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Towards a Classification Approach using Meta-Biclustering: Impact of Discretization in the Analysis of Expression Time Series

机译:迈向使用元集聚的分类方法:离散化在表达时间序列分析中的影响

摘要

Biclustering has been recognized as a remarkably effective method for discovering local temporal expression patterns and unraveling potential regulatory mechanisms, essential to understanding complex biomedical processes, such as disease progression and drug response. In this work, we propose a classification approach based on meta-biclusters (a set of similar biclusters) applied to prognostic prediction. We use real clinical expression time series to predict the response of patients with multiple sclerosis to treatment with Interferon-!. As compared to previous approaches, the main advantages of this strategy are the interpretability of the results and the reduction of data dimensionality, due to biclustering. This would allow the identification of the genes and time points which are most promising for explaining different types of response profiles, according to clinical knowledge. We assess the impact of different unsupervised and supervised discretization techniques on the classification accuracy. The experimental results show that, in many cases, the use of these discretization methods improves the classification accuracy, as compared to the use of the original features.
机译:比对已经被认为是发现局部时间表达模式和揭示潜在调节机制的非常有效的方法,这对于理解复杂的生物医学过程(例如疾病进展和药物反应)至关重要。在这项工作中,我们提出了一种基于适用于预后预测的meta-bicluster(一组相似的bicluster)的分类方法。我们使用实际的临床表达时间序列来预测多发性硬化症患者对Interferon-!治疗的反应。与以前的方法相比,此策略的主要优点是结果的可解释性以及由于双聚类导致的数据维数减少。根据临床知识,这将允许鉴定最有希望用于解释不同类型的反应谱的基因和时间点。我们评估了不同的无监督和有监督的离散化技术对分类准确性的影响。实验结果表明,在许多情况下,与使用原始特征相比,使用这些离散化方法可以提高分类的准确性。

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