Interpretable and context-free deconvolution of multi-scale whole transcriptomic data with UniCell deconvolve.
Daniel CharytonowiczRachel BrodyRobert P SebraPublished in: Nature communications (2023)
We introduce UniCell: Deconvolve Base (UCDBase), a pre-trained, interpretable, deep learning model to deconvolve cell type fractions and predict cell identity across Spatial, bulk-RNA-Seq, and scRNA-Seq datasets without contextualized reference data. UCD is trained on 10 million pseudo-mixtures from a fully-integrated scRNA-Seq training database comprising over 28 million annotated single cells spanning 840 unique cell types from 898 studies. We show that our UCDBase and transfer-learning models achieve comparable or superior performance on in-silico mixture deconvolution to existing, reference-based, state-of-the-art methods. Feature attribute analysis uncovers gene signatures associated with cell-type specific inflammatory-fibrotic responses in ischemic kidney injury, discerns cancer subtypes, and accurately deconvolves tumor microenvironments. UCD identifies pathologic changes in cell fractions among bulk-RNA-Seq data for several disease states. Applied to lung cancer scRNA-Seq data, UCD annotates and distinguishes normal from cancerous cells. Overall, UCD enhances transcriptomic data analysis, aiding in assessment of cellular and spatial context.
Keyphrases
- rna seq
- single cell
- data analysis
- deep learning
- electronic health record
- induced apoptosis
- genome wide
- big data
- cell cycle arrest
- oxidative stress
- machine learning
- cell therapy
- gene expression
- neoadjuvant chemotherapy
- systemic sclerosis
- lymph node
- mesenchymal stem cells
- radiation therapy
- emergency department
- resistance training
- papillary thyroid
- convolutional neural network
- locally advanced
- dna methylation
- bone marrow
- cerebral ischemia