Graduate Program in Bioengineering, University of California, Berkeley, CA, USA.
J Magn Reson. 2012 Mar;216:13-20. doi: 10.1016/j.jmr.2011.10.001. Epub 2011 Oct 19.
The design and operation of microfluidic analytical devices depends critically on tools to probe microscale chemistry and flow dynamics. Magnetic resonance imaging (MRI) seems ideally suited to this task, but its sensitivity is compromised because the fluid-containing channels in "lab on a chip" devices occupy only a small fraction of the enclosing detector's volume; as a result, the few microfluidic applications of NMR have required custom-designed chips harboring many detectors at specific points of interest. To overcome this limitation, we have developed remotely detected microfluidic MRI, in which an MR image is stored in the phase and intensity of each analyte's NMR signal and sensitively detected by a single, volume-matched detector at the device outflow, and combined it with compressed sensing for rapid image acquisition. Here, we build upon our previous work and introduce a method that incorporates our prior knowledge of the microfluidic device geometry to further decrease acquisition times. We demonstrate its use in multidimensional velocimetric imaging of a microfluidic mixer, acquiring microscopically detailed images 128 times faster than is possible with conventional sampling. This prior information also informs our choice of sampling schedule, resulting in a scheme that is optimized for a specific flow geometry. Finally, we test our approach in synthetic data and explore potential reconstruction errors as a function of optimization and reconstruction parameters.
微流控分析设备的设计和运行严重依赖于探测微尺度化学和流动动力学的工具。磁共振成像 (MRI) 似乎非常适合这项任务,但由于“芯片实验室”设备中含流体的通道仅占据封闭探测器体积的一小部分,其灵敏度受到影响;因此,少数 NMR 在微流控中的应用需要定制设计的芯片,在特定的感兴趣点上拥有多个探测器。为了克服这一限制,我们开发了远程检测微流控 MRI,其中一个 MRI 图像存储在每个分析物的 NMR 信号的相位和强度中,并通过设备出口处的单个体积匹配探测器灵敏地检测到,并结合压缩感知进行快速图像采集。在这里,我们在前人的工作基础上,引入了一种方法,该方法结合了我们对微流控设备几何形状的先验知识,以进一步缩短采集时间。我们展示了它在微流混合器的多维速度成像中的应用,以比传统采样快 128 倍的速度获取微观详细的图像。这种先验信息还指导我们选择采样计划,从而为特定的流动几何形状优化了方案。最后,我们在合成数据中测试我们的方法,并探索优化和重建参数作为函数的潜在重建误差。