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Unifying probe effect and array effect to detect transcribed fragments in tiling arrays

机译:统一探针效应和阵列效应以检测平铺阵列中的转录片段

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In this paper, we present a model to elaborate the sources of randomness in multiple tiling array data. We also propose a new probe score system which integrate the intensity information of a probe and its neighbors. This new score system is obtained by using slide window and median polish strategies. These strategies firstly unify probe affect across probes and the array effect across arrays based on the region-specific fixed values interpreting the transcription levels of regions in probes, then unite these unified information into the region-specific fixed values. And this united information become a new standard to evaluate that probes are or aren't in transcriptional regions. Similar to median method, our method is a way that integrate the information from multiple arrays in the analysis stage rather than the results stage. A classical hidden Markov model (HMM) is used to model the distribution of tilling array probe scores in transcribed and non-transcribed regions and then to predict the transcribed fragments. The priority of the proposed score system is illustrated based on Affymetrix's RNA tiling array data.
机译:在本文中,我们提出了一个模型,以详细说明多个切片阵列数据中的随机性来源。我们还提出了一个新的探针评分系统,该系统整合了探针及其邻居的强度信息。通过使用滑动窗口和中值抛光策略可以获得此新的评分系统。这些策略首先基于解释探针中区域的转录水平的区域特异性固定值,统一探针在探针之间的影响以及阵列在整个阵列中的阵列效果,然后将这些统一的信息整合到区域特异性固定值中。而且,这种统一的信息成为评估探针是否在转录区域中的新标准。与中值方法类似,我们的方法是一种在分析阶段而不是结果阶段整合来自多个阵列的信息的方法。使用经典的隐马尔可夫模型(HMM)来模拟耕作阵列探针得分在已转录和未转录区域中的分布,然后预测已转录片段。基于Affymetrix的RNA切片阵列数据说明了建议的评分系统的优先级。

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