Adaptive medical detection system: An iterative averaging method for automated detection analysis using DMFBs

P. Roy, Amiya Sahoo, H. Rahaman
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Abstract

In recent years a new generation of droplet based lab-on-chip device termed as Digital Microfluidic Biochip(DMFB) has found wide applications in the field of clinical diagnostics, DNA sequencing, drug design and environmental toxicity monitoring applications. Optical detection in DMFB is of major significance as it involves detection accuracy of the final results that determines the decision for clinical diagnostic solutions. In this work we propose the design of an adaptive detection system comprising of automated digital detection analyser coupled with Digital Microfluidic Biochips. The system performs automated analysis of the detection results for an obtained set of samples for the same patient and predicts the actual trend of the detection results. The technique is based on iterative averaging combined with adaptive manipulation of detection ranges determined through precharacterized values. This method provides higher detection accuracy (in the event of uncertainty resulted when no clear detection majority is available) with an approximated prediction of the trend of the extent of infection or abnormality of the targeted parameter. The design is simulated in FPGA platform and the detection results display fair amount of accuracy particularly in line with conventional laboratory methods.
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自适应医疗检测系统:一种使用dmfb进行自动检测分析的迭代平均方法
近年来,新一代基于液滴的芯片实验室设备被称为数字微流控生物芯片(DMFB),在临床诊断、DNA测序、药物设计和环境毒性监测等领域得到了广泛的应用。DMFB的光学检测具有重要意义,因为它涉及最终结果的检测准确性,决定了临床诊断方案的决策。在这项工作中,我们提出了一种由自动数字检测分析仪和数字微流控生物芯片组成的自适应检测系统的设计。该系统对同一患者获得的一组样本的检测结果进行自动分析,并预测检测结果的实际趋势。该技术是基于迭代平均结合自适应操作的检测范围确定通过预表征值。该方法提供了更高的检测精度(在没有明确检测多数的不确定情况下),可以近似预测目标参数的感染程度或异常趋势。该设计在FPGA平台上进行了仿真,检测结果具有较高的精度,符合常规实验室方法。
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