School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA 30332, United States.
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA 30332, United States; Petit Institute for Bioengineering and Biosciences, Georgia Institute of Technology, Atlanta, GA 30332, United States; Institute of Electronics and Nanotechnology, Georgia Institute of Technology, Atlanta, GA 30332, United States.
Biosens Bioelectron. 2018 Nov 30;120:30-39. doi: 10.1016/j.bios.2018.07.075. Epub 2018 Aug 1.
Microfluidic devices can discriminate particles based on their properties and map them into different locations on the device. For distributed detection of these particles, we have recently introduced a multiplexed sensing technique called Microfluidic CODES, which combines code division multiple access with Coulter sensing. Our technique relies on micromachined sensor geometries to produce distinct waveforms that can uniquely be linked to specific locations on the microfluidic device. In this work, we investigated the scaling of the code-multiplexed Coulter sensor network through theoretical and experimental analysis. As a model system, we designed and fabricated a microfluidic device integrated with a network of 10 code-multiplexed sensors, each of which was characterized and verified to produce a 31-bit orthogonal digital code. To predict the performance of the sensor network, we developed a mathematical model based on communications and coding theory, and calculated the error rate for our sensor network as a function of the network size and sample properties. We theoretically and experimentally demonstrated the effect of electrical impedance on the signal-to-noise ratio and developed an optimized device. We also introduced a computational approach that can process the sensor network data with minimal input from the user and demonstrated system-level operation by processing suspensions of cultured human cancer cells. Taken together, our results demonstrated the feasibility of deploying large-scale code-multiplexed electrode networks for distributed Coulter detection to realize integrated lab-on-a-chip devices.
微流控设备可以根据颗粒的特性将其区分开来,并将它们映射到设备的不同位置。为了对这些颗粒进行分布式检测,我们最近引入了一种称为微流控 CODES 的复用传感技术,它将码分多址与库尔特传感相结合。我们的技术依赖于微加工传感器几何形状来产生独特的波形,这些波形可以与微流控设备上的特定位置唯一相关联。在这项工作中,我们通过理论和实验分析研究了码复用库尔特传感器网络的扩展。作为模型系统,我们设计并制造了一种集成有 10 个码复用传感器网络的微流控设备,每个传感器都经过了特征描述和验证,以产生 31 位正交数字码。为了预测传感器网络的性能,我们基于通信和编码理论开发了一个数学模型,并计算了我们的传感器网络的误码率作为网络大小和样本特性的函数。我们从理论和实验上证明了电导率对信噪比的影响,并开发了一种优化的设备。我们还引入了一种计算方法,可以在用户输入最少的情况下处理传感器网络数据,并通过处理培养的人类癌细胞悬浮液来演示系统级操作。总之,我们的结果证明了部署用于分布式库尔特检测的大规模码复用电极网络以实现集成的片上实验室设备的可行性。