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Multi-Modal and Multi-Attribute Generation of Single Cells with CFGen

Cell Flow for Generation (CFGen) is a flow-based conditional generative model designed for multi-modal single-cell counts, addressing the discrete nature of the data and improving recovery of biological characteristics.

Year
2024
Venue
arXiv 2024
Authors
7
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arxiv.org/abs/2407.11734v2ARXIV-DEFAULT
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Abstract

Generative modeling of single-cell RNA-seq data is crucial for tasks like trajectory inference, batch effect removal, and simulation of realistic cellular data. However, recent deep generative models simulating synthetic single cells from noise operate on pre-processed continuous gene expression approximations, overlooking the discrete nature of single-cell data, which limits their effectiveness and hinders the incorporation of robust noise models. Additionally, aspects like controllable multi-modal and multi-label generation of cellular data remain underexplored. This work introduces CellFlow for Generation (CFGen), a flow-based conditional generative model that preserves the inherent discreteness of single-cell data. CFGen generates whole-genome multi-modal single-cell data reliably, improving the recovery of crucial biological data characteristics while tackling relevant generative tasks such as rare cell type augmentation and batch correction. We also introduce a novel framework for compositional data generation using Flow Matching. By showcasing CFGen on a diverse set of biological datasets and settings, we provide evidence of its value to the fields of computational biology and deep generative models.

Authors

7