Prediction of lung overdistension during mechanical ventilation using micro-RNA and gene expression.

IF 2.8 Q2 CRITICAL CARE MEDICINE
Cecilia López-Martínez, Paula Martín-Vicente, Laura Amado-Rodríguez, Inés López-Alonso, Margarita Fernández-Rodríguez, Adrián González-López, Pablo Martínez-Camblor, Juan Gómez, Andrew J Boyle, Cecilia M O'Kane, Daniel F McAuley, James N Tsoporis, Claudia Dos Santos, Guillermo M Albaiceta
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引用次数: 0

Abstract

Background: Overstretching of lung parenchyma may lead to injury, especially during mechanical ventilation. To date, there are no specific biomarkers of lung stretch, but transcriptomic signatures have not been explored. Our objective was to identify stretch-specific signatures using micro-RNA and gene expression.

Methods: Data on micro-RNA and RNA expression in response to stretch in experimental models were systematically pooled. Signatures were identified as those micro-RNAs or genes with differential expression in samples from stretched cells or tissues, and optimized using a greedy algorithm. Expression data was used to calculate transcriptomic scores. The accuracy of these scores was validated in animal models of lung injury, ex vivo mechanically ventilated human lungs, and bronchoalveolar lavage fluid (BALF, n = 7) and in serum samples (n = 31) of mechanically ventilated patients.

Results: Six micro-RNAs (mir-383, mir-877, mir-130b; mir-146b, mir-181b, and mir-26b) were differentially expressed in stretched cell cultures (n = 24). Amongst the genes regulated by these micro-RNAs, a 451-gene signature was identified in vitro (n = 106) and refined using data from animal models (n = 143) to obtain a 6-gene signature (Lims1, Atp6v1c1, Dedd, Bclb7, Ppp1r2 and F3). Transcriptomic scores were significantly higher in samples submitted to stretch or injurious mechanical ventilation. The microRNA and RNA signatures were validated in human tissue, BALF and serum, with areas under the ROC curve between 0.7 and 1 to identify lung overdistention.

Conclusions: Lung cell stretch induces the expression of specific micro-RNA and genes. The potential of these signatures to identify lung stretch in a clinical setting must be explored.

Abstract Image

Abstract Image

Abstract Image

应用微rna和基因表达预测机械通气时肺过胀。
背景:肺实质过度伸展可导致损伤,尤其是在机械通气时。迄今为止,还没有肺拉伸的特异性生物标志物,但转录组特征尚未被探索。我们的目标是使用微rna和基因表达来识别拉伸特异性签名。方法:系统汇总实验模型中微RNA和RNA表达对拉伸的响应数据。将特征识别为拉伸细胞或组织样本中具有差异表达的微rna或基因,并使用贪婪算法进行优化。表达数据用于计算转录组评分。这些评分的准确性在肺损伤动物模型、体外机械通气的人肺、支气管肺泡灌洗液(BALF, n = 7)和机械通气患者的血清样本(n = 31)中得到验证。结果:6种微rna (mir-383, mir-877, mir-130b;Mir-146b、mir-181b和mir-26b)在拉伸细胞培养中差异表达(n = 24)。在这些微rna调控的基因中,体外鉴定了451个基因特征(n = 106),并利用动物模型(n = 143)的数据进行了细化,获得了6个基因特征(Lims1, Atp6v1c1, Dedd, Bclb7, Ppp1r2和F3)。在接受拉伸或损伤性机械通气的样本中,转录组学评分明显更高。在人体组织、BALF和血清中验证microRNA和RNA的特征,ROC曲线下面积在0.7 ~ 1之间,以识别肺过胀。结论:肺细胞拉伸诱导特异性微rna和基因的表达。必须探索这些特征在临床环境中识别肺拉伸的潜力。
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来源期刊
Intensive Care Medicine Experimental
Intensive Care Medicine Experimental CRITICAL CARE MEDICINE-
CiteScore
5.10
自引率
2.90%
发文量
48
审稿时长
13 weeks
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