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Designing Distributed Cell Classifier Circuits Using a Genetic Algorithm

机译:使用遗传算法设计分布式细胞分类器电路

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Cell classifiers are decision-making synthetic circuits that allow in vivo cell-type classification. Their design is based on finding a relationship between differential expression of miRNAs and the cell condition. Such biological devices have shown potential to become a valuable tool in cancer treatment as a new type-specific cell targeting approach. So far, only single-circuit classifiers were designed in this context. However, reliable designs come with high complexity, making them difficult to assemble in the lab. Here, we apply so-called Distributed Classifiers (DC) consisting of simple single circuits, that decide collectively according to a threshold function. Such architecture potentially simplifies the assembly process and provides design flexibility. We present a genetic algorithm that allows the design and optimization of DCs. Breast cancer case studies show that DCs perform with high accuracy on real-world data. Optimized classifiers capture biologically relevant miRNAs that are cancer-type specific. The comparison to a single-circuit classifier design approach shows that DCs perform with significantly higher accuracy than individual circuits. The algorithm is implemented as an open source tool.
机译:细胞分类器是允许体内细胞类型分类的决策合成电路。他们的设计基于发现miRNA差异表达与细胞状况之间的关系。此类生物装置已显示出潜力,将其作为一种新型的特定类型细胞靶向方法,成为癌症治疗中的重要工具。到目前为止,在这种情况下仅设计了单电路分类器。但是,可靠的设计具有很高的复杂性,因此很难在实验室中进行组装。在这里,我们应用了由简单的单个电路组成的所谓的分布式分类器(DC),它们根据阈值函数共同决定。这种体系结构有可能简化组装过程并提供设计灵活性。我们提出了一种遗传算法,可以设计和优化DC。乳腺癌案例研究表明,DC对真实数据的执行具有很高的准确性。优化的分类器可捕获癌症类型特异性的生物学相关miRNA。与单电路分类器设计方法的比较表明,DC的准确度要比单个电路高得多。该算法被实现为开源工具。

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