Risk Assessment of Lymph Node Metastases in Endometrial Cancer Patients:
A Causal Approach
- URL: http://arxiv.org/abs/2305.10041v1
- Date: Wed, 17 May 2023 08:33:32 GMT
- Title: Risk Assessment of Lymph Node Metastases in Endometrial Cancer Patients:
A Causal Approach
- Authors: Alessio Zanga, Alice Bernasconi, Peter J.F. Lucas, Hanny Pijnenborg,
Casper Reijnen, Marco Scutari, Fabio Stella
- Abstract summary: We introduce a causal discovery algorithm for causal Bayesian networks based on bootstrap resampling.
We discuss the strengths and limitations of our findings in light of the presence of missing data that may be missing-not-at-random.
- Score: 1.8933952173153485
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Assessing the pre-operative risk of lymph node metastases in endometrial
cancer patients is a complex and challenging task. In principle, machine
learning and deep learning models are flexible and expressive enough to capture
the dynamics of clinical risk assessment. However, in this setting we are
limited to observational data with quality issues, missing values, small sample
size and high dimensionality: we cannot reliably learn such models from limited
observational data with these sources of bias. Instead, we choose to learn a
causal Bayesian network to mitigate the issues above and to leverage the prior
knowledge on endometrial cancer available from clinicians and physicians. We
introduce a causal discovery algorithm for causal Bayesian networks based on
bootstrap resampling, as opposed to the single imputation used in related
works. Moreover, we include a context variable to evaluate whether selection
bias results in learning spurious associations. Finally, we discuss the
strengths and limitations of our findings in light of the presence of missing
data that may be missing-not-at-random, which is common in real-world clinical
settings.
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