热图可视化允许多个聚类结果的比较和数据集质量的评估:应用于微阵列数据

J. Sharko, G. Grinstein, K. Marx, Jianping Zhou, Chia-Ho Cheng, S. Odelberg, H. Simon
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引用次数: 17

摘要

由于聚类算法是启发式的,应用于相同数据集的多个聚类算法通常不会生成相同的聚类集。对于复杂的数据集尤其如此,例如来自微阵列时间序列实验的数据集。本研究使用了两个这样的微阵列数据集,描述了截肢后不同时间再生蝾螈前肢的基因表达活动。一个显示两个基因在同一簇中出现的次数的簇稳定性矩阵被生成为热图。这被用来评估聚类算法之间的总体变化,并识别相似的聚类。对两个相关的微阵列实验中不同精度水平的聚类稳定性矩阵的比较被证明是比较两组实验质量的有效基础。生成了一对热图,以显示哪些对聚类算法将数据分组到相似的聚类中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heat Map Visualizations Allow Comparison of Multiple Clustering Results and Evaluation of Dataset Quality: Application to Microarray Data
Since clustering algorithms are heuristic, multiple clustering algorithms applied to the same dataset will typically not generate the same sets of clusters. This is especially true for complex datasets such as those from microarray time series experiments. Two such microarray datasets describing gene expression activities from regenerating newt forelimbs at various times following limb amputation were used in this study. A cluster stability matrix, which shows the number of times two genes appear in the same cluster, was generated as a heat map. This was used to evaluate the overall variation among the clustering algorithms and to identify similar clusters. A comparison of the cluster stability matrices for two related microarray experiments with different levels of precision was shown to be an effective basis for comparing the quality of the two sets of experiments. A pairwise heat map was generated to show which pairs of clustering algorithms grouped the data into similar clusters.
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