Department of Lung Disease, Academic Medical Center, University of Amsterdam, Amsterdam, Netherlands.
Centre of Excellence for Translational Research in Asthma & Lung Disease, CSIR-Institute of Genomics and Integrated Biology, Mall Road, Delhi, 110007, India.
J Transl Med. 2017 Dec 22;15(1):262. doi: 10.1186/s12967-017-1365-7.
Asthma is a complex, heterogeneous disorder with similar presenting symptoms but with varying underlying pathologies. Exhaled breath condensate (EBC) is a relatively unexplored matrix which reflects the signatures of respiratory epithelium, but is difficult to normalize for dilution.
Here we explored whether internally normalized global NMR spectrum patterns, combined with machine learning, could be useful for diagnostics or endotype discovery. Nuclear magnetic resonance (NMR) spectroscopy of EBC was performed in 89 asthmatic subjects from a prospective cohort and 20 healthy controls. A random forest classifier was built to differentiate between asthmatics and healthy controls. Clustering of the spectra was done using k-means to identify potential endotypes.
NMR spectra of the EBC could differentiate between asthmatics and healthy controls with 80% sensitivity and 75% specificity. Unsupervised clustering within the asthma group resulted in three clusters (n = 41,11, and 9). Cluster 1 patients had lower long-term exacerbation scores, when compared with other two clusters. Cluster 3 patients had lower blood eosinophils and higher neutrophils, when compared with other two clusters with a strong family history of asthma.
Asthma clusters derived from NMR spectra of EBC show important clinical and chemical differences, suggesting this as a useful tool in asthma endotype-discovery.
哮喘是一种复杂的、异质的疾病,具有相似的表现症状,但潜在的病理机制却各不相同。呼出气冷凝液(EBC)是一个相对未被充分探索的基质,它反映了呼吸上皮的特征,但很难对其稀释程度进行标准化。
在这里,我们探索了内部归一化的全局 NMR 光谱模式,结合机器学习,是否可以用于诊断或表型发现。对来自前瞻性队列的 89 名哮喘患者和 20 名健康对照者的 EBC 进行了核磁共振(NMR)光谱分析。构建随机森林分类器以区分哮喘患者和健康对照者。使用 K-均值聚类对光谱进行聚类,以识别潜在的表型。
EBC 的 NMR 光谱可以区分哮喘患者和健康对照者,其敏感性为 80%,特异性为 75%。在哮喘组内进行无监督聚类得到了三个聚类(n=41、11 和 9)。与其他两个聚类相比,聚类 1 的患者长期加重评分较低。与其他两个聚类相比,聚类 3 的患者血嗜酸性粒细胞较低,中性粒细胞较高,并且有强烈的哮喘家族史。
从 EBC 的 NMR 光谱中得出的哮喘聚类显示出重要的临床和化学差异,表明这是一种用于哮喘表型发现的有用工具。