Analysis of the Human Protein Atlas Weakly Supervised Single-Cell Classification competition.
Trang LeCasper F WinsnesUlrika AxelssonHao XuJayasankar Mohanakrishnan KaimalDiana MahdessianShubin DaiIlya S MakarovVladislav OstankovichYang XuEric BenhamouChristof HenkelRoman A SolovyevNikola BanićVito BošnjakAna BošnjakAndrija MiličevićWei OuyangEmma LundbergPublished in: Nature methods (2022)
While spatial proteomics by fluorescence imaging has quickly become an essential discovery tool for researchers, fast and scalable methods to classify and embed single-cell protein distributions in such images are lacking. Here, we present the design and analysis of the results from the competition Human Protein Atlas - Single-Cell Classification hosted on the Kaggle platform. This represents a crowd-sourced competition to develop machine learning models trained on limited annotations to label single-cell protein patterns in fluorescent images. The particular challenges of this competition include class imbalance, weak labels and multi-label classification, prompting competitors to apply a wide range of approaches in their solutions. The winning models serve as the first subcellular omics tools that can annotate single-cell locations, extract single-cell features and capture cellular dynamics.
Keyphrases
- single cell
- machine learning
- rna seq
- high throughput
- deep learning
- fluorescence imaging
- endothelial cells
- artificial intelligence
- convolutional neural network
- binding protein
- oxidative stress
- mass spectrometry
- big data
- photodynamic therapy
- optical coherence tomography
- induced pluripotent stem cells
- label free
- single molecule