Investigator
Postdoctoral Researcher · University of Milano-Bicocca, Department of Informatics, Systems and Communication (DISCo)
Federated causal discovery with missing data in a multicentric study on endometrial cancer
Establishing causal dependencies is crucial in applied domains, such as medicine and healthcare, where decision-making must be explainable. In these settings, small sample sizes and missing data call for federated approaches to maximise the amount of information we can use. We propose a novel federated causal discovery algorithm capable of pooling information from multiple sources with heterogeneous missing data to learn a graph representing cause-effect relationships. In particular, we learn a causal graph on a centralised server while taking into account both prior knowledge and missingness mechanism specific to each client. We applied the proposed algorithm to synthetic data and real-world data from a multicentric study on endometrial cancer, validating the obtained causal graph through quantitative analyses and a clinical literature review. Our approach learns an accurate model despite data missing not-at-random.
Postdoctoral Researcher
University of Milano-Bicocca · Department of Informatics, Systems and Communication (DISCo)
Ph.D. in Computer Science
University of Milano-Bicocca · Department of Informatics, Systems and Communication
Master Degree in Computer Science
Università degli Studi di Milano-Bicocca · Department of Informatics, Systems and Communication
Bachelor Degree in Computer Science
IT
Scopus: 57216456175