Predicting Cell Health with Morphological Profiles
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Updated
Jan 26, 2022 - HTML
Predicting Cell Health with Morphological Profiles
PDD: Awesome Phenotypic Drug Discovery
Processed Cell Painting Data for the LINCS Drug Repurposing Project
[NeurIPS 2025] CellCLIP – Learning Perturbation Effects in Cell Painting via Text-Guided Contrastive Learning
👩🍳 Recipe repository for image-based profiling of Pooled Cell Painting experiments
Predicting pharmacodynamic responses to cancer drugs using cell morphology
Accompanying code for Image2Omics
Benchmarking data processing strategies for Cell Painting data of NF1 Schwann cells. See analysis repository (https://github.com/WayScience/NF1_SchwannCell_data_analysis) for information on how the data was interpreted.
Predicting drug polypharmacology from cell morphology readouts using variational autoencoder latent space arithmetic
Image-based profiling and machine learning to predict failing vs. non-failing cardiac fibroblasts
[CVPRW 2024] Learning interpretable single-cell morphological profiles from 3D Cell Painting z-stacks
Single cell analysis of the JUMP Cell Painting consortium pilot data (cpg0000)
🛠️ Use me to version control Pooled Cell Painting data and processing pipelines
Data repository for Sivagurunathan et al., 2025, "Alternate dyes for image-based profiling assays"
Anomaly detection for high-content image-based phenotypic cell profiling
cpg0011-lipocyteprofiler - Batch1 and Batch3
RF models for the prediction of cell viability in muscle cells from Cell Painting profiles.
quickly generate overviews of Cell Painting image plates
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