Clinical Informatics Courses

This listing serves as the course catalog for the graduate programs that lead to the MS degree in Clinical Informatics, and Certificate in Applied Clinical Informatics. In addition, the graduate student curriculum management system (CLEARvue) provides a full description of each course, course learning objectives, and course directors with their contact information in the introductory material in CLEARvue for each course. Required and recommended textbooks are listed on the internet and intranet, and updated annually. Information about other learning resources (both electronic and print) is provided to graduate students at the beginning of each year and beginning of each course. Methods of learner assessment and course grading are described in the Graduate Student Handbook.

Credits:

8.00

Directors:
Brown/Walsh
Grading:
Pass/Fail
Prerequisites:
None
Offered:
Fall Term
Description:

Applied Clinical Informatics I: Fundamentals of Biomedical Informatics; Data Acquisition and Management; Clinical Decision Support.

This course presents an overview of biomedical informatics theories, methods, and techniques. The main features of each division of the field of biomedical informatics (bioinformatics, translational informatics, imaging informatics, clinical informatics and public health informatics) are described and analyzed. Social, economic, ethical, cultural, environmental, historical, and other factors driving the development and implementation of clinical informatics are described and discussed. The student is then introduced to important structural and technical concepts of health care data. Students get hands-on experience on how to analyze a healthcare problem and model its data effectively using appropriate work flow and data modeling techniques. The third major component of this course covers clinical decision support as a technology-mediated process by which patient information and characteristics are captured, matched to an algorithm, and used to guide patient care. Students learn the basic principles and advanced concepts of clinical decision support, benefits as well as the drawbacks of these systems, and how these are used support the practice of evidence based medicine. Important design principles such as signal-to-noise ratios, alert fatigue, and usability are also covered.

Credits:

8.00

Directors:
Brown, Walsh
Grading:
Pass/Fail
Prerequisites:
Applied Clinical Informatics I
Offered:
Spring Term
Description:

Applied Clinical Informatics II: Computer Science Fundamentals and Data Analytics; Challenges in Informatics Quality and Safety
In this course students learn database concepts, design, development, implementation, and administration that is specifically targeted towards healthcare environments. Healthcare data integrity, data quality, and data security are emphasized. Management of data structure and content for compliance with standards, regulations (including HIPAA and HITECH), and accrediting agencies are detailed. Students examine strategies and technologies for data storage, controlling access, protecting confidentiality, archiving and backing up, and restoring massive amounts of healthcare data. This course provides students the opportunity to analyze the various types of healthcare data and explore the challenges related to modeling, collecting, using and analyzing each main type of healthcare data. This course explores different strategies for representing data, information and knowledge, including required and emerging standards for coding, nomenclature, and their associated taxonomies and ontologies. It also examines how these standards are used to create tools for mining, analyzing, interpreting and sharing information for a variety of clinical and administrative purposes throughout the healthcare system.

Credits:

8.00

Directors:
Brown, Walsh
Grading:
Pass/Fail
Prerequisites:
Applied Clinical Informatics I and II
Offered:
Fall term
Description:

Applied Clinical Informatics II: Computer Science Fundamentals and Data Analytics; Challenges in Informatics Quality and Safety.

In this course students learn advanced health data science concepts necessary to design, develop, implement and administer new technologies specifically targeted towards improving healthcare outcomes. Healthcare data integrity, data quality, and data portability are emphasized. Management of data structure and content for compliance with existing and emerging standards for interoperability and big data set creation, are highlighted. Students examine strategies and technologies for data storage, data exchange, data normalization, and data re-use for research, quality improvement and patient care. This course explores different strategies for representing data, information and knowledge, including required and emerging standards for coding and nomenclature, and their associated taxonomies and ontologies. It also examines how these standards are used in tools for mining, analyzing, interpreting and sharing information for a variety of clinical and administrative purposes throughout the healthcare system. This course provides students the opportunity to explore state of the art health care technologies such as electronic phenotyping, cloud-based real-time clinical decision support, natural language processing using artificial intelligence, machine learning tools used to analyze large data sets in distributed research networks.

Credits:

8.00

Directors:
Brown, Walsh
Grading:
Pass/Fail
Prerequisites:
Applied Clinical Informatics I, II, and III
Offered:
Spring Term
Description:

Applied Clinical Informatics Iv: Computer Information System Implementation and Planning; Capstone project
This course has three modules and focuses on the design, analysis, selection, and management of health information systems through hands-on experience and conceptual modeling of healthcare applications (eg, electronic health records, clinical decision support systems, ancillary systems, analytic systems, and practice management systems). Students gain an understanding of how health information technologies are used to support health information processing, services delivery, and administration. This course covers system building blocks, systems integration, work flow redesign, and business process integration for health data exchange and resource sharing among health care stakeholders. Fundamental subjects such as system analysis concepts, life cycle modeling, interface design, system evaluation, and management of health care applications within and across health care organizations are covered. The course also covers important concepts in strategic planning, project leadership, team building, and change management. The course culminates with a capstone project that offers students the opportunity to gain real-world experience by working on informatics projects in clinical settings. Students may work independently or as part of a team on various applied projects to facilitate selection, implementation, and optimal use of health information technologies in a health care organization. Students participate in the design of their individual projects and are required to develop project plans that leverage the academic training they have received in the degree program.