q-Diffusion leverages the full dimensionality of gene coexpression in single-cell transcriptomics.
Myrl G MarmarelisRussell Jared LittmanFrancesca BattaglinDonna NiedzwieckiAlan VenookJosé Luis AmbiteAram GalstyanHeinz-Josef LenzGreg Ver SteegPublished in: Communications biology (2024)
Unlocking the full dimensionality of single-cell RNA sequencing data (scRNAseq) is the next frontier to a richer, fuller understanding of cell biology. We introduce q-diffusion, a framework for capturing the coexpression structure of an entire library of genes, improving on state-of-the-art analysis tools. The method is demonstrated via three case studies. In the first, q-diffusion helps gain statistical significance for differential effects on patient outcomes when analyzing the CALGB/SWOG 80405 randomized phase III clinical trial, suggesting precision guidance for the treatment of metastatic colorectal cancer. Secondly, q-diffusion is benchmarked against existing scRNAseq classification methods using an in vitro PBMC dataset, in which the proposed method discriminates IFN-γ stimulation more accurately. The same case study demonstrates improvements in unsupervised cell clustering with the recent Tabula Sapiens human atlas. Finally, a local distributional segmentation approach for spatial scRNAseq, driven by q-diffusion, yields interpretable structures of human cortical tissue.
Keyphrases
- single cell
- rna seq
- phase iii
- clinical trial
- open label
- high throughput
- double blind
- endothelial cells
- phase ii
- machine learning
- metastatic colorectal cancer
- placebo controlled
- deep learning
- induced pluripotent stem cells
- genome wide
- high resolution
- gene expression
- dendritic cells
- big data
- dna methylation
- randomized controlled trial
- immune response
- electronic health record
- bone marrow
- cell therapy
- smoking cessation
- mass spectrometry
- bioinformatics analysis