xianglin226 / Benchmarking-Single-Cell-Perturbation

Single-Cell (Perturbation) Model Library

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

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 Molecular system biology Predicting cellular responses to complex perturbations in high‐throughput screens
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 Advances in Neural Information Processing Systems 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
CODEX 2024 Bioinformatics CODEX: COunterfactual Deep learning for the in silico EXploration of cancer cell line perturbations

Perturbation Datasets

SC-perturb
C-MAP
PerturbBase
PerturbDB
Multiome Perturb-seq (paper)
Spatial: Perturb-Fish (paper)
Spatial: PerturbView (paper)
Spatial: Perturb-map (paper)

(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 ICRCMB 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