Novel Insights into Post-Myocardial Infarction Cardiac Remodeling through Algorithmic Detection of Cell-Type Composition Shifts

Brian Gural, Logan Kirkland, Abbey Hockett, Peyton Sandroni, Jiandong Zhang, Manuel Rosa-Garrido, Samantha K Swift, Douglas Chapski, Michael A Flinn, Caitlin C O'Meara, Thomas M Vondriska, Michaela Patterson, Brian C Jensen, Christoph Rau
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Abstract

Background: Recent advances in single cell sequencing have led to an increased focus on the role of cell-type composition in phenotypic presentation and disease progression. Cell-type composition research in the heart is challenging due to large, frequently multinucleated cardiomyocytes that preclude most single cell approaches from obtaining accurate measurements of cell composition. Our in silico studies reveal that ignoring cell type composition when calculating differentially expressed genes (DEGs) can have significant consequences. For example, a relatively small change in cell abundance of only 10% can result in over 25% of DEGs being false positives. Methods: We have implemented an algorithmic approach that uses snRNAseq datasets as a reference to accurately calculate cell type compositions from bulk RNAseq datasets through robust data cleaning, gene selection, and multi-sample cross-subject and cross-cell-type deconvolution. We applied our approach to cardiomyocyte-specific α1A adrenergic receptor (CM-α1A-AR) knockout mice. 8-12 week-old mice (either WT or CM-α1A-KO) were subjected to permanent left coronary artery (LCA) ligation or sham surgery (n=4 per group). Transcriptomes from the infarct border zones were collected 3 days later and analyzed using our algorithm to determine cell-type abundances, corrected differential expression calculations using DESeq2, and validated these findings using RNAscope. Results: Uncorrected DEGs for the CM-α1A-KO X LCA interaction term featured many cell-type specific genes such as Timp4 (fibroblasts) and Aplnr (cardiomyocytes) and overall GO enrichment for terms pertaining to cardiomyocyte differentiation (P=3.1E-4). Using our algorithm, we observe a striking loss of cardiomyocytes and gain in fibroblasts in the α1A-KO + LCA mice that was not recapitulated in WT + LCA animals, although we did observe a similar increase in macrophage abundance in both conditions. This recapitulates prior results that showed a much more severe heart failure phenotype in CM-α1A-KO + LCA mice. Following correction for cell-type, our DEGs now highlight a novel set of genes enriched for GO terms such as cardiac contraction (P=3.7E-5) and actin filament organization (P=6.3E-5). Conclusions: Our algorithm identifies and corrects for cell-type abundance in bulk RNAseq datasets opening new avenues for research on novel genes and pathways as well as an improved understanding of the role of cardiac cell types in cardiovascular disease.
通过细胞类型组成变化算法检测心肌梗死后心脏重塑的新见解
背景:单细胞测序技术的最新进展使人们越来越关注细胞类型组成在表型表现和疾病进展中的作用。心脏中的细胞类型组成研究具有挑战性,因为心肌细胞体积大且经常多核,大多数单细胞方法无法准确测量细胞组成。我们的硅学研究表明,在计算差异表达基因(DEGs)时忽略细胞类型组成会产生重大影响。例如,细胞丰度相对较小的变化(仅为 10%)会导致超过 25% 的 DEGs 出现假阳性。方法:我们采用了一种算法方法,以 snRNAseq 数据集为参考,通过稳健的数据清理、基因选择、多样本跨主体和跨细胞类型解卷积,从大量 RNAseq 数据集中准确计算出细胞类型组成。我们将这种方法应用于心肌细胞特异性α1A肾上腺素能受体(CM-α1A-AR)基因敲除小鼠。对 8-12 周大的小鼠(WT 或 CM-α1A-KO)进行永久性左冠状动脉(LCA)结扎或假手术(每组 4 只)。3 天后收集梗死边缘区的转录组,使用我们的算法分析确定细胞类型丰度,使用 DESeq2 校正差异表达计算,并使用 RNAscope 验证这些发现。结果CM-α1A-KO X LCA 相互作用项的未校正 DEGs 有许多细胞类型特异性基因,如 Timp4(成纤维细胞)和 Aplnr(心肌细胞),以及与心肌细胞分化有关的术语的整体 GO 富集(P=3.1E-4)。使用我们的算法,我们观察到在α1A-KO + LCA小鼠中心肌细胞显著减少,而成纤维细胞增加,这在WT + LCA动物中没有再现,尽管我们在两种情况下都观察到了巨噬细胞丰度的类似增加。这再现了之前的结果,即 CM-α1A-KO + LCA 小鼠的心衰表型要严重得多。在对细胞类型进行校正后,我们的 DEGs 现在突出显示了一组新的基因,它们富集于心脏收缩(P=3.7E-5)和肌动蛋白丝组织(P=6.3E-5)等 GO 术语。结论我们的算法能识别并校正大量 RNAseq 数据集中的细胞类型丰度,为新型基因和通路的研究开辟了新途径,并能更好地了解心脏细胞类型在心血管疾病中的作用。
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