Phenotype prediction from single-cell RNA-seq data using attention-based neural networks

Author:

Mao Yuzhen1,Lin Yen-Yi23ORCID,Wong Nelson K Y4,Volik Stanislav3,Sar Funda23,Collins Colin23,Ester Martin13

Affiliation:

1. School of Computing Science, Simon Fraser University , Burnaby, BC V5A 1S6, Canada

2. Department of Urologic Sciences, University of British Columbia , Vancouver BC V5Z 1M9, Canada

3. Vancouver Prostate Centre , Vancouver, BC V6H 3Z6, Canada

4. Department of Experimental Therapeutics, BC Cancer , Vancouver BC V5Z 1L3, Canada

Abstract

Abstract Motivation A patient’s disease phenotype can be driven and determined by specific groups of cells whose marker genes are either unknown or can only be detected at late-stage using conventional bulk assays such as RNA-Seq technology. Recent advances in single-cell RNA sequencing (scRNA-seq) enable gene expression profiling in cell-level resolution, and therefore have the potential to identify those cells driving the disease phenotype even while the number of these cells is small. However, most existing methods rely heavily on accurate cell type detection, and the number of available annotated samples is usually too small for training deep learning predictive models. Results Here, we propose the method ScRAT for phenotype prediction using scRNA-seq data. To train ScRAT with a limited number of samples of different phenotypes, such as coronavirus disease (COVID) and non-COVID, ScRAT first applies a mixup module to increase the number of training samples. A multi-head attention mechanism is employed to learn the most informative cells for each phenotype without relying on a given cell type annotation. Using three public COVID datasets, we show that ScRAT outperforms other phenotype prediction methods. The performance edge of ScRAT over its competitors increases as the number of training samples decreases, indicating the efficacy of our sample mixup. Critical cell types detected based on high-attention cells also support novel findings in the original papers and the recent literature. This suggests that ScRAT overcomes the challenge of missing marker genes and limited sample number with great potential revealing novel molecular mechanisms and/or therapies. Availability and implementation The code of our proposed method ScRAT is published at https://github.com/yuzhenmao/ScRAT.

Funder

NSERC Discovery Grant “Transfer

Canadian Institutes of Health Research

Cancer Research Society

Publisher

Oxford University Press (OUP)

Reference44 articles.

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