两个负二项分布之差的理论框架及其在测序数据比较分析中的应用

IF 6.2 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Genome research Pub Date : 2024-10-15 DOI:10.1101/gr.278843.123
Alicia Petrany, Ruoyu Chen, Shaoqiang Zhang, Yong Chen
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引用次数: 0

摘要

高通量测序(HTS)技术在研究体细胞和单细胞水平的生物问题方面发挥了重要作用。两个 HTS 数据集的比较分析通常依赖于测试两个负二项分布(DOTNB)差异的统计学意义。虽然负二项分布已被深入研究,但 DOTNB 的理论结果在很大程度上仍未被探索。在此,我们推导出 DOTNB 的基本分析结果,并研究其渐近特性。作为 DOTNB 的最新应用,我们介绍了 DEGage,这是一种在 scRNA-seq 数据中检测差异表达基因(DEG)的计算方法。DEGage 计算基因表达水平样本差异的平均值作为检验统计量,并通过使用 DOTNB 计算 P 值来确定显著的差异表达。使用模拟和真实的 scRNA-seq 数据集进行的广泛验证表明,DEGage 优于五种流行的 DEG 分析工具:DEGseq2、DEsingle、edgeR、Monocle3 和 scDD。DEGage 对高丢失水平具有很强的鲁棒性,在应用于平衡和不平衡数据集时,即使样本量较小,也能表现出卓越的灵敏度。我们利用 DEGage 分析了前列腺癌 scRNA-seq 数据集,并确定了 17 种细胞类型的标记基因。此外,我们还将 DEGage 应用于具有和不具有恐惧记忆的小鼠神经元的 scRNA-seq 数据集,并揭示了以往分析中忽略的八个潜在记忆相关基因。DOTNB 的理论结果和支持软件可广泛应用于 HTS 中分散计数数据的比较分析和广泛的研究问题。
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Theoretical framework for the difference of two negative binomial distributions and its application in comparative analysis of sequencing data
High-throughput sequencing (HTS) technologies have been instrumental in investigating biological questions at the bulk and single-cell levels. Comparative analysis of two HTS data sets often relies on testing the statistical significance for the difference of two negative binomial distributions (DOTNB). Although negative binomial distributions are well studied, the theoretical results for DOTNB remain largely unexplored. Here, we derive basic analytical results for DOTNB and examine its asymptotic properties. As a state-of-the-art application of DOTNB, we introduce DEGage, a computational method for detecting differentially expressed genes (DEGs) in scRNA-seq data. DEGage calculates the mean of the sample-wise differences of gene expression levels as the test statistic and determines significant differential expression by computing the P-value with DOTNB. Extensive validation using simulated and real scRNA-seq data sets demonstrates that DEGage outperforms five popular DEG analysis tools: DEGseq2, DEsingle, edgeR, Monocle3, and scDD. DEGage is robust against high dropout levels and exhibits superior sensitivity when applied to balanced and imbalanced data sets, even with small sample sizes. We utilize DEGage to analyze prostate cancer scRNA-seq data sets and identify marker genes for 17 cell types. Furthermore, we apply DEGage to scRNA-seq data sets of mouse neurons with and without fear memory and reveal eight potential memory-related genes overlooked in previous analyses. The theoretical results and supporting software for DOTNB can be widely applied to comparative analyses of dispersed count data in HTS and broad research questions.
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来源期刊
Genome research
Genome research 生物-生化与分子生物学
CiteScore
12.40
自引率
1.40%
发文量
140
审稿时长
6 months
期刊介绍: Launched in 1995, Genome Research is an international, continuously published, peer-reviewed journal that focuses on research that provides novel insights into the genome biology of all organisms, including advances in genomic medicine. Among the topics considered by the journal are genome structure and function, comparative genomics, molecular evolution, genome-scale quantitative and population genetics, proteomics, epigenomics, and systems biology. The journal also features exciting gene discoveries and reports of cutting-edge computational biology and high-throughput methodologies. New data in these areas are published as research papers, or methods and resource reports that provide novel information on technologies or tools that will be of interest to a broad readership. Complete data sets are presented electronically on the journal''s web site where appropriate. The journal also provides Reviews, Perspectives, and Insight/Outlook articles, which present commentary on the latest advances published both here and elsewhere, placing such progress in its broader biological context.
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