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Triple-effect correction for Cell Painting data with contrastive and domain-adversarial learning

Author

Listed:
  • Chengwei Yan

    (Nankai University)

  • Yu Zhang

    (Nankai University)

  • Jiuxin Feng

    (Nankai University)

  • Heyang Hua

    (Nankai University)

  • Zhihan Ruan

    (Nankai University)

  • Zhen Li

    (Tsinghua University)

  • Siyu Li

    (Nankai University)

  • Chaoyang Yan

    (Nankai University)

  • Pingjing Li

    (Nankai University)

  • Jian Liu

    (Nankai University)

  • Shengquan Chen

    (Nankai University)

Abstract

Cell Painting (CP), as a high-throughput imaging technology, generates extensive cell-stained imaging data, providing unique morphological insights for biological research. However, CP data contains three types of technical effects, referred to as triple effects, including batch effects, gradient-influenced row and column effects (well-position effects). The interaction of various technical effects can obscure true biological signals and complicate the characterization of CP data, making correction essential for reliable analysis. Here, we propose cpDistiller, a triple-effect correction method specially designed for CP data, which leverages a pre-trained segmentation model coupled with a semi-supervised Gaussian mixture variational autoencoder utilizing contrastive and domain-adversarial learning. Through extensive qualitative and quantitative experiments across various CP profiles, we demonstrate that cpDistiller effectively corrects triple effects, especially well-position effects, while preserving cellular heterogeneity. Moreover, cpDistiller effectively captures system-level phenotypic responses to genetic perturbations and reliably infers gene functions and interactions both when combined with scRNA-seq data and independently. cpDistiller also demonstrates promising capability for identifying gene and compound targets, highlighting its potential utility in drug discovery and broader biological research.

Suggested Citation

  • Chengwei Yan & Yu Zhang & Jiuxin Feng & Heyang Hua & Zhihan Ruan & Zhen Li & Siyu Li & Chaoyang Yan & Pingjing Li & Jian Liu & Shengquan Chen, 2025. "Triple-effect correction for Cell Painting data with contrastive and domain-adversarial learning," Nature Communications, Nature, vol. 16(1), pages 1-19, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-62193-z
    DOI: 10.1038/s41467-025-62193-z
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