Do-calculus enables estimation of causal effects in partially observed biomolecular pathways
Bioinformatics 38(2022): i350-i358 Estimating causal queries, such as changes in protein abundance in response to a perturbation, is a fundamental task in the analysis of biomolecular pathways. The estimation requires experimental measurements on the pathway components. However, in practice many pat...
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Zusammenfassung: | Bioinformatics 38(2022): i350-i358 Estimating causal queries, such as changes in protein abundance in response
to a perturbation, is a fundamental task in the analysis of biomolecular
pathways. The estimation requires experimental measurements on the pathway
components. However, in practice many pathway components are left unobserved
(latent) because they are either unknown, or difficult to measure. Latent
variable models (LVMs) are well-suited for such estimation. Unfortunately,
LVM-based estimation of causal queries can be inaccurate when parameters of the
latent variables are not uniquely identified, or when the number of latent
variables is misspecified. This has limited the use of LVMs for causal
inference in biomolecular pathways. In this manuscript, we propose a general
and practical approach for LVM-based estimation of causal queries. We prove
that, despite the challenges above, LVM-based estimators of causal queries are
accurate if the queries are identifiable according to Pearl's do-calculus, and
describe an algorithm for its estimation. We illustrate the breadth and the
practical utility of this approach for estimating causal queries in four
synthetic and two experimental case studies, where structures of biomolecular
pathways challenge the existing methods for causal query estimation. The code
and the data documenting all the case studies are available at
\url{https://github.com/srtaheri/LVMwithDoCalculus} |
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DOI: | 10.48550/arxiv.2102.06626 |