Real World Data and Causal Artificial Intelligence
9 ottobre 2023 – h. 10.00
Sala Europa, IRPPS via Palestro 32 – Roma
Abstract
Artificial Intelligence (AI) is transforming peopleâs life in unprecedented ways. AI models have human or superhuman abilities in multiple tasks, e.g., gaming, driving, conversation, and content organization. In biomedical research, however, AI demonstrated as much promise, e.g., in molecular drug design, as much disappointment, e.g., in clinical drug repurposing or public health intervention. One of the reasons is that the datasets AI feeds on âsourced from real world databases such electronic health records (EHR)â are often littered with bias. Such bias might be irrelevant to predict the happening of health conditions, but it influences any strategy to prevent such conditions from happening. In this talk, we will take a dive into the promises and perils of AI in healthcare, and its troubled relationship with data, bias, and causality. We will explore novel causal AI methodologies able to both provide accurate individual health predictions as well as interventions. Finally, we will present use cases of causal AI on large, integrated EHR data, and an eagleâs view of EHR consortia in the USA.
Short biographies
Mattia Prosperi, PhD, FAMIA, is Professor in the Department of Epidemiology, and Associate Dean of AI and Innovation in the College of Public Health and Health Profession at University of Florida. His background is in computer science engineering, with expertise in machine learning, bio-health informatics, and epidemiology. His research leverages technology and data intelligence to develop prediction and intervention models for improving future health and lives. In his administrative role, his mission is to expand AI infrastructure, training, research and expertise capacity in public health and health professions.
Yi Guo, PhD, is Associate Professor in the Department of Health Outcomes, Policy and Biomedical Informatics, College of Medicine, University of Florida. He has a multi-disciplinary background in the analysis of real-world data, including electronic health records and administrative claims, experimental and observational study design, predictive modeling (e.g., statistical and machine learning), causal modeling, and analysis of patient-reported outcomes in clinical and public health applications, and among various populations, especially vulnerable populations.