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首页> 外文期刊>Computational Biology and Bioinformatics, IEEE/ACM Transactions on >LateBiclustering: Efficient Heuristic Algorithm for Time-Lagged Bicluster Identification
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LateBiclustering: Efficient Heuristic Algorithm for Time-Lagged Bicluster Identification

机译:LateBiclustering:用于时滞的Bicluster识别的高效启发式算法

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Identifying patterns in temporal data is key to uncover meaningful relationships in diverse domains, from stock trading to social interactions. Also of great interest are clinical and biological applications, namely monitoring patient response to treatment or characterizing activity at the molecular level. In biology, researchers seek to gain insight into gene functions and dynamics of biological processes, as well as potential perturbations of these leading to disease, through the study of patterns emerging from gene expression time series. Clustering can group genes exhibiting similar expression profiles, but focuses on global patterns denoting rather broad, unspecific responses. Biclustering reveals local patterns, which more naturally capture the intricate collaboration between biological players, particularly under a temporal setting. Despite the general biclustering formulation being NP-hard, considering specific properties of time series has led to efficient solutions for the discovery of temporally aligned patterns. Notably, the identification of biclusters with time-lagged patterns, suggestive of transcriptional cascades, remains a challenge due to the combinatorial explosion of delayed occurrences. Herein, we propose LateBiclustering, a sensible heuristic algorithm enabling a polynomial rather than exponential time solution for the problem. We show that it identifies meaningful time-lagged biclusters relevant to the response of Saccharomyces cerevisiae to heat stress.
机译:识别时间数据中的模式是揭示从股票交易到社交互动等各个领域有意义关系的关键。也非常感兴趣的是临床和生物学应用,即在分子水平上监测患者对治疗的反应或表征活性。在生物学中,研究人员试图通过研究基因表达时间序列中出现的模式,来深入了解基因功能和生物学过程的动力学,以及对导致疾病的这些过程的潜在干扰。聚类可以对表现出相似表达谱的基因进行分组,但集中于表示相当广泛的非特异性反应的整体模式。混响揭示了局部模式,这种模式更自然地捕获了生物参与者之间的复杂协作,尤其是在时间背景下。尽管一般的聚类公式化都是NP难解的,但考虑到时间序列的特定属性,已为找到时间对齐模式提供了有效的解决方案。值得注意的是,由于延迟发生的组合爆炸,具有时滞模式,提示转录级联的双链簇的鉴定仍然是一个挑战。在这里,我们提出LateBiclustering,这是一种明智的启发式算法,可以针对该问题使用多项式而不是指数时间求解。结果表明,它可以识别出与酿酒酵母对热​​应激的反应相关的有意义的时滞双峰。

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