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Extracting Temporal Signatures for Comprehending Systems Biology Models

机译:提取用于系统生物学模型的时间签名

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Systems biology has made massive strides in recent years, with capabilities to model complex systems including cell division, stress response, energy metabolism, and signaling pathways. Concomitant with their improved modeling capabilities, however, such biochemical network models have also become notoriously complex for humans to comprehend. We propose network comprehension as a key problem for the KDD community, where the goal is to create explainable representations of complex biological networks. We formulate this problem as one of extracting temporal signatures from multi-variate time series data, where the signatures are composed of ordinal comparisons between time series components. We show how such signatures can be inferred by formulating the data mining problem as one of feature selection in rank-order space. We propose five new feature selection strategies for rank-order space and assess their selective superiorities. Experimental results on budding yeast cell cycle models demonstrate compelling results comparable to human interpretations of the cell cycle.
机译:近年来,系统生物学取得了长足的进步,具有对复杂系统进行建模的功能,包括细胞分裂,应激反应,能量代谢和信号传导途径。然而,伴随着其改进的建模能力,这种生化网络模型也已经众所周知地变得复杂,以致人类难以理解。我们建议将网络理解作为KDD社区的关键问题,其目标是创建可解释的复杂生物网络表示。我们将此问题公式化为从多元时间序列数据中提取时间签名的一种,其中签名由时间序列成分之间的顺序比较组成。我们展示了如何通过将数据挖掘问题公式化为秩序空间中的特征选择之一来推断此类签名。我们提出了五种针对等级空间的新特征选择策略,并评估了它们的选择性优势。出芽的酵母细胞周期模型的实验结果表明,令人信服的结果可与人类对细胞周期的解释相媲美。

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