Optimal adjustment sets for causal query estimation in partially observed biomolecular networks

Abstract

Causal query estimation in biomolecular networks commonly selects a ‘valid adjustment set’, i.e. a subset of network variables that eliminates the bias of the estimator. A same query may have multiple valid adjustment sets, each with a different variance. When networks are partially observed, current methods use graph-based criteria to find an adjustment set that minimizes asymptotic variance. Unfortunately, many models that share the same graph topology, and therefore same functional dependencies, may differ in the processes that generate the observational data. In these cases, the topology-based criteria fail to distinguish the variances of the adjustment sets. This deficiency can lead to sub-optimal adjustment sets, and to miss-characterization of the effect of the intervention. We propose an approach for deriving ‘optimal adjustment sets’ that takes into account the nature of the data, bias and finite-sample variance of the estimator, and cost. It empirically learns the data generating processes from historical experimental data, and characterizes the properties of the estimators by simulation. We demonstrate the utility of the proposed approach in four biomolecular Case studies with different topologies and different data generation processes. The implementation and reproducible Case studies are at https://github.com/srtaheri/OptimalAdjustmentSet.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jun 01, 2023
Source ID
10.1093/bioinformatics/btad270

Entities

People

  • Charles Tapley Hoyt
  • Ehsan Rahiminasab
  • Jeremy Zucker
  • Karen Sachs
  • Olga Vitek
  • Rohan Kapre
  • Sara Mohammad-taheri
  • Vartika Tewari

Organizations

  • Google
  • Harvard Medical School
  • National Institutes of Health
  • Northeastern University
  • Pacific Northwest National Laboratory
  • United States Department of Energy

Tags

Fields of Study

  • Computer science

Readers

  • Neural Network Machine Learning.
  • Regression Analysis.