Celcomen:用于单细胞和组织扰动建模的空间因果解缠技术

Stathis Megas, Daniel G. Chen, Krzysztof Polanski, Moshe Eliasof, Carola-Bibiane Schonlieb, Sarah A. Teichmann
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引用次数: 0

摘要

Celcomen 利用数学因果关系框架,通过生成图神经网络,将空间转录组学和单细胞数据中的细胞内和细胞间基因调控程序分开。它可以学习基因与基因之间的相互作用,并生成扰动后的反事实空间转录组学,从而提供实验无法获取的样本。我们通过模拟和临床相关的颅胶质母细胞瘤、人类胎儿脾脏和小鼠肺癌样本验证了它的解缠、可识别性和反事实预测能力。Celcomen 提供了对疾病和治疗诱导的变化进行建模的方法,使我们能够对与人类健康相关的单细胞空间分辨组织反应有新的认识。
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Celcomen: spatial causal disentanglement for single-cell and tissue perturbation modeling
Celcomen leverages a mathematical causality framework to disentangle intra- and inter- cellular gene regulation programs in spatial transcriptomics and single-cell data through a generative graph neural network. It can learn gene-gene interactions, as well as generate post-perturbation counterfactual spatial transcriptomics, thereby offering access to experimentally inaccessible samples. We validated its disentanglement, identifiability, and counterfactual prediction capabilities through simulations and in clinically relevant human glioblastoma, human fetal spleen, and mouse lung cancer samples. Celcomen provides the means to model disease and therapy induced changes allowing for new insights into single-cell spatially resolved tissue responses relevant to human health.
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