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Biostatistics in Public Health Using STATA


Product Description
Product Details

Table of Contents

Basic Commands
Entering STATA
STATA Working Directories
Reading a Data File
insheet Procedure
Types of Files
Data Editor

Data Description
Most Useful Commands
list Command
Mathematical and Logical Operators
generate Command
recode Command
drop Command
replace Command
label Command
summarize Command
do-file Editor
Descriptive Statistics and Graphs
tabulate Command

Graph Construction
Box Plot
Bar Chart

Significance Tests
Normality Test
Variance Homogeneity
Student's t-Test for Independent Samples
Confidence Intervals for Testing the Null Hypothesis
Nonparametric Tests for Unpaired Groups
Sample Size and Statistical Power

Linear Regression Models
Model Assumptions
Parameter Estimation
Hypothesis Testing
Coefficient of Determination
Pearson Correlation Coefficient
Scatter Plot
Running the Model
Multiple Linear Regression Model
Partial Hypothesis
Polynomial Linear Regression Model
Sample Size and Statistical Power
Considerations for the Assumptions of the Linear Regression Model

Analysis of Variance
Data Structure
Example for Fixed Effects
Linear Model with Fixed Effects
Analysis of Variance with Fixed Effects
Programming for ANOVA
Planned Comparisons (before Observing the Data)
Multiple Comparisons: Unplanned Comparisons
Random Effects
Other Measures Related to the Random Effects Model
Example of a Random Effects Model
Sample Size and Statistical Power

Categorical Data Analysis
Cohort Study
Case-Control Study
Sample Size and Statistical Power

Logistic Regression Model
Model Definition
Parameter Estimation
Programming the Logistic Regression Model
Alternative Database
Estimating the Odds Ratio
Significance Tests
Extension of the Logistic Regression Model
Adjusted OR and the Confounding Effect
Effect Modification
Prevalence Ratio
Nominal and Ordinal Outcomes
Sample Size and Statistical Power

Poisson Regression Model
Model Definition
Relative Risk
Parameter Estimation
Programming the Poisson Regression Model
Assessing Interaction Terms

Survival Analysis
Probability of Survival
Components of the Study Design
Kaplan-Meier Method
Programming of S(t)
Hazard Function
Relationship between S(t) and h(t)
Cumulative Hazard Function
Median Survival Time and Percentiles
Comparison of Survival Curves
Proportional Hazards Assumption
Significance Assessment
Cox Proportional Hazards Model
Assessment of the Proportional Hazards Assumption
Survival Function Estimation Using the Cox Proportional Hazards Model
Stratified Cox Proportional Hazards Model

Analysis of Correlated Data
Regression Models with Correlated Data
Mixed Models
Random Intercept
Using the mixed and gllamm Commands with a Random Intercept
Using the mixed Command with Random Intercept and Slope
Mixed Models in a Sampling Design

Introduction to Advanced Programming in STATA
program Command
Log Files
trace Command
Local Macros
Loops (foreach and forvalues)
Application of matrix and local Commands for Prevalence



About the Author

Erick L. Suarez is a professor of biostatistics in the Department of Biostatistics and Epidemiology at the University of Puerto Rico Graduate School of Public Health. He has more than 25 years of experience teaching biostatistics at the graduate level and has co-authored more than 75 peer-reviewed publications in chronic and infectious diseases. Dr. Suarez has been a co-investigator of several NIH-funded grants related to cancer, HPV, HCV, and diabetes. He has extensive experience in statistical consulting with biomedical researchers, particularly in the analysis of microarrays data in breast cancer. Cynthia M. Perez is a professor of epidemiology in the Department of Biostatistics and Epidemiology at the University of Puerto Rico Graduate School of Public Health. She has taught epidemiology and biostatistics for over 20 years. She has also directed efforts in mentoring and training to public health and medical students at the University of Puerto Rico. She has been the principal investigator or co-investigator of research grants in diverse areas of public health including diabetes, metabolic syndrome, periodontal disease, viral hepatitis, and HPV infection. She is the author or co-author of more than 75 peer-reviewed publications. Graciela M. Nogueras is a statistical analyst at the University of Texas MD Anderson Cancer Center in Houston, Texas. She is currently enrolled in the PhD program in biostatistics at the University of Texas-Graduate School of Public Health. She has co-authored more than 30 peer-reviewed publications. For the past nine years, she has been performing statistical analyses for clinical and basic science researchers. She has been assisting with the design of clinical trials and animal research studies, performing sample size calculations, and writing the clinical trial reports of clinical trial progress and interim analyses of efficacy and safety data to the University of Texas MD Anderson Data and Safety Monitoring Board. Camille Moreno-Gorrin is a graduate of the Master of Science Program in Epidemiology at the University of Puerto Rico Graduate School of Public Health. During her graduate studies, she was a research assistant at the Comprehensive Cancer Center of the University of Puerto Rico where she co-authored several articles in biomedical journals. She also worked as a research coordinator for the HIV/AIDS Surveillance System of the Puerto Rico Department of Health, where she conducted research on intervention programs to link HIV patients to care.

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