Cross-Modal Graph Contrastive Learning with Cellular Images.
Shuangjia ZhengJiahua RaoJixian ZhangLianyu ZhouJiancong XieEthan CohenWei LuChengtao LiYuedong YangPublished in: Advanced science (Weinheim, Baden-Wurttemberg, Germany) (2024)
Constructing discriminative representations of molecules lies at the core of a number of domains such as drug discovery, chemistry, and medicine. State-of-the-art methods employ graph neural networks and self-supervised learning (SSL) to learn unlabeled data for structural representations, which can then be fine-tuned for downstream tasks. Albeit powerful, these methods are pre-trained solely on molecular structures and thus often struggle with tasks involved in intricate biological processes. Here, it is proposed to assist the learning of molecular representation by using the perturbed high-content cell microscopy images at the phenotypic level. To incorporate the cross-modal pre-training, a unified framework is constructed to align them through multiple types of contrastive loss functions, which is proven effective in the formulated novel tasks to retrieve the molecules and corresponding images mutually. More importantly, the model can infer functional molecules according to cellular images generated by genetic perturbations. In parallel, the proposed model can transfer non-trivially to molecular property predictions, and has shown great improvement over clinical outcome predictions. These results suggest that such cross-modality learning can bridge molecules and phenotype to play important roles in drug discovery.
Keyphrases
- drug discovery
- convolutional neural network
- working memory
- neural network
- deep learning
- optical coherence tomography
- single molecule
- high resolution
- machine learning
- single cell
- air pollution
- electronic health record
- genome wide
- gene expression
- wastewater treatment
- high throughput
- big data
- mass spectrometry
- copy number
- high speed
- mesenchymal stem cells