Wang Xinmei, Lv Han, Men Jinxin, Yi Lishuo, Zhou Xiaoyan, Bi Yingna, Hai Xin, Bi Sai
College of Chemistry and Chemical Engineering, Key Laboratory of Shandong Provincial Universities for Functional Molecules and Materials, Qingdao University, Qingdao 266071, P. R. China.
Department of Clinical Laboratory, The Affiliated Hospital of Qingdao University, Qingdao, Shandong 266000, P. R. China.
Anal Chem. 2025 Jun 24;97(24):12708-12718. doi: 10.1021/acs.analchem.5c01422. Epub 2025 Jun 12.
Circulating tumor cells (CTCs) are promising biomarkers for cancer diagnosis, while detecting CTCs in clinical samples is still challenging due to the scarcity and heterogeneity of CTCs. Herein, a triple-mode sensing platform based on an antifouling capture and dual-targeting recognition strategy is presented for sensitive detection of human cervical cancer cells (HeLa). First, the target CTCs can be specifically captured using antifouling magnetic nanoparticles (AMNPs) encoded with AS1411 aptamers (AMNPs-Apt), which not only enhance the capture efficiency for CTCs but also reduce the nonspecific adsorption of free proteins. To further improve the detection specificity, a dual-targeting recognition system is constructed in which the aptamer MUC1 (Apt) and cholesteryl-modified helper DNA (chol-Helper) can recognize MUC1 proteins and membrane phospholipids, respectively. The proximity hybridization of Apt and chol-Helper triggers the structure switching of chol-Helper to release the initiator for the hybridization chain reaction (HCR), in which G-quadruplex polymer chains are generated for signal amplification. By virtue of biocatalysis of G-quadruplex/hemin DNAzyme, a triple-mode sensing platform is constructed using absorbance/colorimetric/photothermal signal readout, exhibiting an ultrahigh sensitivity as low as 5 cells/mL. Moreover, taking advantage of the triple-mode readout as sensing units, a sensor array is established combined with a machine learning algorithm to distinguish five kinds of CTCs, which holds significant potential for early diagnosis and classification of cancers.
循环肿瘤细胞(CTCs)是很有前景的癌症诊断生物标志物,然而由于CTCs的稀缺性和异质性,在临床样本中检测CTCs仍然具有挑战性。在此,本文提出了一种基于抗污捕获和双靶向识别策略的三模式传感平台,用于灵敏检测人宫颈癌细胞(HeLa)。首先,可使用编码有AS1411适体的抗污磁性纳米颗粒(AMNPs)特异性捕获目标CTCs(AMNPs-Apt),这不仅提高了对CTCs的捕获效率,还减少了游离蛋白质的非特异性吸附。为进一步提高检测特异性,构建了一种双靶向识别系统,其中适体MUC1(Apt)和胆固醇修饰的辅助DNA(chol-Helper)可分别识别MUC1蛋白和膜磷脂。Apt与chol-Helper的邻近杂交触发chol-Helper的结构转换,释放用于杂交链式反应(HCR)的引发剂,其中生成G-四链体聚合物链用于信号放大。借助G-四链体/血红素DNAzyme的生物催化作用,利用吸光度/比色/光热信号读出构建了三模式传感平台,其灵敏度高达低至5个细胞/毫升。此外,利用三模式读出作为传感单元,结合机器学习算法建立了一个传感器阵列,用于区分五种CTCs,这在癌症的早期诊断和分类方面具有巨大潜力。