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Gene expression signatures identify paediatric patients with multiple organ dysfunction who require advanced life support in the intensive care unit

机译:基因表达签名鉴定多个器官功能障碍的小儿患者,在重症监护室中需要先进的寿命支持

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Background Multiple organ dysfunction syndrome (MODS) occurs in the setting of a variety of pathologies including infection and trauma. Some patients decompensate and require Veno-Arterial extra corporeal membrane oxygenation (ECMO) as a palliating manoeuvre for recovery of cardiopulmonary function. The molecular mechanisms driving progression from MODS to cardiopulmonary collapse remain incompletely understood, and no biomarkers have been defined to identify those MODS patients at highest risk for progression to requiring ECMO support. Methods Whole blood RNA-seq profiling was performed for 23 MODS patients at three time points during their ICU stay (at diagnosis of MODS, 72 hours after, and 8 days later), as well as four healthy controls undergoing routine sedation. Of the 23 MODS patients, six required ECMO support (ECMO patients). The predictive power of conventional demographic and clinical features was quantified for differentiating the MODS and ECMO patients. We then compared the performance of markers derived from transcriptomic profiling including [1] transcriptomically imputed leukocyte subtype distribution, [2] relevant published gene signatures and [3] a novel differential gene expression signature computed from our data set. The predictive power of our novel gene expression signature was then validated using independently published datasets. Finding None of the five demographic characteristics and 14 clinical features, including The Paediatric Logistic Organ Dysfunction (PELOD) score, could predict deterioration of MODS to ECMO at baseline. From previously published sepsis signatures, only the signatures positively associated with patient's mortality could differentiate ECMO patients from MODS patients, when applied to our transcriptomic dataset (P-value ranges from 0.01 to 0.04, Student's test). Deconvolution of bulk RNA-Seq samples suggested that lower neutrophil counts were associated with increased risk of progression from MODS to ECMO (P-value?=?0.03, logistic regression, OR=2.82 [95% CI 0.63 - 12.45]). A total of 30 genes were differentially expressed between ECMO and MODS patients at baseline (log2 fold change ≥ 1 or ≤ -1 with false discovery rate ≤ 0.01). These genes are involved in protein maintenance and epigenetic-related processes. Further univariate analysis of these 30 genes suggested a signature of seven DE genes associated with ECMO (OR 3.0, P-value ≤ 0.05, logistic regression). Notably, this contains a set of histone marker genes, including H1F0, HIST2H3C, HIST1H2AI, HIST1H4, HIST1H2BL and HIST1H1B , that were highly expressed in ECMO. A risk score derived from expression of these genes differentiated ECMO and MODS patients in our dataset (AUC?=?0.91, 95% CI 0.79-1.00, P-value?=?7e-04, logistic regression) as well as validation dataset (AUC= 0.73, 95% CI 0.53-0.93, P-value?=?2e-02, logistic regression). Interpretation This study demonstrates that transcriptomic features can serve as indicators of severity that could be superior to traditional methods of ascertaining acuity in MODS patients. Analysis of expression of signatures identified in this study could help clinicians in the diagnosis and prognostication of MODS patients after arrival to the Hospital.
机译:背景技术多器官功能障碍综合征(MODS)发生在包括感染和创伤的各种病理学的设置中。一些患者代名解说并要求静脉动脉额外的体膜氧合(ECMO)作为储存心肺功能的持久机动。从ModS到心肺崩溃的进展的分子机制仍然不完全理解,并且没有被定义生物标志物以鉴定患者以获得ECMO支持的进展的最高风险患者。方法治疗全血RNA-SEQ分析,在ICU停留期间为23个MODS患者进行23例患者(在诊断MODS,72小时和8天后),以及常规镇静的四种健康对照。在23例MODS患者中,六种必需的ECMO支持(ECMO患者)。定量了常规人口统计学和临床​​特征的预测力,用于区分MODS和ECMO患者。然后,将来自转录组分析的标记的性能进行了比较,包括[1]转录的单细胞亚型分布,[2]相关公开的基因签名和[3]从我们的数据集计算的新型差异基因表达签名。然后使用独立公开的数据集验证了我们新的基因表达签名的预测力。在包括儿科物流器官功能障碍(PELOD)评分中,找不到五个人口统计特征和14个临床特征,可以预测基线对ECMO的劣化。从先前发表的败血症签名中,只有与患者死亡率正相关的签名可能会使ECMO患者从Mods患者中脱颖而出,当应用于我们的转录组数据集时(P值范围为0.01〜0.04,学生的测试)。散装RNA-SEQ样品的去卷积表明,下嗜中性粒细胞计数与来自MOD的进展的风险增加有关(P值?= 0.03,Logistic回归,或= 2.82 [95%CI 0.63 - 12.45])。在基线的ECMO和MODS患者之间共有30个基因差异表达(LOG2折叠≥1或≤-1,虚假发现率≤0.01)。这些基因参与蛋白质维持和表观遗传相关的过程。对这30个基因的进一步单变量分析表明,与ECMO(或3.0,P值≤0.05,逻辑回归)相关的七种基因的特征。值得注意的是,这包含一组组蛋白标记基因,包括H1F0,HIST2H3C,HIST1H2AI,HIST1H4,HIST1H2BL和HIST1H1B,其在ECMO中高度表达。源自这些基因表达的风险得分在我们的数据集中分化的ECMO和Mods患者(AUC?=?0.91,95%CI 0.79-1.00,P值?=?7E-04,Logistic回归)以及验证数据集( AUC = 0.73,95%CI 0.53-0.93,P值?=?2E-02,Logistic回归)。解释本研究表明转录组特征可以作为严重程度的指标,其可以优于MODS患者的传统方法。本研究中鉴定的签名表达分析可以帮助临床医生在抵达医院后Mods患者的诊断和预后。

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