Shinde Shilpa Madhavan, Orozco Christine, Brengues Muriel, Lenigk Ralf, Montgomery Douglas C, Zenhausern Frederic
Center for Applied Nanobioscience, Biodesign Institute, Arizona State University.
Qual Eng. 2010;23(1):59-70. doi: 10.1080/08982112.2010.529482.
In recent decades advances in radiation imaging and radiation therapy have led to a dramatic increase in the number of people exposed to radiation. Consequently, there is a clear need for personalized biodosimetry diagnostics in order to monitor the dose of radiation received and adapt it to each patient depending on their sensitivity to radiation exposure (Hall E.J. and Brenner D. J., 2008). Similarly, after a large-scale radiological event such as a dirty bomb attack, there will be a major need to assess, within a few days the radiation doses received by tens of thousands of individuals. Current high throughput devices can handle only a few hundred individuals per day. Hence there is a great need for a very fast self-contained non-invasive biodosimetric device based on a rapid blood test.This paper presents a case study where regression methods and designed experiments are used to arrive at the optimal settings for various factors that impact the kinetics in a biodosimetric device. We use ridge regression to initially identify a set of potentially important variables in the mixing process which is one of the critical sub systems of the device. This was followed by a series of designed experiments to arrive at the optimal setting of the significant microfluidic cartridge and piezoelectric disk (PZT) (D. Sadler, F. Zenhausern, U.S. Patent 6,986,601; Lee, S. Y., Ko, B., Yang, W., 2005) related factors. This statistical approach has been utilized to study the microfluidic mixing to mix water and dye mixtures of 70 μl volume. The outcome of the statistical design, experimentation and analysis was then exploited for optimizing the design, fabrication and assembly of the microfluidic devices. As a result of the experiments that were performed, the system was fine tuned and the mixing time was reduced from 5.5 minutes to 2 minutes.
近几十年来,放射成像和放射治疗的进展导致受辐射人群数量急剧增加。因此,显然需要个性化生物剂量诊断,以便监测所接受的辐射剂量,并根据每个患者对辐射暴露的敏感性进行调整(霍尔E.J.和布伦纳D.J.,2008年)。同样,在发生脏弹袭击等大规模放射性事件后,迫切需要在几天内评估数万人所接受的辐射剂量。目前的高通量设备每天只能处理几百人。因此,迫切需要一种基于快速血液检测的非常快速、独立的非侵入性生物剂量设备。本文介绍了一个案例研究,其中使用回归方法和设计实验来确定影响生物剂量设备动力学的各种因素的最佳设置。我们使用岭回归初步识别混合过程中一组潜在的重要变量,混合过程是该设备的关键子系统之一。随后进行了一系列设计实验,以确定重要的微流控芯片和压电盘(PZT)(D.萨德勒、F.曾豪泽恩,美国专利6,986,601;李S.Y.、高B.、杨W.,2005年)相关因素的最佳设置。这种统计方法已被用于研究微流控混合,以混合70微升体积的水和染料混合物。然后利用统计设计、实验和分析的结果来优化微流控设备的设计、制造和组装。由于进行了实验,系统得到了微调,混合时间从5.5分钟减少到了2分钟。