Department of Gynecology, Clinical Oncology School of Fujian Medical University, Fujian Cancer Hospital (Fujian Branch of Fudan University Shanghai Cancer Center), Fuzhou, China.
Department of Pathology, Clinical Oncology School of Fujian Medical University, Fujian Cancer Hospital (Fujian Branch of Fudan University Shanghai Cancer Center), Fuzhou, China.
BMC Med. 2024 Jul 29;22(1):310. doi: 10.1186/s12916-024-03531-8.
Uterine corpus endometrial carcinoma (UCEC) is a prevalent gynecologic malignancy with a favorable prognosis if detected early. However, there is a lack of accurate and reliable early detection tests for UCEC. This study aims to develop a precise and non-invasive diagnostic method for UCEC using circulating cell-free DNA (cfDNA) fragmentomics.
Peripheral blood samples were collected from all participants, and cfDNA was extracted for analysis. Low-coverage whole-genome sequencing was performed to obtain cfDNA fragmentomics data. A robust machine learning model was developed using these features to differentiate between UCEC and healthy conditions.
The cfDNA fragmentomics-based model showed high predictive power for UCEC detection in training (n = 133; AUC 0.991) and validation cohorts (n = 89; AUC 0.994). The model manifested a specificity of 95.5% and a sensitivity of 98.5% in the training cohort, and a specificity of 95.5% and a sensitivity of 97.8% in the validation cohort. Physiological variables and preanalytical procedures had no significant impact on the classifier's outcomes. In terms of clinical benefit, our model would identify 99% of Chinese UCEC patients at stage I, compared to 21% under standard care, potentially raising the 5-year survival rate from 84 to 95%.
This study presents a novel approach for the early detection of UCEC using cfDNA fragmentomics and machine learning showing promising sensitivity and specificity. Using this model in clinical practice could significantly improve UCEC management and control, enabling early intervention and better patient outcomes. Further optimization and validation of this approach are warranted to establish its clinical utility.
子宫体子宫内膜癌(UCEC)是一种常见的妇科恶性肿瘤,如果早期发现,预后良好。然而,目前缺乏针对 UCEC 的准确可靠的早期检测方法。本研究旨在利用循环游离 DNA(cfDNA)片段组学开发一种针对 UCEC 的精确、非侵入性诊断方法。
收集所有参与者的外周血样本,并提取 cfDNA 进行分析。进行低覆盖全基因组测序以获得 cfDNA 片段组学数据。使用这些特征开发稳健的机器学习模型,以区分 UCEC 和健康状况。
基于 cfDNA 片段组学的模型在训练队列(n=133;AUC 0.991)和验证队列(n=89;AUC 0.994)中对 UCEC 检测具有很高的预测能力。该模型在训练队列中的特异性为 95.5%,敏感性为 98.5%,在验证队列中的特异性为 95.5%,敏感性为 97.8%。生理变量和预分析过程对分类器的结果没有显著影响。就临床获益而言,与标准护理相比,我们的模型将在 I 期识别 99%的中国 UCEC 患者,从而将 5 年生存率从 84%提高到 95%。
本研究提出了一种使用 cfDNA 片段组学和机器学习进行 UCEC 早期检测的新方法,显示出有希望的敏感性和特异性。在临床实践中使用该模型可以显著改善 UCEC 的管理和控制,实现早期干预和更好的患者结局。需要进一步优化和验证这种方法,以确定其临床实用性。