Fehlmann Tobias, Kahraman Mustafa, Ludwig Nicole, Backes Christina, Galata Valentina, Keller Verena, Geffers Lars, Mercaldo Nathaniel, Hornung Daniela, Weis Tanja, Kayvanpour Elham, Abu-Halima Masood, Deuschle Christian, Schulte Claudia, Suenkel Ulrike, von Thaler Anna-Katharina, Maetzler Walter, Herr Christian, Fähndrich Sebastian, Vogelmeier Claus, Guimaraes Pedro, Hecksteden Anne, Meyer Tim, Metzger Florian, Diener Caroline, Deutscher Stephanie, Abdul-Khaliq Hashim, Stehle Ingo, Haeusler Sebastian, Meiser Andreas, Groesdonk Heinrich V, Volk Thomas, Lenhof Hans-Peter, Katus Hugo, Balling Rudi, Meder Benjamin, Kruger Rejko, Huwer Hanno, Bals Robert, Meese Eckart, Keller Andreas
Chair for Clinical Bioinformatics, Saarland University, Saarbrücken, Germany.
Junior Research Group of Human Genetics, Saarland University, Homburg, Germany.
JAMA Oncol. 2020 May 1;6(5):714-723. doi: 10.1001/jamaoncol.2020.0001.
The overall low survival rate of patients with lung cancer calls for improved detection tools to enable better treatment options and improved patient outcomes. Multivariable molecular signatures, such as blood-borne microRNA (miRNA) signatures, may have high rates of sensitivity and specificity but require additional studies with large cohorts and standardized measurements to confirm the generalizability of miRNA signatures.
To investigate the use of blood-borne miRNAs as potential circulating markers for detecting lung cancer in an extended cohort of symptomatic patients and control participants.
DESIGN, SETTING, AND PARTICIPANTS: This multicenter, cohort study included patients from case-control and cohort studies (TREND and COSYCONET) with 3102 patients being enrolled by convenience sampling between March 3, 2009, and March 19, 2018. For the cohort study TREND, population sampling was performed. Clinical diagnoses were obtained for 3046 patients (606 patients with non-small cell and small cell lung cancer, 593 patients with nontumor lung diseases, 883 patients with diseases not affecting the lung, and 964 unaffected control participants). No samples were removed because of experimental issues. The collected data were analyzed between April 2018 and November 2019.
Sensitivity and specificity of liquid biopsy using miRNA signatures for detection of lung cancer.
A total of 3102 patients with a mean (SD) age of 61.1 (16.2) years were enrolled. Data on the sex of the participants were available for 2856 participants; 1727 (60.5%) were men. Genome-wide miRNA profiles of blood samples from 3046 individuals were evaluated by machine-learning methods. Three classification scenarios were investigated by splitting the samples equally into training and validation sets. First, a 15-miRNA signature from the training set was used to distinguish patients diagnosed with lung cancer from all other individuals in the validation set with an accuracy of 91.4% (95% CI, 91.0%-91.9%), a sensitivity of 82.8% (95% CI, 81.5%-84.1%), and a specificity of 93.5% (95% CI, 93.2%-93.8%). Second, a 14-miRNA signature from the training set was used to distinguish patients with lung cancer from patients with nontumor lung diseases in the validation set with an accuracy of 92.5% (95% CI, 92.1%-92.9%), sensitivity of 96.4% (95% CI, 95.9%-96.9%), and specificity of 88.6% (95% CI, 88.1%-89.2%). Third, a 14-miRNA signature from the training set was used to distinguish patients with early-stage lung cancer from all individuals without lung cancer in the validation set with an accuracy of 95.9% (95% CI, 95.7%-96.2%), sensitivity of 76.3% (95% CI, 74.5%-78.0%), and specificity of 97.5% (95% CI, 97.2%-97.7%).
The findings of the study suggest that the identified patterns of miRNAs may be used as a component of a minimally invasive lung cancer test, complementing imaging, sputum cytology, and biopsy tests.
肺癌患者总体生存率较低,因此需要改进检测工具,以提供更好的治疗选择并改善患者预后。多变量分子特征,如血源性微小RNA(miRNA)特征,可能具有较高的敏感性和特异性,但需要在更大的队列中进行更多研究,并采用标准化测量方法来证实miRNA特征的通用性。
在有症状患者和对照参与者的扩大队列中,研究血源性miRNA作为检测肺癌的潜在循环标志物的应用。
设计、地点和参与者:这项多中心队列研究纳入了病例对照研究和队列研究(TREND和COSYCONET)中的患者,2009年3月3日至2018年3月19日期间通过便利抽样纳入了3102名患者。对于队列研究TREND,进行了人群抽样。获得了3046名患者的临床诊断结果(606例非小细胞肺癌和小细胞肺癌患者、593例非肿瘤性肺病患者、883例不影响肺部的疾病患者和964名未受影响的对照参与者)。没有因实验问题而剔除样本。收集的数据于2018年4月至2019年11月期间进行分析。
使用miRNA特征进行液体活检检测肺癌的敏感性和特异性。
共纳入3102例患者,平均(标准差)年龄为61.1(16.2)岁。有2856名参与者的性别数据;其中1727名(60.5%)为男性。通过机器学习方法评估了3046名个体血样的全基因组miRNA谱。通过将样本平均分为训练集和验证集,研究了三种分类情况。首先,使用训练集中的一个15-miRNA特征,将验证集中诊断为肺癌的患者与所有其他个体区分开来,准确率为91.4%(95%CI,91.0%-91.9%),敏感性为82.8%(95%CI,81.5%-84.1%),特异性为93.5%(95%CI,93.2%-93.8%)。其次,使用训练集中的一个14-miRNA特征,将验证集中肺癌患者与非肿瘤性肺病患者区分开来,准确率为92.5%(95%CI,92.1%-92.9%),敏感性为96.4%(95%CI,95.9%-96.9%),特异性为88.6%(95%CI,88.1%-89.2%)。第三,使用训练集中的一个14-miRNA特征,将验证集中早期肺癌患者与所有无肺癌个体区分开来,准确率为95.9%(95%CI,95.7%-96.2%),敏感性为76.3%(95%CI,74.5%-78.0%),特异性为97.5%(95%CI,97.2%-97.7%)。
该研究结果表明,所确定的miRNA模式可作为微创肺癌检测的一个组成部分,补充影像学、痰细胞学和活检检测。