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Directed acyclic graph for epidemiological studies in childhood food allergy: Construction, user's guide, and application.

Zhuoxin PengChristian ApfelbacherSusanne BrandstetterRoland EilsMichael KabeschIrina LehmannSaskia TrumpSven WellmannJon Genuneitnull null
Published in: Allergy (2024)
Understanding modifiable prenatal and early life causal determinants of food allergy is important for the prevention of the disease. Randomized clinical trials studying environmental and dietary determinants of food allergy may not always be feasible. Identifying risk/protective factors for early-life food allergy often relies on observational studies, which may be affected by confounding bias. The directed acyclic graph (DAG) is a causal diagram useful to guide causal inference from observational epidemiological research. To date, research on food allergy has made little use of this promising method. We performed a literature review of existing evidence with a systematic search, synthesized 32 known risk/protective factors, and constructed a comprehensive DAG for early-life food allergy development. We present an easy-to-use online tool for researchers to re-construct, amend, and modify the DAG along with a user's guide to minimize confounding bias. We estimated that adjustment strategies in 57% of previous observational studies on modifiable factors of childhood food allergy could be improved if the researchers determined their adjustment sets by DAG. Future researchers who are interested in the causal inference of food allergy development in early life can apply the DAG to identify covariates that should and should not be controlled in observational studies.
Keyphrases
  • early life
  • single cell
  • pregnant women
  • wastewater treatment
  • convolutional neural network
  • case report
  • machine learning
  • risk assessment
  • climate change
  • current status
  • double blind