首页> 外文会议>International Symposium on Computer and Information Sciences(ISCIS 2006); 20061101-03; Istanbul(TR) >Extracting Gene Regulation Information from Microarray Time-Series Data Using Hidden Markov Models
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Extracting Gene Regulation Information from Microarray Time-Series Data Using Hidden Markov Models

机译:使用隐马尔可夫模型从微阵列时间序列数据中提取基因调控信息

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Finding gene regulation information from microarray time-series data is important to uncover transcriptional regulatory networks. Pearson correlation is the widely used method to find similarity between time-series data. However, correlation approach fails to identify gene regulations if time-series expressions do not have global similarity, which is mostly the case. Assuming that gene regulation time-series data exhibits temporal patterns other than global similarities, one can model these temporal patterns. Hidden Markov models (HMMsJ are well established structures to learn and model temporal patterns. In this study, we propose a new method to identify regulation relationships from microarray time-series data using HMMs. We showed that the proposed HMM based approach detects gene regulations, which are not captured by correlation methods. We also compared our method with recently proposed gene regulation detection approaches including edge detection, event method and dominant spectral component analysis. Results on Spellman's α-synchronized yeast cell-cycle data clearly present that HMM approach is superior to previous methods.
机译:从微阵列时间序列数据中寻找基因调控信息对于发现转录调控网络非常重要。皮尔逊相关性是广泛使用的查找时间序列数据之间相似性的方法。但是,如果时间序列表达式不具有全局相似性,则相关方法无法确定基因调控,多数情况下是这样。假设基因调控时间序列数据显示的时间模式不是全局相似性,则可以对这些时间模式进行建模。隐马尔可夫模型(HMMsJ)是一种建立良好的结构,可以学习和建模时间模式。在这项研究中,我们提出了一种使用HMM从微阵列时间序列数据中识别调控关系的新方法。我们证明了基于HMM的方法可以检测基因调控,我们还把我们的方法与最近提出的基因调控检测方法(包括边缘检测,事件方法和主要光谱成分分析)进行了比较,斯派曼α同步酵母细胞周期数据的结果清楚地表明,HMM方法是更好的方法以前的方法。

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