mastR: an R package for automated identification of tissue-specific gene signatures in multi-group differential expression analysis.

Jinjin Chen, Ahmed Mohamed, Dharmesh D Bhuva, Melissa J Davis, Chin Wee Tan
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Abstract

Motivation: Biomarker discovery is important and offers insight into potential underlying mechanisms of disease. While existing biomarker identification methods primarily focus on single cell RNA sequencing (scRNA-seq) data, there remains a need for automated methods designed for labeled bulk RNA-seq data from sorted cell populations or experiments. Current methods require curation of results or statistical thresholds and may not account for tissue background expression. Here we bridge these limitations with an automated marker identification method for labeled bulk RNA-seq data that explicitly considers background expressions.

Results: We developed mastR, a novel tool for accurate marker identification using transcriptomic data. It leverages robust statistical pipelines like edgeR and limma to perform pairwise comparisons between groups, and aggregates results using rank-product-based permutation test. A signal-to-noise ratio approach is implemented to minimize background signals. We assessed the performance of mastR-derived NK cell signatures against published curated signatures and found that the mastR-derived signature performs as well, if not better than the published signatures. We further demonstrated the utility of mastR on simulated scRNA-seq data and in comparison with Seurat in terms of marker selection performance.

Availability and implementation: mastR is freely available from https://bioconductor.org/packages/release/bioc/html/mastR.html. A vignette and guide are available at https://davislaboratory.github.io/mastR. All statistical analyses were carried out using R (version ≥4.3.0) and Bioconductor (version ≥3.17).

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masterr:用于多组差异表达分析中组织特异性基因签名自动识别的R包。
动机:生物标志物的发现是重要的,并提供了对疾病潜在潜在机制的见解。虽然现有的生物标志物鉴定方法主要集中在单细胞RNA测序(scRNA-seq)数据上,但仍然需要设计用于从分选细胞群体或实验中标记的大量RNA-seq数据的自动化方法。目前的方法需要对结果或统计阈值进行管理,并且可能无法解释组织背景表达。在这里,我们用一种自动标记识别方法来消除这些限制,这种方法可以明确地考虑背景表达的标记批量RNA-seq数据。结果:我们开发了masterr,这是一种利用转录组学数据准确识别标记物的新工具。它利用强大的统计管道,如edgeR和limma来执行组之间的两两比较,并使用基于秩-乘积的排列测试来聚合结果。一种信噪比方法被实现以最小化背景信号。我们评估了master -derived NK细胞签名与已发布的精选签名的性能,发现master -derived签名的性能即使不比已发布的签名好,也一样好。我们进一步证明了masterr在模拟scRNA-seq数据上的效用,并在标记选择性能方面与Seurat进行了比较。可用性:masterr可以从https://bioconductor.org/packages/release/bioc/html/mastR.html免费获得。相关简介和指南可在https://davislaboratory.github.io/mastR上找到。采用R软件(版本≥4.3.0)和Bioconductor软件(版本≥3.17)进行统计分析。补充信息:补充数据可在生物信息学在线获取。
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