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首页> 外文期刊>American Journal of Physiology >Department of Experimental Medical Sciences, Lund University, Lund, Sweden
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Department of Experimental Medical Sciences, Lund University, Lund, Sweden

机译:瑞典隆德大学实验医学科学系

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Precision-cut lung slices (PCLS) have gained increasing interest as a model to study lung biology/disease and screening novel therapeutics. In particular, PCLS derived from human tissue can better recapitulate some aspects of lung biology/disease as compared with animal models. Several experimental readouts have been established for use with PCLS, but obtaining high-yield and -quality RNA for downstream analysis has remained challenging. This is particularly problematic for utilizing the power of next-generation sequencing techniques, such as RNA-sequencing (RNA-seq), for nonbiased and high-throughput analysis of PCLS human cohorts. In the current study, we present a novel approach for isolating high-quality RNA from a small amount of tissue, including diseased human tissue, such as idiopathic pulmonary fibrosis. We show that the RNA isolated using this method has sufficient quality for RT-qPCR and RNA-seq analysis. Furthermore, the RNA-seq data from human PCLS could be used in several established computational pipelines, including deconvolution of bulk RNA-seq data using publicly available single-cell RNA-seq data. Deconvoiution using Bisque revealed a diversity of cell populations in human PCLS, including several immune cell populations, which correlated with cell populations known to be present and aberrant in human disease.
机译:精确切割肺切片(PCLS)作为研究肺生物学/疾病和筛选新疗法的模型越来越受到关注。尤其是,与动物模型相比,来自人体组织的PCL能够更好地再现肺生物学/疾病的某些方面。已经建立了几个用于PCLS的实验读数,但是获得用于下游分析的高产量和高质量RNA仍然具有挑战性。这对于利用下一代测序技术(如RNA测序(RNA-seq))对PCLS人群进行无偏见和高通量分析来说尤其成问题。在目前的研究中,我们提出了一种从少量组织中分离高质量RNA的新方法,包括患病的人类组织,如特发性肺纤维化。我们表明,使用该方法分离的RNA具有足够的质量,可用于RT-qPCR和RNA-seq分析。此外,来自人类PCL的RNA-seq数据可以用于几个已建立的计算管道,包括使用公开的单细胞RNA-seq数据对大量RNA-seq数据进行反褶积。使用Bisque进行去VOIUTIONG显示,人类PCL中存在多种细胞群,包括几个免疫细胞群,它们与已知存在于人类疾病中且异常的细胞群相关。

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