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Single-Cell Model Collections

Many models for single-cell perturbation data coming out!

Models developed for single-cell perturbation data

Name Year Journal Title
Rachel et al 2018 Pacific Symposium on Biocomputing 2018 Cell-specific prediction and application of drug-induced gene expression profiles
scGEN 2019 Nature Method scGen predicts single-cell perturbation responses
DTD 2019 The World Wide Web Conference, 2019 Modeling Relational Drug-Target-Disease Interactions via Tensor Factorization with Multiple Web Sources
CPA 2021 CellBox: Interpretable Machine Learning for Perturbation Biology with Application to the Design of Cancer Combination Therapy
CellBox 2021 Cell systems CellBox: Interpretable Machine Learning for Perturbation Biology with Application to the Design of Cancer Combination Therapy
CellDrift 2022 BIB CellDrift: inferring perturbation responses in temporally sampled single-cell data
MultiCPA 2022 MultiCPA: Multimodal Compositional Perturbation Autoencoder
PerturbNet 2022 PerturbNet predicts single-cell responses to unseen chemical and genetic perturbations
scINSIGHT 2022 Genome biology scINSIGHT for interpreting single-cell gene expression from biologically heterogeneous data
scpregan 2022 Bioinformatics scPreGAN, a deep generative model for predicting the response of single-cell expression to perturbation
Gears 2023 Nature Biotech Predicting transcriptional outcomes of novel multigene perturbations with GEARS
cycleCDR 2023 Interpretable Modeling of Single-cell perturbation Responses to Novel Drugs Using Cycle Consistence Learning
scVIDR 2023 Patterns Generative modeling of single-cell gene expression for dose-dependent chemical perturbations
Unagi 2023 Unagi: Deep Generative Model for Deciphering Cellular Dynamics and In-Silico Drug Discovery in Complex Diseases
CINEMA-OT 2023 Nature Method Causal identification of single-cell experimental perturbation effects with CINEMA-OT
ChemCPA 2023 NeurIPS 2022 Predicting Cellular Responses to Novel Drug Perturbations at a Single-Cell Resolution
DREEP 2023 BMC Medicine Predicting drug response from single-cell expression profiles of tumours
ontoVAE 2023 Bioinformatics Biologically informed variational autoencoders allow predictive modeling of genetic and drug-induced perturbations
scDiff 2023 A GENERAL SINGLE-CELL ANALYSIS FRAMEWORK VIA CONDITIONAL DIFFUSION GENERATIVE MODELS
ContrastiveVI 2023 Nature Method Isolating salient variations of interest in single-cell data with contrastiveVI
sVAE 2023 PMLR Learning Causal Representations of Single Cells via Sparse Mechanism Shift Modeling
CellOT 2023 Nature Method Learning single-cell perturbation responses using neural optimal transport
samsVAE 2024 Modelling Cellular Perturbations with the Sparse Additive Mechanism Shift Variational Autoencoder
STAMP 2024 Toward subtask decomposition-based learning and benchmarking for genetic perturbation outcome prediction and beyond
Biolord 2024 Nature Biotech Disentanglement of single-cell data with biolord
Pdgrapher 2024 Combinatorial prediction of therapeutic perturbations using causally-inspired neural networks
TAT 2024 Journal of Chemical Information and Modeling Compound Activity Prediction with Dose-Dependent Transcriptomic Profiles and Deep Learning
scVAE 2024 A Supervised Contrastive Framework for Learning Disentangled Representations of Cell Perturbation Data
Cell PaintingCNN 2024 NC Learning representations for image-based profiling of perturbations
scDisInFact 2024 NC scDisInFact: disentangled learning for integration and prediction of multi-batch multi-condition single-cell RNA-sequencing data
CellCap 2024 Modeling interpretable correspondence between cell state and perturbation response with CellCap

(Pretrained) (Large)(Language) Models developed for single-cell data

Name Year Journal Title
DeepMAPS 2021 NC DeepMAPS: Single-cell biological network inference using heterogeneous graph transformer
scBERT 2022 NMI scBERT as a large-scale pretrained deep language model for cell type annotation of single-cell RNA-seq data
TransCluster 2022 Frontiers in Genetics TransCluster: A Cell-Type Identification Method for single-cell RNA-Seq data using deep learning based on transformer.
scMVP 2022 Genome Biology A deep generative model for multi-view profiling of single-cell RNA-seq and ATAC-seq data
scGPT 2023 NM scGPT: Towards Building a Foundation Model for Single-Cell Multi-omics Using Generative AI
Geneformer 2023 Nature Transfer learning enables predictions in network biology
CellLM 2023 Large-Scale Cell Representation Learning via Divide-and-Conquer Contrastive Learning
Tgpt 2023 Iscience Generative pretraining from large-scale transcriptomes for single-cell deciphering
Scimilarity 2023 Scalable querying of human cell atlases via a foundational model reveals commonalities across fibrosis-associated macrophages
scFoundation 2023 Large Scale Foundation Model on Single-cell Transcriptomics.
TOSICA 2023 NC Transformer for one stop interpretable cell type annotation
CIForm 2023 BIB CIForm as a Transformer-based model for cell-type annotation of large-scale single-cell RNA-seq data
scTransSort 2023 Biomolecules scTransSort: Transformers for Intelligent Annotation of Cell Types by Gene Embeddings
scMoFormer 2023 ICIKM Single-Cell Multimodal Prediction via Transformers
scTranslator 2023 A pre-trained large generative model for translating single-cell transcriptome to proteome
Cell2Sentence 2023 Cell2Sentence: Teaching Large Language Models the Language of Biology
genePT 2023 GENEPT: A SIMPLE BUT HARD-TO-BEAT FOUNDATION MODEL FOR GENES AND CELLS BUILT FROM CHATGPT
scMulan 2024 scMulan: a multitask generative pre-trained language model for single-cell analysis.

These tables will be periodically updated. We will build APIs for some of these models on TDC for benchmarking.

CZI single-cell database