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Obtaining biomarkers in cancer progression from outliers of time-series clusters

机译:从时间序列簇的异常值中获得癌症进展中的生物标志物

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Studying the expression of transcripts throughout the various stages of prostate cancer may provide insight into the factors that influence the progression of the disease. Moreover, it may also reveal outlier transcripts, which have different trends than the majority of the transcripts. In this study, we use a time-series profile hierarchical clustering method to separate dissimilar groups of aligned transcripts that have maximum distance with the other group expression patterns throughout the various stages/sub-stages of prostate cancer progression. The isolated outliers can serve as biomarkers in analyzing different stages/sub-stages. This paper suggests that the combination of proper clustering, distance function and index validation for clusters are suitable model to find a pattern of trending for transcript abundance throughout different prostate cancer stages/sub-stages. The stages/sub-stages represent the time points, and the growth of the transcript abundance throughout those time points are cubic spline interpolated. The trending throughout those stages can lead to understanding the relationships among the transcripts and provide a better analysis of prostate cancer development through stages.
机译:研究整个前列腺癌各个阶段的转录本表达可能有助于深入了解影响疾病进展的因素。此外,它还可能揭示离群转录本,其趋势与大多数转录本不同。在这项研究中,我们使用时间序列轮廓分层聚类方法来分离不同的对齐转录组,这些转录本在前列腺癌进展的各个阶段/子阶段与其他组表达模式具有最大的距离。孤立的离群值可以用作分析不同阶段/子阶段的生物标记。本文认为,适当的聚类,距离函数和聚类的索引验证相结合是适合的模型,可以找到整个不同前列腺癌分期/亚分期的转录本丰度趋势的模式。阶段/子阶段代表时间点,并且在这些时间点内笔录丰度的增长是三次样条插值的。贯穿这些阶段的趋势可以导致理解转录本之间的关系,并通过各个阶段对前列腺癌的发展提供更好的分析。

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