Heuristic approaches for time-lagged biclustering

Joana P. Gonçalves, S. Madeira
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引用次数: 1

Abstract

Identifying patterns in temporal data supports complex analyses in several domains, including stock markets (finance) and social interactions (social science). Clinical and biological applications, such as monitoring patient response to treatment or characterizing activity at the molecular level, are also of interest. In particular, researchers seek to gain insight into the dynamics of biological processes, and potential perturbations of these leading to disease, through the discovery of patterns in time series gene expression data. For many years, clustering has remained the standard technique to group genes exhibiting similar response profiles. However, clustering defines similarity across all time points, focusing on global patterns which tend to characterize rather broad and unspecific responses. It is widely believed that local patterns offer additional insight into the underlying intricate events leading to the overall observed behavior. Efficient biclustering algorithms have been devised for the discovery of temporally aligned local patterns in gene expression time series, but the extraction of time-lagged patterns remains a challenge due to the combinatorial explosion of pattern occurrence combinations when delays are considered. We present heuristic approaches enabling polynomial rather than exponential time solutions for the problem.
时滞双聚类的启发式方法
识别时间数据中的模式支持多个领域的复杂分析,包括股票市场(金融)和社会互动(社会科学)。临床和生物学应用,如监测患者对治疗的反应或在分子水平上表征活性,也令人感兴趣。特别是,研究人员试图通过发现时间序列基因表达数据的模式,深入了解生物过程的动态,以及这些过程导致疾病的潜在扰动。多年来,聚类一直是标准的技术组基因表现出相似的反应概况。然而,聚类定义了所有时间点上的相似性,关注的是倾向于描述相当广泛和非特定响应的全局模式。人们普遍认为,局部模式提供了对导致整体观察行为的潜在复杂事件的额外见解。高效的双聚类算法已被设计用于发现基因表达时间序列中时间对齐的局部模式,但由于考虑延迟时模式发生组合的组合爆炸,时间滞后模式的提取仍然是一个挑战。我们提出了启发式方法,使多项式而不是指数时间解决问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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