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在微机电系统设备中使用基于抗体的平台识别和捕获乳腺癌细胞。

Recognition and capture of breast cancer cells using an antibody-based platform in a microelectromechanical systems device.

作者信息

Du Z, Cheng K H, Vaughn M W, Collie N L, Gollahon L S

机构信息

Department of Biological Sciences, Texas Tech University, Texas, USA.

出版信息

Biomed Microdevices. 2007 Feb;9(1):35-42. doi: 10.1007/s10544-006-9010-x.

Abstract

Cancer is one of the most common diseases afflicting humans. The use of biomarkers specific for tumor cells has facilitated their identification. However, technology has not kept pace with the field of molecular biomarkers, leaving their potential unrealized. Here, we demonstrate the efficacy of recognizing and capturing cancer cells using an antibody-based, on-chip, microfluidic device. A cancer cell capture biochip consisting of microchannels of size 2.0 cm long and 500 microm wide and deep, was etched onto Polydimethylsiloxane. Epithelial membrane antigen (EMA) and Epithelial growth factor receptor (EGFR) were coated on the inner surface of the microchannels. The overall chip measured 2.0 cm x 1.5 cm x 0.5 cm. Normal and tumor breast cells in a phosphate buffered saline (PBS) suspension were flowed through the biochip channels at a rate of 15 microL/min. Breast cancer cells were preferentially captured and identified while most of normal cells passed through. The capture rates for tumor and normal cells were found to be >30% and <5%, respectively. This preliminary cancer cell capture biochip design supports our initial effort of moving a BioMEMS device, from the bench top to the clinic.

摘要

癌症是困扰人类的最常见疾病之一。使用针对肿瘤细胞的生物标志物有助于对其进行识别。然而,技术发展未能跟上分子生物标志物领域的步伐,导致其潜力未得到充分发挥。在此,我们展示了一种基于抗体的片上微流控装置识别和捕获癌细胞的功效。一种癌细胞捕获生物芯片,由长2.0厘米、宽和深均为500微米的微通道组成,被蚀刻在聚二甲基硅氧烷上。上皮膜抗原(EMA)和表皮生长因子受体(EGFR)被包被在微通道的内表面。整个芯片尺寸为2.0厘米×1.5厘米×0.5厘米。磷酸盐缓冲盐水(PBS)悬浮液中的正常和肿瘤乳腺细胞以15微升/分钟的流速流过生物芯片通道。乳腺癌细胞被优先捕获和识别,而大多数正常细胞则通过。发现肿瘤细胞和正常细胞的捕获率分别>30%和<5%。这种初步的癌细胞捕获生物芯片设计支持了我们将生物微机电系统装置从实验室台面推向临床的初步努力。

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