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首页> 外文期刊>Computer-Aided Design of Integrated Circuits and Systems, IEEE Transactions on >Reactant Minimization for Sample Preparation on Microfluidic Biochips With Various Mixing Models
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Reactant Minimization for Sample Preparation on Microfluidic Biochips With Various Mixing Models

机译:不同混合模型下微流生物芯片上样品制备的反应物最小化

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摘要

Sample preparation is one of the essential processes for most on-chip biochemical applications. During this process, raw reactants are diluted to specific concentration values. Current sample preparation algorithms are generally created for digital microfluidic biochips with the (1:1) mixing model. For other biochip architectures supporting multiple mixing models, such as flow-based microfluidic biochips, there is still no dedicated solution yet. Hence, in this paper, we propose the first sample preparation method dedicated to microfluidic biochips with various mixing models, named tree pruning and grafting (TPG) algorithm. It starts with a dilution tree created by regarding the (1:1) mixing model only, and then applies TPG through a bottom-up dynamic programming strategy to obtain a solution with minimal reactant consumption. Experimental results show that our algorithm can save reactant amount by up to 69% against the well-known bit-scanning method on a biochip with a four-segment mixer. Even compared with the state-of-the-art reactant minimization algorithm, it still achieves a reactant reduction of 37%. Therefore, it is convincing that the TPG algorithm is a promising sample preparation solution for biochip architectures that support various mixing models.
机译:样品制备是大多数芯片生化应用的基本过程之一。在此过程中,将原始反应物稀释到特定的浓度值。通常为具有(1:1)混合模型的数字微流控生物芯片创建当前的样品制备算法。对于支持多种混合模型的其他生物芯片架构,例如基于流的微流体生物芯片,目前还没有专用的解决方案。因此,在本文中,我们提出了第一种专门用于具有各种混合模型的微流体生物芯片的样品制备方法,称为树修剪和嫁接(TPG)算法。它从仅通过考虑(1:1)混合模型创建的稀释树开始,然后通过自下而上的动态编程策略应用TPG,以获得反应物消耗最少的解决方案。实验结果表明,与使用四段混合器的生物芯片上的众所周知的位扫描方法相比,我们的算法可节省多达69%的反应物量。即使与最先进的反应物最小化算法相比,它仍然可以减少37%的反应物。因此,令人信服的是,TPG算法对于支持各种混合模型的生物芯片架构是一种很有前途的样品制备解决方案。

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