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            <title><![CDATA[
<i>cola</i>: an R/Bioconductor package for consensus partitioning through a general framework]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1093/nar/gkaa1146</link>
            <description><![CDATA[<p class="para" id="N65541">Classification of high-throughput genomic data is a powerful method to assign samples to subgroups with specific molecular profiles. Consensus partitioning is the most widely applied approach to reveal subgroups by summarizing a consensus classification from a list of individual classifications generated by repeatedly executing clustering on random subsets of the data. It is able to evaluate the stability of the classification. We implemented a new R/Bioconductor package, <i>cola</i>, that provides a general framework for consensus partitioning. With <i>cola</i>, various parameters and methods can be user-defined and easily integrated into different steps of an analysis, <i>e.g</i>., feature selection, sample classification or defining signatures. <i>cola</i> provides a new method named ATC (<span style="text-decoration: underline">a</span>bility <span style="text-decoration: underline">t</span>o <span style="text-decoration: underline">c</span>orrelate to other rows) to extract features and recommends spherical <i>k</i>-means clustering (skmeans) for subgroup classification. We show that ATC and skmeans have better performance than other commonly used methods by a comprehensive benchmark on public datasets. We also benchmark key parameters in the consensus partitioning procedure, which helps users to select optimal parameter values. Moreover, <i>cola</i> provides rich functionalities to apply multiple partitioning methods in parallel and directly compare their results, as well as rich visualizations. <i>cola</i> can automate the complete analysis and generates a comprehensive HTML report.</p>]]></description>
            <pubDate><![CDATA[2020-12-04T00:00]]></pubDate>
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