scMEDAL for the interpretable analysis of single-cell transcriptomics data with batch effect visualization using a deep mixed effects autoencoder
Aixa X. Andrade, Son Nguyen, Austin Marckx, Albert Montillo

TL;DR
scMEDAL is a novel deep autoencoder framework that models batch effects in single-cell RNA sequencing data, enabling interpretable, batch-specific representations and improved biological insights.
Contribution
The paper introduces scMEDAL, a dual-network autoencoder that separately models batch-invariant and batch-specific effects, with a Bayesian autoencoder component for interpretability and enhanced analysis.
Findings
scMEDAL-RE produces interpretable, batch-specific embeddings.
scMEDAL outperforms existing methods in predicting disease and donor groups.
Provides generative visualizations including counterfactual cell reconstructions.
Abstract
Single-cell RNA sequencing enables high-resolution analysis of cellular heterogeneity, yet disentangling biological signal from batch effects remains a major challenge. Existing batch-correction algorithms suppress or discard batch-related variation rather than modeling it. We propose scMEDAL, single-cell Mixed Effects Deep Autoencoder Learning, a framework that separately models batch-invariant and batch-specific effects using two complementary subnetworks. The principal innovation, scMEDAL-RE, is a random-effects Bayesian autoencoder that learns batch-specific representations while preserving biologically meaningful information confounded with batch effects signal often lost under standard correction. Complementing it, the fixed-effects subnetwork, scMEDAL-FE, trained via adversarial learning provides a default batch-correction component. Evaluations across diverse conditions (autism,…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics
