Cancer Epidemiology Research Programme, Catalan Institute of Oncology, IDIBELL, Av Gran Vía 199-203, 08908, L'Hospitalet de Llobregat, Barcelona, Spain; Consortium for Biomedical Research in Epidemiology and Public Health - CIBERESP, Carlos III Institute of Health, Av. De Monforte de Lemos 5, 28029, Madrid, Spain.
Consortium for Biomedical Research in Cancer - CIBERONC, Carlos III Institute of Health, Av. De Monforte de Lemos 5, 28029, Madrid, Spain; Hereditary Cancer Program, Catalan Institute of Oncology, IDIBELL, ONCOBELL Program, L'Hospitalet, Barcelona, Spain.
EBioMedicine. 2023 Aug;94:104716. doi: 10.1016/j.ebiom.2023.104716. Epub 2023 Jul 20.
The incidence of endometrial cancer is increasing worldwide. While delays in diagnosis reduce survival, case molecular misclassification might be associated with under- and over-treatment. The objective of this study was to evaluate genetic alterations to detect and molecularly classify cases of endometrial cancer using non-invasive samples.
Consecutive patients with incident endometrial cancer (N = 139) and controls (N = 107) from a recent Spanish case-control study were included in this analysis. Overall, 339 cervicovaginal samples (out of which 228 were clinician-collected and 111 were self-collected) were analysed using a test based on next-generation sequencing (NGS), which targets 47 genes. Immunohistochemical markers were evaluated in 133 tumour samples. A total of 159 samples were used to train the detection algorithm and 180 samples were used for validation.
Overall, 73% (N = 94 out of 129 clinician-collected samples, and N = 66 out of 90 self-collected samples) of endometrial cancer cases had detectable mutations in clinician-collected and self-collected samples, while the specificity was 80% (79/99) for clinician-collected samples and 90% (19/21) for self-collected samples. The molecular classifications obtained using tumour samples and non-invasive gynaecologic samples in our study showed moderate-to-good agreement. The molecular classification of cases of endometrial cancer into four groups using NGS of both clinician-collected and self-collected cervicovaginal samples yielded significant differences in disease-free survival. The cases with mutations in POLE had an excellent prognosis, whereas the cases with TP53 mutations had the poorest clinical outcome, which is consistent with the data on tumour samples.
This study classified endometrial cancer cases into four molecular groups based on the analysis of cervicovaginal samples that showed significant differences in disease-free survival. The molecular classification of endometrial cancer in non-invasive samples may improve patient care and survival by indicating the early need for aggressive surgery, as well as reducing referrals to highly specialized hospitals in cancers with good prognosis. Validation in independent sets will confirm the potential for molecular classification in non-invasive samples.
This study was funded by a competitive grant from Instituto de Salud Carlos III through the projects PI19/01835, PI23/00790, and FI20/00031, CIBERESP CB06/02/0073 and CIBERONC CB16/12/00231, CB16/12/00234 (Co-funded by European Regional Development Fund. ERDF: A way to build Europe). Samples and data were provided by Biobank HUB-ICO-IDIBELL, integrated into the Spanish Biobank Network, and funded by the Instituto de Salud Carlos III (PT20/00171) and by Xarxa de Bancs de Tumors de Catalunya (XBTC) sponsored by Pla Director d'Oncologia de Catalunya. This work was supported in part by the AECC, Grupos estables (GCTRA18014MATI). It also counts with the support of the Secretariat for Universities and Research of the Department of Business and Knowledge of the Generalitat de Catalunya, and grants to support the activities of research groups 2021SGR01354 and 2021SGR1112.
子宫内膜癌的发病率在全球范围内呈上升趋势。虽然诊断延迟会降低生存率,但病例的分子分类错误可能与治疗不足和过度治疗有关。本研究的目的是评估基因改变,以使用非侵入性样本检测和分子分类子宫内膜癌病例。
本分析纳入了来自最近的西班牙病例对照研究的 139 例子宫内膜癌病例和 107 例对照(N=139)。共分析了 339 例宫颈阴道样本(其中 228 例为临床医生采集,111 例为自我采集),使用基于下一代测序(NGS)的检测方法,该检测方法靶向 47 个基因。在 133 个肿瘤样本中评估了免疫组织化学标志物。总共使用了 159 个样本来训练检测算法,使用 180 个样本进行验证。
总体而言,73%(N=94 例来自临床医生采集的样本,N=66 例来自自我采集的样本)的子宫内膜癌病例在临床医生采集和自我采集的样本中检测到可检测的突变,而特异性为 80%(N=99 例中的 79 例)对于临床医生采集的样本和 90%(N=21 例中的 19 例)对于自我采集的样本。本研究中使用肿瘤样本和非侵入性妇科样本获得的分子分类显示出中等至良好的一致性。使用 NGS 对临床医生采集和自我采集的宫颈阴道样本进行分类,将子宫内膜癌病例分为四个组,在无病生存率方面存在显著差异。POLE 突变的病例具有良好的预后,而 TP53 突变的病例具有最差的临床结局,这与肿瘤样本的数据一致。
本研究基于对宫颈阴道样本的分析,将子宫内膜癌病例分为四个分子组,这些样本在无病生存率方面存在显著差异。非侵入性样本中子宫内膜癌的分子分类可能通过指示早期需要积极手术,以及减少对预后良好的癌症的高专科医院的转诊,从而改善患者的护理和生存率。在独立的队列中进行验证将证实非侵入性样本中分子分类的潜力。
本研究由西班牙卡洛斯三世健康研究所通过项目 PI19/01835、PI23/00790 和 FI20/00031、CIBERESP CB06/02/0073 和 CIBERONC CB16/12/00231、CB16/12/00234(由欧洲区域发展基金共同资助。ERDF:建设欧洲的一种方式)资助。样本和数据由 Biobank HUB-ICO-IDIBELL 提供,该中心纳入了西班牙生物银行网络,并由 Instituto de Salud Carlos III(PT20/00171)和 Xarxa de Bancs de Tumors de Catalunya(XBTC)资助,后者由加泰罗尼亚肿瘤学计划董事会赞助。这项工作得到了西班牙癌症协会(AECC)、稳定团体(GCTRA18014MATI)的支持。它还得到了加泰罗尼亚大区商业和知识部大学和研究秘书处的支持,并获得了 2021SGR01354 和 2021SGR1112 研究小组活动的支持。