Covarrubias-Zambrano Obdulia, Agarwal Deepesh, Lewis-Wambi Joan, Neri Raul, Jewell Andrea, Natarajan Balasubramaniam, Bossmann Stefan H
Department of Cancer Biology, University of Kansas Medical Center, Kansas City, KS 66160, USA.
Department of Electrical and Computer Engineering, Kansas State University, Manhattan, KS 66506, USA.
Cells. 2025 Mar 4;14(5):375. doi: 10.3390/cells14050375.
Ovarian cancer survival depends strongly on the time of diagnosis. Detection at stage 1 must be the goal of liquid biopsies for ovarian cancer detection. We report the development and validation of graphene-based optical nanobiosensors (G-NBSs) that quantify the activities of a panel of proteases, which were selected to provide a crowd response that is specific for ovarian cancer. These G-NBSs consist of few-layer explosion graphene featuring a hydrophilic coating, which is linked to fluorescently labeled highly selective consensus sequences for the proteases of interest, as well as a fluorescent dye. The panel of G-NBSs showed statistically significant differences in protease activities when comparing localized (early-stage) ovarian cancer with both metastatic (late-stage) and healthy control groups. A hierarchical framework integrated with active learning (AL) as a prediction and analysis tool for early-stage detection of ovarian cancer was implemented, which obtained an overall accuracy score of 94.5%, with both a sensitivity and specificity of 0.94.
卵巢癌的生存率在很大程度上取决于诊断时间。在1期进行检测必须成为用于卵巢癌检测的液体活检的目标。我们报告了基于石墨烯的光学纳米生物传感器(G-NBS)的开发和验证,该传感器可量化一组蛋白酶的活性,这些蛋白酶经过挑选以提供针对卵巢癌的特异性群体反应。这些G-NBS由具有亲水涂层的少层膨化石墨烯组成,该亲水涂层与感兴趣的蛋白酶的荧光标记高选择性共有序列以及荧光染料相连。当将局部(早期)卵巢癌与转移性(晚期)和健康对照组进行比较时,G-NBS组在蛋白酶活性方面显示出统计学上的显著差异。实施了一个分层框架,该框架将主动学习(AL)作为卵巢癌早期检测的预测和分析工具,其总体准确率为94.5%,灵敏度和特异性均为0.94。