Life after machine learning in health and medicine
Jessica Gronsbell, PhD
Assistant Professor | Department of Statistical Sciences |
University of Toronto
WHEN: Wednesday, November 29, 2023, from 3:30 to 4:30 p.m.
WHERE: Hybrid | 2001 McGill College, Rm 1140 | Zoom &
Note: Dr. Gronsbell will present in-person
In spite of the enormous increase in the volume and diversity of clinical data in the last decade, the use of machine learning to improve patient care remains a largely unfilled opportunity. A critical bottleneck is the lack of methods that can properly address statistical inference questions that arise in “life after machine learning”. Time permitting, I will consider two such questions. First, I will show how to reliably evaluate a model’s performance and whether it is fair in the semi-supervised setting when an extremely small proportion of testing data is labeled. Then, I will discuss our recent method for regression modeling when the outcome of interest is predominantly derived from a machine learning model due to the time or expense of ascertainment. The practical utility of my proposals will be illustrated with analyses of electronic health record data from Mass General Brigham healthcare system and population biobank data from the UK Biobank.
Jesse Gronsbell is an Assistant Professor in the Department of Statistical Sciences with cross-appointments in the Departments of Family and Community Medicine and Computer Science at the University of Toronto. She is interested in the development of statistical learning and inference methods that address key challenges of analyzing modern observational health data, including extreme missing data, complex measurement error, data heterogeneity, and bias and fairness. Jesse’s work is primarily supported by NSERC, CIHR, and the Ontario Ministry of Health. Website: https://sites.google.com/view/jgronsbell/home?authuser=0