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Evolving fuzzy rules to model gene expression

机译:不断发展的模糊规则为基因表达建模

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This paper develops an algorithm that extracts explanatory rules from microarray data, which we treat as time series, using genetic programming (GP) and fuzzy logic. Reverse polish notation is used (RPN) to describe the rules and to facilitate the GP approach. The algorithm also allows for the insertion of prior knowledge, making it possible to find sets of rules that include the relationships between genes already known. The algorithm proposed is applied to problems arising in the construction of gene regulatory networks, using two different sets of real data from biological experiments on the Arabidopsis thaliana cold response and the rat central nervous system, respectively. The results show that the proposed technique can fit data to a pre-defined precision even in situations where the data set has thousands of features but only a limited number of points in time are available, a situation in which traditional statistical alternatives encounter difficulties, due to the scarcity of time points.
机译:本文开发了一种算法,该算法使用遗传规划(GP)和模糊逻辑从微阵列数据中提取解释规则,我们将其视为时间序列。使用反向抛光符号(RPN)来描述规则并简化GP方法。该算法还允许插入先验知识,从而有可能找到包括已知基因之间关系的规则集。所提出的算法分别利用拟南芥冷反应和大鼠中枢神经系统生物学实验的两组不同的真实数据,应用于基因调控网络构建中出现的问题。结果表明,即使在数据集具有数千个特征但只有有限数量的时间点可用的情况下,所提出的技术也可以将数据拟合到预定义的精度,在这种情况下,传统的统计方法会遇到困难,这是由于时间点的稀缺性。

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