Pediatric Pulmonary Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, and.
Cystic Fibrosis Center, University of Pittsburgh, Pittsburgh, Pennsylvania; and.
Am J Respir Cell Mol Biol. 2024 Dec;71(6):730-739. doi: 10.1165/rcmb.2024-0103OC.
Elexacaftor/tezacaftor/ivacaftor (ETI) has had a substantial positive impact for people living with cystic fibrosis (pwCF). However, there can be substantial variability in efficacy, and we lack adequate biomarkers to predict individual response. We thus aimed to identify transcriptomic profiles in nasal respiratory epithelium that predict clinical response to ETI treatment. We obtained nasal epithelial samples from pwCF before ETI initiation and performed a transcriptome-wide analysis of baseline gene expression to predict changes in forced expiratory volume in 1 second (ΔFEV), year's best FEV (ΔybFEV), and body mass index (ΔBMI). Using the top differentially expressed genes, we generated transcriptomic risk scores (TRSs) and evaluated their predictive performance. The study included 40 pwCF ≥6 years of age (mean, 27.7 [SD, 15.1] years; 40% female). After ETI initiation, FEV improved by ≥5% in 22 (61.1%) participants, and ybFEV improved by ≥5% in 19 (50%). TRSs were constructed using top overexpressed and underexpressed genes for each outcome. Adding the ΔFEV TRS to a model with age, sex, and baseline FEV increased the area under the receiver operating characteristic curve (AUC) from 0.41 to 0.88, the ΔybFEV TRS increased the AUC from 0.51 to 0.88, and the ΔBMI TRS increased the AUC from 0.46 to 0.92. Average accuracy was thus ∼85% in predicting the response to the three outcomes. Results were similar in models further adjusted for F508del zygosity and previous CFTR modulator use. In conclusion, we identified nasal epithelial transcriptomic profiles that help accurately predict changes in FEV and BMI with ETI treatment. These novel TRSs could serve as predictive biomarkers for clinical response to modulator treatment in pwCF.
依伐卡托/泰它卡托/艾美卡替(ETI)对囊性纤维化(CF)患者的治疗有显著的积极影响。然而,疗效可能存在显著的差异,我们缺乏足够的生物标志物来预测个体的反应。因此,我们旨在确定预测 ETI 治疗临床反应的鼻腔呼吸道上皮转录组特征。我们在 ETI 治疗开始前从 CF 患者中获得了鼻腔上皮样本,并对基线基因表达进行了全转录组分析,以预测 1 秒用力呼气量(FEV)的变化(ΔFEV)、年度最佳 FEV(ΔybFEV)和体重指数(BMI)的变化。使用差异表达基因的顶部,我们生成了转录组风险评分(TRS)并评估了它们的预测性能。该研究包括 40 名年龄≥6 岁的 CF 患者(平均年龄 27.7 [标准差 15.1]岁;40%为女性)。在 ETI 治疗开始后,22 名(61.1%)参与者的 FEV 增加≥5%,19 名(50%)参与者的 ybFEV 增加≥5%。TRS 是使用每个结果的过表达和低表达基因的顶部构建的。将ΔFEV TRS 添加到包含年龄、性别和基线 FEV 的模型中,将曲线下面积(AUC)从 0.41 增加到 0.88,ΔybFEV TRS 将 AUC 从 0.51 增加到 0.88,ΔBMI TRS 将 AUC 从 0.46 增加到 0.92。因此,平均准确率约为 85%,可预测三种结果的反应。在进一步调整 F508del 纯合子和先前 CFTR 调节剂使用的模型中,结果相似。总之,我们确定了鼻腔上皮转录组特征,可帮助准确预测 ETI 治疗后 FEV 和 BMI 的变化。这些新的 TRS 可作为 CF 患者对调节剂治疗临床反应的预测生物标志物。