可解释性
生物信息学
计算机科学
计算生物学
模块化(生物学)
系统生物学
机器学习
生物
人工智能
维数之咒
遗传学
基因
作者
Mohammad Lotfollahi,Anna Klimovskaia Susmelj,Carlo De Donno,Leon Hetzel,Yuge Ji,Ignacio L. Ibarra,Sanjay Srivatsan,Mohsen Naghipourfar,Riza M. Daza,Beth Martin,Jay Shendure,José L. McFaline‐Figueroa,Pierre Boyeau,F. Alexander Wolf,Nafissa Yakubova,Stephan Günnemann,Cole Trapnell,David López-Paz,Fabian J. Theis
标识
DOI:10.15252/msb.202211517
摘要
Recent advances in multiplexed single-cell transcriptomics experiments facilitate the high-throughput study of drug and genetic perturbations. However, an exhaustive exploration of the combinatorial perturbation space is experimentally unfeasible. Therefore, computational methods are needed to predict, interpret, and prioritize perturbations. Here, we present the compositional perturbation autoencoder (CPA), which combines the interpretability of linear models with the flexibility of deep-learning approaches for single-cell response modeling. CPA learns to in silico predict transcriptional perturbation response at the single-cell level for unseen dosages, cell types, time points, and species. Using newly generated single-cell drug combination data, we validate that CPA can predict unseen drug combinations while outperforming baseline models. Additionally, the architecture's modularity enables incorporating the chemical representation of the drugs, allowing the prediction of cellular response to completely unseen drugs. Furthermore, CPA is also applicable to genetic combinatorial screens. We demonstrate this by imputing in silico 5,329 missing combinations (97.6% of all possibilities) in a single-cell Perturb-seq experiment with diverse genetic interactions. We envision CPA will facilitate efficient experimental design and hypothesis generation by enabling in silico response prediction at the single-cell level and thus accelerate therapeutic applications using single-cell technologies.
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