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Clustering-based approach for detecting breast cancer recurrence

机译:基于聚类的乳腺癌复发检测方法

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This paper aims to assess the effectiveness of three different clustering algorithms, used to detect breast cancer recurrent events. The performance of a classical k-means algorithm is compared with a much more sophisticated Self-Organizing Map (SOM-Kohonen network) and a cluster network, closely related to both k-means and SOM. The three clustering algorithms have been applied on a concrete breast cancer dataset, and the result clearly showed that the best performance was obtained by the cluster network, followed by SOM and k-means, their predicting accuracy ranging from 62% to 78%. Based on the patients' segmentation regarding the occurrence of recurrent events, new patients may be labeled according to their medical characteristics as developing or not recurrent events, thus supporting health professionals in making informed decisions.
机译:本文旨在评估用于检测乳腺癌复发事件的三种不同聚类算法的有效性。将经典k均值算法的性能与更为复杂的自组织映射图(SOM-Kohonen网络)和与k均值和SOM密切相关的群集网络进行了比较。三种聚类算法已应用于具体的乳腺癌数据集,结果清楚地表明,聚类网络获得了最佳性能,其次是SOM和k-means,它们的预测准确度在62%至78%之间。根据患者对复发事件发生情况的细分,可以根据新患者的病情特征将其标记为正在发生或不发生复发事件,从而支持卫生专业人员做出明智的决定。

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