Mediation effect selection in high-dimensional and compositional microbiome data.
Haixiang ZhangJun ChenYang FengChan WangHuilin LiLei LiuPublished in: Statistics in medicine (2020)
The microbiome plays an important role in human health by mediating the path from environmental exposures to health outcomes. The relative abundances of the high-dimensional microbiome data have an unit-sum restriction, rendering standard statistical methods in the Euclidean space invalid. To address this problem, we use the isometric log-ratio transformations of the relative abundances as the mediator variables. To select significant mediators, we consider a closed testing-based selection procedure with desirable confidence. Simulations are provided to verify the effectiveness of our method. As an illustrative example, we apply the proposed method to study the mediation effects of murine gut microbiome between subtherapeutic antibiotic treatment and body weight gain, and identify Coprobacillus and Adlercreutzia as two significant mediators.
Keyphrases
- human health
- weight gain
- risk assessment
- body mass index
- electronic health record
- birth weight
- climate change
- big data
- randomized controlled trial
- social support
- systematic review
- air pollution
- weight loss
- data analysis
- artificial intelligence
- machine learning
- physical activity
- deep learning
- combination therapy
- life cycle