M.S. in Epidemiology
Epidemiologists examine causes and patterns of health, injury, and disease in large groups. This wide-angle view of human health is increasingly vital today as we learn to study and maintain the health of the large, complex communities we live in. Epidemiological research plays a role in everything from government policy to drug development to agriculture to sanitation. A Master of Science in Epidemiology is your first step towards a career producing, analyzing, and interpreting this data.
M.S. vs M.P.H. in Epidemiology? (and M.S. in Biostatistics)
The M.S. in Epidemiology combines the strong quantitative grounding and research focus of a biostatistics degree with the public health perspective of an M.P.H.. It’s a great foundation for continued study in health informatics, biostatistics, and more.
A student who’s earned an M.S. in Epidemiology is well prepared to design and conduct public health studies, as well as analyze and interpret the data they produce. Someone who holds an M.P.H. is well prepared to apply that data in business and government settings, and to communicate it to laypeople. An M.S. in Biostatistics is focused solely on the study statistics and what you can do with that data.
What will you learn in the M.S. in Epidemiology?
The M.S. in Epidemiology is an academic, research-oriented degree, focused on mathematical theories, scientific hypothesis, and the use of statistical software. You’ll gain a strong grounding in research methods and biostatistics contributing towards a population-based perspective on health. By the end of the program, you should expect to encounter:
- Biostatistics concepts and methods used in epidemiological research and clinical trials, including basic probability, descriptive statistics, and life table analysis
- Hands-on experience analyzing real data sets
- Foundational SAS programming for health science data – from organizing and cleaning data for analysis to ANOVA and linear regression
- How to design an epidemiological study
- Multiple methods of analyzing and interpreting data from epidemiological studies
- Opportunities to dive deeper into public health surveillance, infectious disease, statistical modeling, and more
M.S. Epidemiology Jobs
Graduates of the Epidemiology M.S. program will be prepared to join and eventually lead collaborative research teams in healthcare settings, and to pursue doctoral-level studies in epidemiology, biostatistics, and other quantitative health fields.
The M.S. in Epidemiology can serve as a terminal degree for those interested in working as a master’s level project director or coordinator, or a statistician or data analyst in a range of different research settings including pharmaceutical companies, NGOs, government agencies, contract research organizations, and nonprofit and community-based organizations.
The Bureau of Labor Statistics predicts epidemiology job opportunities will grow faster than in most fields, 26% between 2021 and 2031. As of July 2023, the average yearly salary for an epidemiologist in the US is $105,732, according to Salary.com. Epidemiologists in New York can expect an average salary of $124,235.
M.S. in Epidemiology Degree Requirements
The M.S. in Epidemiology is 36 credits. Courses are offered late afternoon and evening classes on campus. Each class is worth 3 credits unless otherwise noted.
Required Core Courses (9 credits)
BISM 5001: Introduction to Biostatistics
Foundational statistical methods used in clinical and public health research. Basic probability, samples and population, interval estimation, and more. How to present data in professional publications.
EPIM 5002: Introduction to Epidemiology
Introduces principles and practices of epidemiology, along with a population-based understanding of health and disease. Basic measurements and methods used in studying health in populations.
EPIM 7096: Capstone
This course is a culminating experience designed to provide students with an opportunity to integrate knowledge and skills they have learned throughout their graduate education. Students will appropriately define an epidemiology problem, study design, data source, literature review, results interpretation, and scientific communication in written and oral form. This course will consist of lectures, group discussions and class presentations. This course is to be taken as the final requirement for the student to qualify for graduation with an M.S. degree in Epidemiology.
Prerequisites: Completion of all CORE and REQUIRED courses as well as completion of CHSM 7088 Practicum with a passing grade. Registration for Capstone requires approval from the Department Chair.
Required Program Courses (21 credits)
EPIM 6012: Advanced Epidemiology I
Building off of Intro to Epidemiology, expands on concepts of epidemiologic reasoning, and the design and interpretation of research. Topics include reliability and validity, confounding and effect modification, and more.
EPIM 6013: Advanced Epidemiology II
Continuing to build off previous epidemiology courses, covers advanced methods and special topics like power and sample size, regression techniques, epidemiologic consulting, and related topics.
BISM 6031: Intermediate Biostatistics I
First part of a two-semester sequence. Topics covered include descriptive statistics, probability, estimation, nonparametric methods.
