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Multi-Input Distributed Classifiers for Synthetic Genetic Circuits

机译:合成遗传电路的多输入分布式分类器

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摘要

For practical construction of complex synthetic genetic networks able to perform elaborate functions it is important to have a pool of relatively simple modules with different functionality which can be compounded together. To complement engineering of very different existing synthetic genetic devices such as switches, oscillators or logical gates, we propose and develop here a design of synthetic multi-input classifier based on a recently introduced distributed classifier concept. A heterogeneous population of cells acts as a single classifier, whose output is obtained by summarizing the outputs of individual cells. The learning ability is achieved by pruning the population, instead of tuning parameters of an individual cell. The present paper is focused on evaluating two possible schemes of multi-input gene classifier circuits. We demonstrate their suitability for implementing a multi-input distributed classifier capable of separating data which are inseparable for single-input classifiers, and characterize performance of the classifiers by analytical and numerical results. The simpler scheme implements a linear classifier in a single cell and is targeted at separable classification problems with simple class borders. A hard learning strategy is used to train a distributed classifier by removing from the population any cell answering incorrectly to at least one training example. The other scheme implements a circuit with a bell-shaped response in a single cell to allow potentially arbitrary shape of the classification border in the input space of a distributed classifier. Inseparable classification problems are addressed using soft learning strategy, characterized by probabilistic decision to keep or discard a cell at each training iteration. We expect that our classifier design contributes to the development of robust and predictable synthetic biosensors, which have the potential to affect applications in a lot of fields, including that of medicine and industry.
机译:对于能够执行复杂功能的复杂的合成遗传网络的实际构建,重要的是要拥有一批具有不同功能且可以组合在一起的相对简单的模块。为了补充非常不同的现有合成遗传设备(如开关,振荡器或逻辑门)的工程设计,我们在此提出并开发了一种基于最近引入的分布式分类器概念的合成多输入分类器的设计。异类细胞群体充当单个分类器,其输出是通过汇总单个细胞的输出而获得的。通过修剪种群而不是调整单个细胞的参数来获得学习能力。本文的重点是评估多输入基因分类器电路的两种可能方案。我们证明了它们适用于实现能够分离单输入分类器不可分离的数据的多输入分布式分类器,并通过分析和数值结果表征分类器的性能。更简单的方案在单个单元格中实现线性分类器,并且针对具有简单类边界的可分离分类问题。硬学习策略用于通过从总体中删除错误回答至少一个训练示例的任何单元来训练分布式分类器。另一种方案是在单个单元中实现具有钟形响应的电路,以允许在分布式分类器的输入空间中潜在地具有任意形状的分类边界。使用软学习策略可解决不可分离的分类问题,其特征在于在每次训练迭代中保留或丢弃单元格的概率决策。我们希望我们的分类器设计有助于开发强大且可预测的合成生物传感器,该传感器有可能影响许多领域的应用,包括医学和工业领域。

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