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Main Authors: Jiang, Wenkang, Liu, Yuhang, Gao, Erdun, Abbasnejad, Ehsan, Yao, Lina, Shi, Javen Qinfeng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.25581
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author Jiang, Wenkang
Liu, Yuhang
Gao, Erdun
Abbasnejad, Ehsan
Yao, Lina
Shi, Javen Qinfeng
author_facet Jiang, Wenkang
Liu, Yuhang
Gao, Erdun
Abbasnejad, Ehsan
Yao, Lina
Shi, Javen Qinfeng
contents Single-cell perturbation prediction aims to infer how cells respond to unseen interventions and to achieve out-of-distribution (OOD) generalization, providing a computational route to understanding how perturbations reshape cellular programs over time. Existing machine learning methods have made important progress, but typically capture only one side of the response. Latent causal approaches seek mechanisms that support generalization and interpretation, yet often treat perturbation effects as static outcomes. Temporal models describe how gene expression changes across time, but usually do not explicitly recover the latent causal generative mechanisms driving these changes. In practice, perturbation effects are both latent and dynamical: interventions act through unobserved cellular programs, whose states evolve over time and give rise to observed expression profiles. Motivated by this view, we propose a latent dynamical causal generative model for single-cell perturbation data that jointly captures latent cellular programs, perturbation-conditioned mechanisms, and temporal evolution. We further provide an identifiability analysis showing that, under suitable conditions, the latent causal variables are recoverable up to standard equivalence classes. Guided by this analysis, we develop CITE-VAE, a learning framework for recovering latent cellular programs and their perturbation-driven dynamics from single-cell sequencing data. Experiments on Causal-3DIdent validate the theoretical results and the effectiveness of the proposed method in controlled settings. Additional experiments on real-world CRISPR-based single-cell perturbation data show improved generalization to unseen perturbations compared with state-of-the-art baselines, highlighting the practical robustness of our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2605_25581
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record_format arxiv
spellingShingle Learning Latent Dynamical Causal Processes for Single-Cell Perturbation Prediction
Jiang, Wenkang
Liu, Yuhang
Gao, Erdun
Abbasnejad, Ehsan
Yao, Lina
Shi, Javen Qinfeng
Machine Learning
Single-cell perturbation prediction aims to infer how cells respond to unseen interventions and to achieve out-of-distribution (OOD) generalization, providing a computational route to understanding how perturbations reshape cellular programs over time. Existing machine learning methods have made important progress, but typically capture only one side of the response. Latent causal approaches seek mechanisms that support generalization and interpretation, yet often treat perturbation effects as static outcomes. Temporal models describe how gene expression changes across time, but usually do not explicitly recover the latent causal generative mechanisms driving these changes. In practice, perturbation effects are both latent and dynamical: interventions act through unobserved cellular programs, whose states evolve over time and give rise to observed expression profiles. Motivated by this view, we propose a latent dynamical causal generative model for single-cell perturbation data that jointly captures latent cellular programs, perturbation-conditioned mechanisms, and temporal evolution. We further provide an identifiability analysis showing that, under suitable conditions, the latent causal variables are recoverable up to standard equivalence classes. Guided by this analysis, we develop CITE-VAE, a learning framework for recovering latent cellular programs and their perturbation-driven dynamics from single-cell sequencing data. Experiments on Causal-3DIdent validate the theoretical results and the effectiveness of the proposed method in controlled settings. Additional experiments on real-world CRISPR-based single-cell perturbation data show improved generalization to unseen perturbations compared with state-of-the-art baselines, highlighting the practical robustness of our approach.
title Learning Latent Dynamical Causal Processes for Single-Cell Perturbation Prediction
topic Machine Learning
url https://arxiv.org/abs/2605.25581