BISM 6032: Intermediate Biostatistics II
Second part of a two-semester sequence. Topics covered include hypothesis testing with categorical data, multiple and logistic regression. Also, statistical methods often used in epidemiological studies and clinical trials such as life table analysis and logistic analysis.
BISM 6092: Intro to SAS Programming for Data Management and Analysis
Application of basic SAS programming for data management and analysis. Exposes students to a range of computing techniques used for health science data, foundational for later courses.
EPIM 6024: SAS Application to Epidemiology Studies
Builds on Introduction to Epidemiology and Introduction to Biostatistics. Teaches students to apply basic epidemiological reasoning and statistical methods and concepts using SAS statistical software. Acts as a bridge to more advanced courses. Students will conduct analysis on actual data sets and will learn to prepare and clean data for analysis, conduct descriptive analysis using SAS, Analysis of Variance (ANOVA) and more. Limited to epidemiology majors, other students may be permitted with instructor permission.
EPIM 7091: Directed Research
Advanced study or research endeavor in area of student’s choice, with consultation from the professor. Will be replaced with another Required Program Elective under some circumstances.
Required Program Electives (6 credits, choose two)
EPIM 6093: Chronic Disease Epidemiology (Campus)
Basic grounding in biomedical and methodological issues associated with epidemiologic research on chronic disease, including applied examples such as diabetes and obesity.
EPIM 6094: Seminar in Infectious Disease Epidemiology (Campus)
Aims to help students understand the multiple influences – from social networks to veterinary practices to bioterrorism – that fuel infectious disease transmission dynamics.
EPIM 6025: Maternal and Child Health Epidemiology (Campus)
Students will learn about issues in maternal and child health by assessing national and international epidemiologic data cross-sectionally and longitudinally, with results from ongoing research. Topics include pregnancy health and risk behaviors, injury trends in early to mid-childhood and more, all explored through a social-ecological lens.
EPIM 6023: Principles of PH Surveillance and Survey Development (Online)
Overview of surveillance systems as well as the issues involved in the design and execution of epidemiological surveys. Surveillance systems covered include: national and international reportable disease surveillance systems, systems designed to detect chronic disease and diseases related to behaviors and risk factors, surveillance for injuries, and more.
EPIM 6021: Fundamentals of Infectious Disease Epidemiology (Online)
Provides an overview of major infectious diseases of public health interest, including vector borne diseases, sexually transmitted diseases, and HIV/AIDS. At the end of the course, participants will be able to describe the five types of microbial pathogens that cause infections, common diagnostic tests, issues related to control and prevention of infection, and more.
EPIM 6022: Methods in Infectious Disease Epidemiology (Online)
Intermediate-level quantitative course covering epidemiological methodologies applicable to the study of infectious diseases. Subjects covered include methods used in the study of respiratory, fecal-oral, vector borne, and sexually transmitted diseases, issues related to seroepidemiological studies, and differentiation between an infectious and a chronic event.
EPIM 7093: Tutorial in Epidemiology (Online or Campus)
Comprehensive, individual study on a specific topic guided by a professor.
BISM 6011: Statistical Modelling (Campus)
Introduces advanced methods to statistical modelling techniques – linear mixed effect models, generalized linear models for correlated data, missing data, proportional models, and repeated measure design.
BISM 6048: Survival Analysis (Campus)
Focuses on applications of the analysis of time to event data. Covers lifetime distribution, censoring, parametric models, among other topics.
BISM 6052: Introduction to Clinical Study Design (Campus)
Prerequisite: BISM 5001. Overview of randomized clinical trials. Topics include sample size and power, reliability of measurement, factorial design, stratification, and more.
BISM 6053: Large Observational Data Analysis (Campus)
Complex survey design analysis methods for large datasets such as the National Health and Nutrition Examination survey. Topics include but are not limited to: Practical data management skills, statistical programming and exploratory data analysis, statistical simulation, sensitivity analysis.
BISM 8001: Survey Sampling and Data Analysis (Campus)
Examines the method employed in designing and analyzing complex surveys. Explores major sampling designs and estimation procedures like simple and stratified random sampling and variance estimation in complex sample surveys. Students will get hands-on experience analyzing existing data sets from complex surveys.