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Instrumental variable estimation for compositional treatments.

Elisabeth Ailer1,2,3, Christian L Müller4,5,6,7, Niki Kilbertus4,8,5

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This summary is machine-generated.

This study warns against misinterpreting causal relationships in compositional data, common in ecology and microbiome research. It proposes new methods for accurate cause-effect estimation in these complex datasets.

Keywords:
CausalityCause-effect estimationCompositional dataInstrumental variableMicrobial diversity

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Area of Science:

  • Ecology
  • Microbiome Research
  • Single-cell Sequencing Data Analysis

Background:

  • Many scientific datasets, including species abundances, cell-type compositions, and microbiome amplicon data, are compositional.
  • Interpreting causal relationships in compositional data presents unique challenges and potential pitfalls.
  • Common statistical measures like diversity indices may lead to misinterpretations of causal effects.

Purpose of the Study:

  • To provide a causal perspective on compositional data within an instrumental variable framework.
  • To identify and articulate potential misinterpretations of compositional causes, particularly concerning interventions.
  • To develop and advocate for robust multivariate methods for valid cause-effect estimation.

Main Methods:

  • Articulating pitfalls in interpreting compositional causes from an interventionist viewpoint.
  • Developing multivariate statistical methods incorporating data transformations and regression techniques.
  • Accounting for the unique structure of the compositional sample space in analysis.

Main Results:

  • Demonstrated advantages and limitations of the proposed methods through comparative analysis.
  • Highlighted the inadequacy of common summary statistics for causal inference in compositional data.
  • Provided a framework for scientifically interpretable results from compositional data.

Conclusions:

  • The proposed multivariate methods offer a valid and informative approach to cause-effect estimation for compositional data.
  • Practitioners should exercise caution when interpreting causal meanings from summary statistics of compositional data.
  • This work provides essential guidance for robust causal inference in fields utilizing compositional datasets.