Health Informatics Concentration (HI)

The M.S. with a concentration in Health Informatics is a two-year program that provides well-rounded training in health informatics, with a balance of core courses from such areas as information sciences, clinical informatics, clinical research informatics, consumer health and population health informatics, and data science, and more broadly health policy, social and behavioral science, biostatistics, and epidemiology. First-year courses survey the field; the typical second-year courses are more technical and put greater emphasis on mastering the skills in health informatics.

Applicants should typically have an undergraduate degree with a focus in health, computer science, and mathematics/statistics. Students whose native language is not English must take and submit scores from the TOEFL or IELTS examination. Part-time enrollment is not permitted.

Degree Requirements

The Health Informatics concentration consists of a total of fourteen courses: seven required courses, five electives, and satisfactory completion and presentation of a yearlong, two-course capstone project. Students demonstrating a mastery of topics covered by the required courses may replace them with more advanced courses but must receive written permission from the DGS and their adviser prior to enrolling in the substitute courses. Additionally, all first-year students must participate in an online Public Health Primer course the summer before their first term. 

The graduate school requires an overall grade average of High Pass, including grades of Honors in at least two full-term graduate courses for students enrolled in a two-year program. In order to maintain the minimum average of High Pass, each grade of Pass on the student’s transcript must be balanced by one grade of Honors. Each grade of Fail must be balanced by two grades of Honors. If a student retakes a course in which the student has received a failing grade, only the newer grade will be considered in calculating this average. The initial grade of Fail, however, will remain on the student’s transcript. A grade awarded at the conclusion of a full-year course in which no grade is awarded at the end of the first term would be counted twice in calculating this average.

Curriculum

Required Courses

BIS 550Topics in Biomedical Informatics and Data Science1
BIS 560Introduction to Clinical and Translational Informatics1
BIS 562Clinical Decision Support1
or BIS 640 User-Centered Design of Digital Health Tools
BIS 633Population and Public Health Informatics1
BIS 634Computational Methods for Informatics1
BIS 638Clinical Database Management Systems and Ontologies1
BIS 685Capstone in Health Informatics1
BIS 686Capstone in Health Informatics1
PUBH 508Foundations of Epidemiology and Public Health1
MS Suggested Electives in Informatics, Statistics and Data Science (5 course units)
BENG 5440Fundamentals of Medical Imaging 11
BIS 540Fundamentals of Clinical Trials1
BIS 567Bayesian Statistics1
BIS 568Applied Artificial Intelligence in Healthcare1
BIS 621Regression Models for Public Health1
BIS 623Advanced Regression Models1
BIS 628Longitudinal and Multilevel Data Analysis1
BIS 630Applied Survival Analysis1
BIS 645/GENE 6450/CB&B 6470Statistical Methods in Human Genetics1
BIS 691Theory of Generalized Linear Models1
CB&B 5555Unsupervised Learning for Big Data 11
CB&B 5670Topics in Deep Learning: Methods and Biomedical Applications 11
CB&B 5700Computational Biomedical Privacy 11
CB&B 5740Biomedical Natural Language Processing: Methods and Applications 11
CB&B 5750Bioinformatics Applications in Biomedicine 11
CB&B 5760Foundations of Real World Data Science: Electronic Health Records 11
CB&B 5790Distributed Artificial Intelligence on Biomedical Data 11
CB&B 6663/CPSC 5520/AMTH 5520/GENE 6630Deep Learning Theory and Applications 11
CB&B/MCDB 7520/CPSC 7500/MB&B 7520Biomedical Data Science: Mining and Modeling 11
CDE 534Applied Analytic Methods in Epidemiology1
CDE/EHS 566Causal Inference Methods in Public Health Research1
CDE 582Health Outcomes Research: Matching the Right Research Question to the Right Data1
CPSC 5370Database Systems 11
CPSC 5371Database Design and Implementation 11
CPSC 5390Software Engineering 11
CPSC 5460Data and Information Visualization 11
CPSC 5640Algorithms and their Societal Implications 11
CPSC 5700Artificial Intelligence1
CPSC 5770Natural Language Processing 11
CPSC 5810Introduction to Machine Learning 11
CPSC 5820Current Topics in Applied Machine Learning 11
CPSC 5830Deep Learning on Graph-Structured Data 11
CPSC 6700Topics in Natural Language Processing 11
EMD 533Implementation Science1
EMD 538Quantitative Methods for Infectious Disease Epidemiology1
EMD 539Introduction to the Analysis and Interpretation of Public Health Surveillance Data1
EMD 553Transmission Dynamic Models for Understanding Infectious Diseases1
EMD/HPM 580Reforming Health Systems: Using Data to Improve Health in Low- and Middle-Income Countries1
HPM 559Big Data, Privacy, and Public Health Ethics1
HPM 560Health Economics and U.S. Health Policy1
HPM 570Cost-Effectiveness Analysis and Decision-Making1
HPM 583Methods in Health Services Research1
HPM 595Food and Drug Administration Law1
IMED 5625Principles of Clinical Research 11
INP 7560R Stats for Neuroscience 11
MGT 525Competitive Strategy 24
MGT 534Personal Leadership 24
MGT 612Introduction to Social Entrepreneurship 24
MGT 631Public Health Entrepreneurship & Intrapraneurship 22
MGT 656Management of Software Development 24
MGT 698Healthcare Policy, Finance, and Economics 24
MGT 879Healthcare Operations 22
PUBH 510Health Policy and Health Care Systems1
S&DS 5170Applied Machine Learning and Causal Inference 11
S&DS 5300Data Exploration and Analysis 11
S&DS 5620Computational Tools for Data Science 11
S&DS 5630Multivariate Statistical Methods for the Social Sciences 11
S&DS 5650Introductory Machine Learning 11
S&DS 5830Time Series with R/Python 11
S&DS 6100Statistical Inference 11
S&DS 6310Optimization and Computation 11
S&DS 6450Statistical Methods in Computational Biology 11
S&DS 6630Computational Mathematics Situational Awareness and Survival Skills 11
S&DS 6640Information Theory 11

In addition, in the second year of the program, students are required to complete an independent capstone project (BIS 685/BIS 686) under the direction of a faculty member. This project may fall into one of the main areas—clinical informatics; clinical research informatics; population health informatics; and implementation of new methods and technology—and may include elements from several of these areas. Students are required to prepare a carefully written report and make an oral presentation of the work to the faculty and students. A capstone committee consisting of two faculty members and one outside reader will provide guidance to the candidate as to the suitability of the project and will monitor its progress.

Competencies

Upon receiving an M.S. in the Health Informatics concentration of Public Health, the student will be able to:

  • Select informatics methods appropriate for a given public health context
  • Compare the health information system structure and function across regional, national, and international settings
  • Assess population informatics needs, assets, and capacities that affect communities’ health
  • Propose strategies to identify stakeholders and build coalitions and partnerships for influencing public health informatics
  • Communicate audience-appropriate public health content, both in writing and through oral presentation
  • Apply systems thinking tools to a public health informatics issue