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Causal Discovery with Missing Data in a Multicentric Clinical Study

Authors :
Zanga, A
Bernasconi, A
Lucas, P
Pijnenborg, H
Reijnen, C
Scutari, M
Stella, F
Lucas, PJF
Zanga, A
Bernasconi, A
Lucas, P
Pijnenborg, H
Reijnen, C
Scutari, M
Stella, F
Lucas, PJF
Publication Year :
2023

Abstract

Causal inference for testing clinical hypotheses from observational data presents many difficulties because the underlying data-generating model and the associated causal graph are not usually available. Furthermore, observational data may contain missing values, which impact the recovery of the causal graph by causal discovery algorithms: a crucial issue often ignored in clinical studies. In this work, we use data from a multi-centric study on endometrial cancer to analyze the impact of different missingness mechanisms on the recovered causal graph. This is achieved by extending state-of-the-art causal discovery algorithms to exploit expert knowledge without sacrificing theoretical soundness. We validate the recovered graph with expert physicians, showing that our approach finds clinically-relevant solutions. Finally, we discuss the goodness of fit of our graph and its consistency from a clinical decision-making perspective using graphical separation to validate causal pathways.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1410089550
Document Type :
Electronic Resource