Department of Chemistry, University of Pittsburgh, Pittsburgh, Pennsylvania 15260, United States.
Departments of Microbiology and Cell Biology, and Animal and Range Sciences, Montana State University, Bozeman, Montana 59718, United States.
Anal Chem. 2022 Mar 8;94(9):3849-3857. doi: 10.1021/acs.analchem.1c04755. Epub 2022 Feb 22.
The ability to rapidly and reliably screen for bacterial vaginosis (BV) during pregnancy is of great significance for maternal health and pregnancy outcomes. In this proof-of-concept study, we demonstrated the potential of carbon nanotube field-effect transistors (NTFET) in the rapid diagnostics of BV with the sensing of BV-related factors such as pH and biogenic amines. The fabricated sensors showed good linearity to pH changes with a linear correlation coefficient of 0.99. The pH sensing performance was stable after more than one month of sensor storage. In addition, the sensor was able to classify BV-related biogenic amine-negative/positive samples with machine learning, utilizing different test strategies and algorithms, including linear discriminant analysis (LDA), support vector machine (SVM), and principal component analysis (PCA). The biogenic amine sample status could be well classified using a soft-margin SVM model with a validation accuracy of 87.5%. The accuracy could be further improved using a gold gate electrode for measurement, with accuracy higher than 90% in both LDA and SVM models. We also explored the sensing mechanisms and found that the change in NTFET off current was crucial for classification. The fabricated sensors successfully detect BV-related factors, demonstrating the competitive advantage of NTFET for point-of-care diagnostics of BV.
快速、可靠地筛查妊娠期细菌性阴道病(BV)对母婴健康和妊娠结局具有重要意义。在这项概念验证研究中,我们展示了碳纳米管场效应晶体管(NTFET)在快速诊断 BV 方面的潜力,通过检测与 BV 相关的因素,如 pH 值和生物胺。所制备的传感器对 pH 值变化具有良好的线性关系,线性相关系数为 0.99。传感器在储存一个多月后,其 pH 值传感性能仍保持稳定。此外,该传感器能够利用不同的测试策略和算法,包括线性判别分析(LDA)、支持向量机(SVM)和主成分分析(PCA),对与 BV 相关的生物胺阴性/阳性样本进行分类。使用软间隔 SVM 模型对生物胺样本状态进行分类,验证准确率为 87.5%。使用金栅电极进行测量可以进一步提高准确性,LDA 和 SVM 模型的准确率均高于 90%。我们还探索了传感机制,发现 NTFET 关电流的变化对分类至关重要。所制备的传感器成功检测到与 BV 相关的因素,证明了 NTFET 在 BV 即时诊断方面具有竞争优势。