Molecular Biomarker Core, Case Western Reserve University, 10900 Euclid Avenue, Cleveland, OH, 44106-4904, USA.
School of Nursing, Case Western Reserve University, Cleveland, OH, USA.
Sci Rep. 2023 Sep 19;13(1):15514. doi: 10.1038/s41598-023-41443-4.
Gene expression data generated from whole blood via next generation sequencing is frequently used in studies aimed at identifying mRNA-based biomarker panels with utility for diagnosis or monitoring of human disease. These investigations often employ data normalization techniques more typically used for analysis of data originating from solid tissues, which largely operate under the general assumption that specimens have similar transcriptome composition. However, this assumption may be violated when working with data generated from whole blood, which is more cellularly dynamic, leading to potential confounds. In this study, we used next generation sequencing in combination with flow cytometry to assess the influence of donor leukocyte counts on the transcriptional composition of whole blood specimens sampled from a cohort of 138 human subjects, and then subsequently examined the effect of four frequently used data normalization approaches on our ability to detect inter-specimen biological variance, using the flow cytometry data to benchmark each specimens true cellular and molecular identity. Whole blood samples originating from donors with differing leukocyte counts exhibited dramatic differences in both genome-wide distributions of transcript abundance and gene-level expression patterns. Consequently, three of the normalization strategies we tested, including median ratio (MRN), trimmed mean of m-values (TMM), and quantile normalization, noticeably masked the true biological structure of the data and impaired our ability to detect true interspecimen differences in mRNA levels. The only strategy that improved our ability to detect true biological variance was simple scaling of read counts by sequencing depth, which unlike the aforementioned approaches, makes no assumptions regarding transcriptome composition.
通过下一代测序从全血中生成的基因表达数据经常被用于旨在识别基于 mRNA 的生物标志物的研究,这些标志物可用于人类疾病的诊断或监测。这些研究通常采用更常用于分析源自实体组织的数据的归一化技术,这些技术主要基于这样的假设,即标本具有相似的转录组组成。然而,当处理源自全血的数据时,这种假设可能会被违反,因为全血更具细胞动力学,从而导致潜在的混淆。在这项研究中,我们使用下一代测序技术结合流式细胞术,评估了供体白细胞计数对从 138 个人类研究对象的队列中采集的全血标本转录组成的影响,然后使用流式细胞术数据来检验四个常用的数据归一化方法对我们检测标本间生物学差异的能力的影响,以基准每个标本的真实细胞和分子身份。来自白细胞计数不同的供体的全血样本在转录丰度的全基因组分布和基因水平表达模式方面表现出显著差异。因此,我们测试的三种归一化策略,包括中位数比(MRN)、m 值修剪均值(TMM)和定量归一化,明显掩盖了数据的真实生物学结构,并削弱了我们检测 mRNA 水平真实标本间差异的能力。唯一能够提高我们检测真实生物学差异能力的策略是通过测序深度对读数进行简单缩放,与上述方法不同,该方法不假设转录组组成。