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. 2023 May 29;51(13):6578–6592. doi: 10.1093/nar/gkad450

Table 1.

Summary of existing virtual KO methods and feature comparison with GenKI

Name Input data required Method Supervised / unsupervised Description Reference
scGen scRNA-seq (WT and KO samples) Transfer learning Supervised Train a variational autoencoder that learns to generalize the response of the cells in the training set of perturbations (5)
CPA scRNA-seq (KO samples) Generative modeling Supervised Train an autoencoder with adversarial that decomposes the data into a collection of embeddings associated with the cell type, perturbation, and other external covariates to study combinatorial genetic perturbation (6)
CellOracle scRNA-seq and scATAC-seq (WT sample) Graph-based modeling Unsupervised Simulate gene expressions in response to transcription factor (TF) perturbation by signal propagation through an inferred gene regulatory network (7)
scTenifoldKnk scRNA-seq (WT sample) Manifold alignment Unsupervised Simultaneously project inferred WT and virtual KO gene regulatory networks to a joint low dimensional space (8)
GenKI scRNA-seq (WT sample) VGAE Unsupervised Train a VGAE model that learns the latent gene representations of WT sample and virtually construct a virtual KO counterpart to discern similarity This study