Litcius/Paper detail

Signature-scoring methods developed for bulk samples are not adequate for cancer single-cell RNA sequencing data

Nighat Noureen, Zhenqing Ye, Yidong Chen, Xiaojing Wang, Siyuan Zheng

2022eLife63 citationsDOIOpen Access PDF

Abstract

Quantifying the activity of gene expression signatures is common in analyses of single-cell RNA sequencing data. Methods originally developed for bulk samples are often used for this purpose without accounting for contextual differences between bulk and single-cell data. More broadly, few attempts have been made to benchmark these methods. Here, we benchmark five such methods, including single sample gene set enrichment analysis (ssGSEA), Gene Set Variation Analysis (GSVA), AUCell, Single Cell Signature Explorer (SCSE), and a new method we developed, Jointly Assessing Signature Mean and Inferring Enrichment (JASMINE). Using cancer as an example, we show cancer cells consistently express more genes than normal cells. This imbalance leads to bias in performance by bulk-sample-based ssGSEA in gold standard tests and down sampling experiments. In contrast, single-cell-based methods are less susceptible. Our results suggest caution should be exercised when using bulk-sample-based methods in single-cell data analyses, and cellular contexts should be taken into consideration when designing benchmarking strategies.

Topics & Concepts

Benchmark (surveying)Computational biologyBenchmarkingBiologyGeneRNASet (abstract data type)Signature (topology)Gene expressionCancerData setSampling (signal processing)GeneticsGene signatureSample (material)Gene expression profilingComputer scienceGold standard (test)Sample size determinationDNA sequencingGenomicsSequence analysisRNA-SeqBioinformaticsDeep sequencingData miningSampling biasRegulation of gene expressionSingle-cell and spatial transcriptomicsCancer Genomics and DiagnosticsFerroptosis and cancer prognosis