Master of Science in Biostatistics

The MS in Biostatistics is an academic degree program for students with a background in math and a strong interest in public health. The program emphasizes statistical theory and methods so that students are prepared to be effective statistical collaborators in interdisciplinary studies; and lead the design and execution of studies.  

Careers

Recent graduates hold the following positions:

  • Opioid compliance specialist, Georgia Dept. of Public Health
  • Actuarial analyst, Highmark Health
  • Biostatistician, Ichan School of Medicine at Mt. Sinai
  • Statistician, Mayo Clinic
  • Business analyst, PNC Financial Services
  • Biostatistician, University of Pittsburgh Dept. of Critical Care Medicine
  • Biostatistician, University of Pittsburgh Dept. of Orthopedic Surgery
  • Data analyst, University of Pittsburgh School of Pharmacy
  • Statistician, University of Pittsburgh School of Social Work
  • Biostatistician, Cleveland Clinic
  • Data-analyst, DeFiner

Recent Thesis Titles

Browse titles in D-Scholarship, the institutional repository for research output at the University of Pittsburgh

MS Competencies

Graduates will be able to:

  • Identify appropriate problem definitions, study designs and data collection methods to address public health problems
  • Utilize fundamental theoretical concepts and relationships to effectively apply and interpret common statistical inference techniques
  • Use common biostatistical inference techniques and regression models to analyze data and interpret the results for public health practice
  • Recognize strengths and weaknesses of approaches, including alternative designs, data sources and analytic methods
  • Communicate the meaning, potential and results of biostatistical analyses to potential collaborators with varying degrees of statistical knowledge
  • Effectively use SAS software for advanced data management and in-depth statistical analysis
  • Appropriately utilize generalized linear models to analyze clustered and longitudinal data (binary/continuous/count) applicable to health sciences
  • Derive and interpret fundamental quantities and statistics from various survival analysis models; perform the analysis and interpret the results from nonparametric, parametric, and semiparametric survival models
  • Apply advanced methods or theories in at least three major areas of classical biostatistics

Requirements

40 credits, including:

  • Coursework in fundamentals of statistical theory and applications
  • A statistical consulting practicum
  • Coursework in epidemiology and public health
  • Faculty-guided thesis project or Capstone course to prepare an appropriate MS thesis

Program Information

MS Two-year Schedule (PDF, 2023-24)
MS Eighteen-month Schedule (PDF, 2023-24)
MS Degree Requirements Worksheet (PDF, 2023-24)
Student Handbook (PDF, 2023-24)

Admissions