CAC Binge In menIn women (34%)(14%) (15%)(7%) RR = 1.57 ( )RR = 1.50 ( )

2 x 2 Tables …compare to the crude estimate CAC Binge CAC Binge CAC Binge In menIn women RR = 1.94 ( ) (34%)(14%) (15%)(7%) RR = 1.57 ( )RR = 1.50 ( )

2 x 2 Tables …and then adjust the summary estimate CAC Binge CAC Binge In menIn women RR = 1.50 ( )RR = 1.57 ( ) RRadj = 1.51 ( )

Binge CAC Binge CAC Binge In menIn women (34%)(14%) (15%)(7%) RR = 1.57 ( )RR = 1.50 ( ) RR = 1.94 ( ) RRadj = 1.51 ( )

2 x 2 Tables Tabulate – output not exactly what we want. The “epitab” commands –Stata’s answer to stratified analyses cs, cc, ir csi, cci, iri tabodds, mhodds

2 x 2 Tables Example – demo using Stata cs cac binge cs cac binge, by(male) cs cac modalc cs cac modalc, by(racegender)

2 x 2 Tables Example – demo using Stata cc cac binge

2 x 2 Tables Epitab subtleties –ir command Rate ratios, adjusted etc Related to poisson regression –Intermediate commands – csi, cci, iri No dataset required – just 2x2 cell frequencies csi a b c d csi (for cac binge)

Summary Stare at stratified 2x2 analyses until you get it! Epitab commands are a great way to explore your data –Emphasis on interaction Immediate commands (e.g. csi ) are very useful – just watch out for the b  c switch!

Next week Testing for trend Adjusting for many things at once Logistic regression Lab 4 –Epi analysis of coronary calcium dataset –More practice with Do files –Moderately long