Department of Obstetrics, Gynecology, and Reproductive Sciences, Yale School of Medicine, New Haven, CT.
Department of Obstetrics, Gynecology, and Reproductive Sciences, Yale School of Medicine, New Haven, CT.
Am J Obstet Gynecol. 2020 Oct;223(4):557.e1-557.e11. doi: 10.1016/j.ajog.2020.02.050. Epub 2020 Mar 9.
Endometriosis, a chronic disease that afflicts millions of women worldwide, has traditionally been diagnosed by laparoscopic surgery. This diagnostic barrier delays identification and treatment by years, resulting in prolonged pain and disease progression. Development of a noninvasive diagnostic test could significantly improve timely disease detection. We tested the feasibility of serum microRNAs as diagnostic biomarkers of endometriosis in women with gynecologic disease symptoms.
The objective of the study was to validate the use of a microRNA panel as a noninvasive diagnostic method for detecting endometriosis.
This was a prospective study evaluating subjects with a clinical indication for gynecological surgery in an academic medical center. Serum samples were collected prior to surgery from 100 subjects. Women were selected based on the presence of symptoms, and laparoscopy was performed to determine the presence or absence of endometriosis. The control group was categorized based on absence of visual disease at the time of surgery. Circulating miRNAs, miR-125b-5p, miR-150-5p, miR-342-3p, miR-451a, miR-3613-5p, and let-7b, were measured in serum by quantitative real-time polymerase chain reaction in a blinded fashion without knowledge of disease status. Receiver-operating characteristic analysis was performed on individual microRNAs as well as combinations of microRNAs. An algorithm combining the expression values of these microRNAs, built using machine learning with a random forest classifier, was generated to predict the presence or absence of endometriosis on operative findings. This algorithm was then tested in an independent data set of 48 previously identified subjects not included in the training set (24 endometriosis and 24 controls) to validate its diagnostic performance.
The mean age of women in the study population was 34.1 and 36.9 years for the endometriosis and control groups, respectively. Control group subjects displayed varying pathologies, with leiomyoma occurring the most often (n = 39). Subjects with endometriosis had significantly higher expression levels of 4 serum microRNAs: miR-125b-5p, miR-150-5p, miR-342-3p, and miR-451a. Two serum microRNAs showed significantly lower levels in the endometriosis group: miR-3613-5p and let-7b. Individual microRNAs had receiver-operating characteristic areas under the curve ranging from 0.68 to 0.92. A classifier combining these microRNAs yielded an area under the curve of 0.94 when validated in the independent set of subjects not included in the training set. Analysis of the expression levels of each microRNA based on revised American Society of Reproductive Medicine staging revealed that all microRNAs could distinguish stage I/II from control and stage III/IV from control but that the difference between stage I/II and stage III/IV was not significant. Subgroup analysis revealed that neither phase of the menstrual cycle or use of hormonal medication had a significant impact on the expression levels in the microRNAs used in our algorithm.
This is the first report showing that microRNA biomarkers can reliably differentiate between endometriosis and other gynecological pathologies with an area under the curve >0.9 across 2 independent studies. We validated the performance of an algorithm based on previously identified microRNA biomarkers, demonstrating their potential to detect endometriosis in a clinical setting, allowing earlier identification and treatment. The ability to diagnose endometriosis noninvasively could reduce the time to diagnosis, surgical risk, years of discomfort, disease progression, associated comorbidities, and health care costs.
子宫内膜异位症是一种影响全球数百万女性的慢性疾病,传统上通过腹腔镜手术进行诊断。这种诊断障碍导致疾病的识别和治疗延迟数年,导致疼痛加剧和疾病进展。开发一种非侵入性的诊断测试可以显著提高疾病的及时检测率。我们测试了血清 microRNAs 作为妇科疾病症状女性子宫内膜异位症诊断生物标志物的可行性。
本研究的目的是验证 microRNA 谱作为检测子宫内膜异位症的非侵入性诊断方法的用途。
这是一项在学术医疗中心对有妇科手术临床指征的受试者进行的前瞻性研究。在手术前从 100 名受试者中采集血清样本。根据症状选择女性,并进行腹腔镜检查以确定是否存在子宫内膜异位症。对照组根据手术时无明显疾病的情况进行分类。通过定量实时聚合酶链反应以盲法在血清中测量 microRNAs,miR-125b-5p、miR-150-5p、miR-342-3p、miR-451a、miR-3613-5p 和 let-7b,而不知道疾病状态。对个体 microRNAs 以及 microRNAs 的组合进行接收者操作特征分析。使用机器学习和随机森林分类器构建的组合这些 microRNAs 的表达值的算法用于预测手术结果中是否存在子宫内膜异位症。然后在另一个独立的先前确定的 48 名受试者数据集(24 名子宫内膜异位症和 24 名对照)中测试该算法,以验证其诊断性能。
研究人群中女性的平均年龄分别为子宫内膜异位症组 34.1 岁和对照组 36.9 岁。对照组受试者显示出不同的病理变化,最常见的是子宫肌瘤(n=39)。子宫内膜异位症组的 4 种血清 microRNAs 表达水平显著升高:miR-125b-5p、miR-150-5p、miR-342-3p 和 miR-451a。子宫内膜异位症组的 2 种血清 microRNAs 水平显著降低:miR-3613-5p 和 let-7b。个体 microRNAs 的接收者操作特征曲线下面积范围为 0.68 至 0.92。当在未包含在训练集中的独立受试者组中验证时,组合这些 microRNAs 的分类器的曲线下面积为 0.94。基于修订后的美国生殖医学协会分期对每个 microRNA 的表达水平进行分析表明,所有 microRNAs 都可以区分 I/II 期与对照组,III/IV 期与对照组,但 I/II 期与 III/IV 期之间的差异不显著。亚组分析显示,月经周期的任何阶段或激素药物的使用都没有显著影响我们算法中使用的 microRNAs 的表达水平。
这是第一个显示 microRNA 生物标志物可以可靠地区分子宫内膜异位症和其他妇科疾病的报告,在两项独立研究中曲线下面积均>0.9。我们验证了基于先前确定的 microRNA 生物标志物的算法的性能,证明了它们在临床环境中检测子宫内膜异位症的潜力,可以更早地识别和治疗疾病。非侵入性诊断子宫内膜异位症的能力可以减少诊断时间、手术风险、多年的不适、疾病进展、相关合并症和医疗保健费用。