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Signal-to-Noise Ratio Measures Efficacy of Biological Computing Devices and Circuits

机译:信噪比衡量生物计算设备和电路的功效

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Engineering biological cells to perform computations has a broad range of important potential applications, including precision medical therapies, biosynthesis process control, and environmental sensing. Implementing predictable and effective computation, however, has been extremely difficult to date, due to a combination of poor composability of available parts and of insufficient characterization of parts and their interactions with the complex environment in which they operate. In this paper, I argue that this situation can be improved by quantitative signal-to-noise analysis of the relationship between computational abstractions and the variation and uncertainty endemic in biological organisms. This analysis takes the form of a ?SNR function for each computational device, which can be computed from measurements of a device's input/output curve and expression noise. These functions can then be combined to predict how well a circuit will implement an intended computation, as well as evaluating the general suitability of biological devices for engineering computational circuits. Applying signal-to-noise analysis to current repressor libraries shows that no library is currently sufficient for general circuit engineering, but also indicates key targets to remedy this situation and vastly improve the range of computations that can be used effectively in the implementation of biological applications.
机译:对生物细胞进行工程处理以进行计算具有广泛的重要潜在应用,包括精确的药物治疗,生物合成过程控制和环境传感。然而,迄今为止,由于可利用零件的可组合性差,零件的特性不足以及零件与它们所处的复杂环境之间的相互作用,实现可预测和有效的计算极为困难。在本文中,我认为可以通过对计算抽象与生物有机体特有变异和不确定性之间的关系进行定量信噪分析来改善这种情况。该分析采用每个计算设备的?SNR函数的形式,可以从设备的输入/输出曲线和表达式噪声的测量结果中计算出该函数。然后可以将这些功能进行组合,以预测电路将如何执行预期的计算,以及评估生物设备对工程计算电路的总体适用性。对当前的阻遏物库进行信噪分析表明,目前还没有足够的库可用于通用电路工程,但也指出了纠正这种情况并大大提高可有效用于生物学应用的计算范围的关键目标。

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