Division of Cancer Sciences, University of Manchester, School of Medical Sciences, Faculty of Biology, Medicine and Health, 5th Floor Research, St Mary's Hospital, Oxford Road, Manchester, M13 9WL, UK.
Stoller Biomarker Discovery Centre, Institute of Cancer Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester, UK.
Br J Cancer. 2023 May;128(9):1723-1732. doi: 10.1038/s41416-022-02139-0. Epub 2023 Feb 17.
A non-invasive endometrial cancer detection tool that can accurately triage symptomatic women for definitive testing would improve patient care. Urine is an attractive biofluid for cancer detection due to its simplicity and ease of collection. The aim of this study was to identify urine-based proteomic signatures that can discriminate endometrial cancer patients from symptomatic controls.
This was a prospective case-control study of symptomatic post-menopausal women (50 cancers, 54 controls). Voided self-collected urine samples were processed for mass spectrometry and run using sequential window acquisition of all theoretical mass spectra (SWATH-MS). Machine learning techniques were used to identify important discriminatory proteins, which were subsequently combined in multi-marker panels using logistic regression.
The top discriminatory proteins individually showed moderate accuracy (AUC > 0.70) for endometrial cancer detection. However, algorithms combining the most discriminatory proteins performed well with AUCs > 0.90. The best performing diagnostic model was a 10-marker panel combining SPRR1B, CRNN, CALML3, TXN, FABP5, C1RL, MMP9, ECM1, S100A7 and CFI and predicted endometrial cancer with an AUC of 0.92 (0.96-0.97). Urine-based protein signatures showed good accuracy for the detection of early-stage cancers (AUC 0.92 (0.86-0.9)).
A patient-friendly, urine-based test could offer a non-invasive endometrial cancer detection tool in symptomatic women. Validation in a larger independent cohort is warranted.
一种能够准确甄别有症状女性以进行明确检测的非侵入性子宫内膜癌检测工具将改善患者的护理。尿液是一种具有吸引力的用于癌症检测的生物流体,因为它简单且易于采集。本研究旨在确定尿液蛋白质组学特征,以区分子宫内膜癌患者和有症状的对照者。
这是一项针对有症状绝经后女性(50 例癌症,54 例对照)的前瞻性病例对照研究。对自行收集的尿液样本进行处理,用于质谱分析,并使用所有理论质谱的连续窗口采集(SWATH-MS)进行运行。使用机器学习技术来识别重要的鉴别蛋白,随后使用逻辑回归将其组合在多标记物面板中。
单独的最佳鉴别蛋白具有中等的子宫内膜癌检测准确性(AUC>0.70)。然而,组合最佳鉴别蛋白的算法具有良好的性能,AUC>0.90。表现最佳的诊断模型是一个由 10 个标记物组成的组合 SPRR1B、CRNN、CALML3、TXN、FABP5、C1RL、MMP9、ECM1、S100A7 和 CFI 的面板,预测子宫内膜癌的 AUC 为 0.92(0.96-0.97)。基于尿液的蛋白质特征对早期癌症的检测具有良好的准确性(AUC 0.92(0.86-0.9))。
一种方便患者的、基于尿液的检测方法可为有症状的女性提供一种非侵入性的子宫内膜癌检测工具。在更大的独立队列中进行验证是必要的。