一种用于检测女性卵巢癌的组合蛋白质组学生物标志物试验

Meredith C Henderson, Michael Silver, Sherri Borman, Q. Tran, Elias Letsios, R. Mulpuri, D. Reese, J. Wolf
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引用次数: 2

摘要

卵巢癌通常是致命的,在一般人群中的发病率很低,强调了在筛查和早期发现方面取得进展的必要性(和挑战)。本研究的目的是设计一个基于血清的生物标志物面板和相应的多变量算法,可用于准确检测卵巢癌。使用CA125、HE4和3种肿瘤相关自身抗体的组合蛋白生物标志物测定(CPBA)的曲线下面积为0.98。CPBA Ov算法是用怀疑患有妇科癌症并计划进行手术的受试者进行训练的。作为外科排除试验,临床表现达到100%的敏感性和83.7%的特异性。虽然样本量(n = 60)是一个限制因素,但CPBA Ov算法的表现优于单独CA-125或卵巢恶性肿瘤风险算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Combinatorial Proteomic Biomarker Assay to Detect Ovarian Cancer in Women
Ovarian cancer is often fatal and incidence in the general population is low, underscoring the necessity (and the challenges) for advancements in screening and early detection. The goal of this study was to design a serum-based biomarker panel and corresponding multivariate algorithm that can be used to accurately detect ovarian cancer. A combinatorial protein biomarker assay (CPBA) that uses CA125, HE4, and 3 tumor-associated autoantibodies resulted in an area under the curve of 0.98. The CPBA Ov algorithm was trained using subjects who were suspected to have gynecological cancer and were scheduled for surgery. As a surgical rule-out test, the clinical performance achieves 100% sensitivity and 83.7% specificity. Although sample size (n = 60) is a limiting factor, the CPBA Ov algorithm performed better than either CA-125 alone or the Risk of Ovarian Malignancy Algorithm.
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