Department of Medicine, Surgery and Dentistry, Scuola Medica Salernitana, University of Salerno, Baronissi, Salerno, Italy.
Theoreo, Montecorvino Pugliano, Salerno, Italy.
JAMA Netw Open. 2020 Sep 1;3(9):e2018327. doi: 10.1001/jamanetworkopen.2020.18327.
Endometrial carcinoma (EC) is the most commonly diagnosed gynecologic cancer. Its early detection is advisable because 20% of women have advanced disease at the time of diagnosis.
To clinically validate a metabolomics-based classification algorithm as a screening test for EC.
DESIGN, SETTING, AND PARTICIPANTS: This diagnostic study enrolled 2 cohorts. A multicenter prospective cohort, with 50 cases (postmenopausal women with EC; International Federation of Gynecology and Obstetrics stage I-III and grade G1-G3) and 70 controls (no EC but matched on age, years from menopause, tobacco use, and comorbidities), was used to train multiple classification models. The accuracy of each trained model was then used as a statistical weight to produce an ensemble machine learning algorithm for testing, which was validated with a subsequent prospective cohort of 1430 postmenopausal women. The study was conducted at the San Giovanni di Dio e Ruggi d'Aragona University Hospital of Salerno (Italy) and Lega Italiana per la Lotta contro i Tumori clinic in Avellino (Italy). Data collection was conducted from January 2018 to February 2019, and analysis was conducted from January to March 2019.
The presence or absence of EC based on evaluation of the blood metabolome. Metabolites were extracted from dried blood samples from all participants and analyzed by gas chromatography-mass spectrometry. A confusion matrix was used to summarize test results. Performance indices included sensitivity, specificity, positive and negative predictive values, positive and negative likelihood ratios, and accuracy. Confirmation or exclusion of EC in women with a positive test result was by means of hysteroscopy. Participants with negative results were followed up 1 year after enrollment to investigate the appearance of EC signs.
The study population consisted of 1550 postmenopausal women. The mean (SD) age was 68.2 (11.7) years for participants with no EC in the training cohort, 69.4 (13.8) years for women with EC in the training cohort, and 59.7 (7.7) years for women in the validation cohort. Application of the ensemble machine learning to the validation cohort resulted in 16 true-positives, 2 false-positives, and 0 false-negatives, and it correctly classified more than 99% of samples. Disease prevalence was 1.12% (16 of 1430).
In this study, dried blood metabolomic profile was used to assess the presence or absence of EC in postmenopausal women not receiving hormonal therapy with greater than 99% accuracy.
子宫内膜癌(EC)是最常见的妇科癌症。建议早期发现,因为 20%的女性在诊断时已处于疾病晚期。
通过临床试验验证基于代谢组学的分类算法作为 EC 的筛查试验。
设计、地点和参与者:本诊断研究纳入了 2 个队列。一个多中心前瞻性队列,包括 50 例(绝经后患有 EC 的患者;国际妇产科联合会分期 I-III 期和 G1-G3 级)和 70 例对照(无 EC,但年龄、绝经后年限、吸烟和合并症相匹配),用于训练多个分类模型。然后,将每个训练模型的准确性用作统计权重,以生成用于测试的集成机器学习算法,并使用随后的 1430 名绝经后妇女的前瞻性队列进行验证。该研究在意大利萨勒诺的圣乔瓦尼·迪·迪奥和鲁吉·德拉戈纳大学医院和意大利阿韦利诺的意大利抗癌联盟诊所进行。数据收集于 2018 年 1 月至 2019 年 2 月进行,分析于 2019 年 1 月至 3 月进行。
根据血液代谢组学评估,确定是否存在 EC。从所有参与者的干血样中提取代谢物,并通过气相色谱-质谱法进行分析。混淆矩阵用于总结测试结果。性能指标包括敏感性、特异性、阳性和阴性预测值、阳性和阴性似然比以及准确性。对检测结果为阳性的女性进行宫腔镜检查以确认或排除 EC。检测结果为阴性的参与者在入组后 1 年进行随访,以调查是否出现 EC 症状。
该研究人群包括 1550 名绝经后妇女。在训练队列中,无 EC 的参与者的平均(SD)年龄为 68.2(11.7)岁,训练队列中患有 EC 的女性为 69.4(13.8)岁,验证队列中的女性为 59.7(7.7)岁。将集成机器学习应用于验证队列,结果为 16 例真阳性、2 例假阳性和 0 例假阴性,正确分类了超过 99%的样本。疾病患病率为 1.12%(16/1430)。
在这项研究中,使用干血代谢组学谱以 99%以上的准确率评估未接受激素治疗的绝经后妇女是否存在 EC。