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血液基因组研究的细胞亚群预测。

Cell subset prediction for blood genomic studies.

机构信息

Interdepartmental Program in Computational Biology and Bioinformatics, Yale University, New Haven, Connecticut 06511, USA.

出版信息

BMC Bioinformatics. 2011 Jun 24;12:258. doi: 10.1186/1471-2105-12-258.

Abstract

BACKGROUND

Genome-wide transcriptional profiling of patient blood samples offers a powerful tool to investigate underlying disease mechanisms and personalized treatment decisions. Most studies are based on analysis of total peripheral blood mononuclear cells (PBMCs), a mixed population. In this case, accuracy is inherently limited since cell subset-specific differential expression of gene signatures will be diluted by RNA from other cells. While using specific PBMC subsets for transcriptional profiling would improve our ability to extract knowledge from these data, it is rarely obvious which cell subset(s) will be the most informative.

RESULTS

We have developed a computational method (Subset Prediction from Enrichment Correlation, SPEC) to predict the cellular source for a pre-defined list of genes (i.e. a gene signature) using only data from total PBMCs. SPEC does not rely on the occurrence of cell subset-specific genes in the signature, but rather takes advantage of correlations with subset-specific genes across a set of samples. Validation using multiple experimental datasets demonstrates that SPEC can accurately identify the source of a gene signature as myeloid or lymphoid, as well as differentiate between B cells, T cells, NK cells and monocytes. Using SPEC, we predict that myeloid cells are the source of the interferon-therapy response gene signature associated with HCV patients who are non-responsive to standard therapy.

CONCLUSIONS

SPEC is a powerful technique for blood genomic studies. It can help identify specific cell subsets that are important for understanding disease and therapy response. SPEC is widely applicable since only gene expression profiles from total PBMCs are required, and thus it can easily be used to mine the massive amount of existing microarray or RNA-seq data.

摘要

背景

对患者血液样本进行全基因组转录谱分析为研究潜在疾病机制和个体化治疗决策提供了有力工具。大多数研究基于对总外周血单个核细胞(PBMC)的分析,这是一种混合细胞群体。在这种情况下,由于细胞亚群特异性基因特征的差异表达会被其他细胞的 RNA 稀释,因此准确性固有地受到限制。虽然使用特定的 PBMC 亚群进行转录谱分析可以提高我们从这些数据中提取知识的能力,但通常不清楚哪些细胞亚群最具信息性。

结果

我们开发了一种计算方法(Subset Prediction from Enrichment Correlation,SPEC),仅使用总 PBMC 中的数据,即可根据预定义的基因列表(即基因特征)预测其细胞来源。SPEC 不依赖于特征基因在特征中的出现,而是利用与一组样本中特定细胞亚群的基因的相关性。使用多个实验数据集进行验证表明,SPEC 可以准确识别基因特征的来源是髓系还是淋巴系,以及区分 B 细胞、T 细胞、NK 细胞和单核细胞。使用 SPEC,我们预测到髓系细胞是与 HCV 患者对标准治疗无反应相关的干扰素治疗反应基因特征的来源。

结论

SPEC 是血液基因组研究的强大技术。它可以帮助确定对理解疾病和治疗反应很重要的特定细胞亚群。SPEC 具有广泛的适用性,因为只需要来自总 PBMC 的基因表达谱,因此它可以很容易地用于挖掘大量现有的微阵列或 RNA-seq 数据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3bfd/3213685/afe133c36c41/1471-2105-12-258-2.jpg

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