mbtransfer: Microbiome intervention analysis using transfer functions and mirror statistics.
Kris SankaranPratheepa JeganathanPublished in: PLoS computational biology (2024)
Time series studies of microbiome interventions provide valuable data about microbial ecosystem structure. Unfortunately, existing models of microbial community dynamics have limited temporal memory and expressivity, relying on Markov or linearity assumptions. To address this, we introduce a new class of models based on transfer functions. These models learn impulse responses, capturing the potentially delayed effects of environmental changes on the microbial community. This allows us to simulate trajectories under hypothetical interventions and select significantly perturbed taxa with False Discovery Rate guarantees. Through simulations, we show that our approach effectively reduces forecasting errors compared to strong baselines and accurately pinpoints taxa of interest. Our case studies highlight the interpretability of the resulting differential response trajectories. An R package, mbtransfer, and notebooks to replicate the simulation and case studies are provided.
Keyphrases
- microbial community
- antibiotic resistance genes
- depressive symptoms
- physical activity
- human health
- climate change
- working memory
- small molecule
- high throughput
- electronic health record
- emergency department
- risk assessment
- patient safety
- machine learning
- data analysis
- artificial intelligence
- single cell
- drug induced
- quality improvement