When? Monday, June 23, 2025, from 8:30 AM to 12:30 PM
Where? In person at the 23rd International Conference on Artificial Intelligence in Medicine (AIME 2025)
This tutorial provides participants a primer in designing and implementing a causal network for healthcare data.
The first step is to construct a causal graph, a directed graph in which a node represents a random variable and an edge represents a cause-effect pair. Participants will learn how to take advantage of clinical experts' knowledge to derive the cause-effect relationships, shifting from an associational analysis to a causal approach. Then, causal discovery algorithms are applied to the elicited causal graph to learn new relationships. After validating the obtained graph, the parameters of the causal network are estimated from data. Finally, the obtained model is used to estimate the causal effects of administered treatments on patients' outcomes.
The key topics are:
Integrating Clinical Expertise with Causal Discovery Techniques. We show how to combine clinical experts' knowledge with causal discovery methods. Participants will learn how to leverage domain expertise to design a causal network that represents the cause-effect relationships.
Assessing the Impact of Specific Cancer Treatments. We focus on leveraging the causal network designed at the previous step to estimate the effects of specific oncological treatments on the cardiovascular outcome. Participants will work with simulated data and link the provided dataset with the causal network structure.
Comparison with Biased Estimates. Finally, we compare unadjusted raw estimates with those derived from the causal network to illustrate the importance of causal inference. Participants will learn techniques to identify and adjust for biases in healthcare data, making the whole tutorial applicable to any real-world setting.
[08:30 - 09:30] Part I, Alessio Zanga
Elements of causal models: introduction to the theoretical aspects of causal models, inference and discovery.
[09:30 - 10:30] Part II, Alice Bernasconi
Cancer in adolescents and young adults: an overview of the case study on oncological treatments and their long-term sequelae.
[10:30 - 11:30] Coffee break
[11:00 - 12:00] Part III, Alessio Zanga
Implementing a causal network: building a causal network from experts’ knowledge and data.
[12:00 - 12:30] Part IV, Conclusions & General discussion
Wrapping-up the tutorial, fostering the interaction between the experts and participants on specific topics.
To attend this tutorial you have to complete two steps:
Select this tutorial during the registration at the 23rd International Conference on Artificial Intelligence in Medicine (AIME 2025) ,
Fill out the attendance form.
This tutorial is designed for researchers in medical informatics and computer science, healthcare professionals, and epidemiologists who are interested in developing, evaluating, or applying causal network models. Participants should have a basic understanding of machine learning and be familiar with fundamental concepts such as probability and statistical modeling.
Postdoctoral researcher at the Models and Algorithms for Data and Text Mining Laboratory, University of Milano-Bicocca
Senior researcher at the Evaluative Epidemiology Unit, Fondazione IRCCS Istituto Nazionale dei Tumori, Milan
Prof. Riccardo Bellazzi, University of Pavia
Prof. Concha Bielza, Technical University of Madrid
Prof. Pedro Larrañaga, Technical University of Madrid
Prof. Peter J.F. Lucas, University of Twente
Prof. Bojan Mihaljević, Technical University of Madrid
Prof. Silvana Quaglini, University of Pavia
Prof. Lucia Sacchi, University of Pavia
Prof. Marco Scutari, Istituto Dalle Molle di Studi sull’Intelligenza Artificiale
Prof. Fabio Stella, University of Milano-Bicocca
Prof. Allan Tucker, Brunel University London
Prof. Blaz Zupan, University of Ljubljana