Daniella Meeker, PhD
Associate Professor of Biomedical Informatics & Data ScienceCards
About
Titles
Associate Professor of Biomedical Informatics & Data Science
Chief Research Information Officer, Yale New Haven Health System
Biography
Daniella Meeker, PhD is an Associate Professor in the Section of Biomedical Informatics and Data Science and the Chief Research Information Officer at Yale University School of Medicine and Yale New Haven Health System. Her research program is centered on the design, evaluation, and responsible deployment of data-driven systems that improve healthcare delivery at scale. Situated at the intersection of behavioral economics, biomedical informatics, and artificial intelligence, Dr. Meeker’s work addresses a persistent challenge in health research: how to generate evidence that is actionable, equitable, and sustainable within real-world clinical environments. Across her career, she has pursued a coherent scientific trajectory that has evolved from behavioral intervention trials to informatics infrastructure, federated data platforms, and, most recently, AI-enabled learning health systems governed by strong ethical and institutional safeguards.
Appointments
Biomedical Informatics & Data Science
Associate Professor TenurePrimary
Other Departments & Organizations
Education & Training
- Distinguished Fellow
- RAND Corporation (2011)
- Post-Doctoral Scholar
- Agency for Healthcare Research and Quality (2008)
- MS
- University of California, Los Angeles, CA, Health Services (2007)
- PhD
- California Institute of Technology, Computation and Neural Systems
- BA
- University of Chicago, Biology
Research
Academic Achievements & Community Involvement
Teaching & Mentoring
Teaching
Didactic CB&B 576 Section 01, CRN 22714 Foundations of Real World Data Science: Electronic Health Records
Course DirectorLecture Setting1/1/2025 - PresentForGraduate16 Average Instructional Hours Per YearThe course covers scientific principles, best practices, and limitations of using observational data from administrative records, including hypothesis generation, feasibility assessments, and causal inference. Students learn pragmatic skills required to prepare analytic data from large, complex transactional databases. We cover methods for data quality characterization and profiling for study planning. Coursework includes application of methods for creation and validation of computable phenotypes, electronic clinical quality measures, and derived analytic variables. Skills include preparation of real-world data for visualization and reporting in business intelligence tools commonly used in population health and health administration. Students reproduce results from published literature using existing databases for predictive modeling, public health, and outcomes research. Completion of this course positions students for externships in healthcare analytics and health data science.
Prerequisites: BIS 638, Clinical Database Management Systems and Ontologies (or equivalent); proficiency in SQL and Python, or R; HIPAA and HSR training; YNHHS Research Basic Access; COS550 or equivalent; execution of DUAs for public and proprietary databases; demonstrated use of YU-YNHHS data science platform.
News
News
- April 22, 2026
From Data to Discovery: Recapping the YALE/EPIC Cosmos Datathon
- March 24, 2026
AI in Cancer Workshop: Advancing Precision Medicine through Interdisciplinary Innovation
- May 05, 2025
Why Aren’t People Who Need Weight Loss Drugs Getting Them?
- April 25, 2025
Yale BIDS Enhances Research with Comprehensive Data and Service Through YBIC
Get In Touch
Contacts
Biomedical Informatics & Data Science
101 College Street, Floor 10
New Haven, CT 06510
United States