Joint representation and visualization of derailed cell states with Decipher

使用 Decipher 对脱轨细胞状态进行联合表示和可视化

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作者:Achille Nazaret, Joy Linyue Fan, Vincent-Philippe Lavallée, Cassandra Burdziak, Andrew E Cornish, Vaidotas Kiseliovas, Robert L Bowman, Ignas Masilionis, Jaeyoung Chun, Shira E Eisman, James Wang, Justin Hong, Lingting Shi, Ross L Levine, Linas Mazutis, David Blei, Dana Pe'er, Elham Azizi6

Abstract

Biological insights often depend on comparing conditions such as disease and health, yet we lack effective computational tools for integrating single-cell genomics data across conditions or characterizing transitions from normal to deviant cell states. Here, we present Decipher, a deep generative model that characterizes derailed cell-state trajectories. Decipher jointly models and visualizes gene expression and cell state from normal and perturbed single-cell RNA-seq data, revealing shared and disrupted dynamics. We demonstrate its superior performance across diverse contexts, including in pancreatitis with oncogene mutation, acute myeloid leukemia, and gastric cancer.

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