MICON (Molecular-Image Contrastive Learning)
This is the repository for paper "Causal integration of chemical structures in self-supervised learning improves representations of microscopy images for morphological profiling". Learning effective representations of cells in microscopy images can fuel many applications. Here, we release code for a method that improves representation learning by integrating information about the small molecules cells were treated with into the training of deep learning methods.