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Mining Cell Cycle Literature Using Support Vector Machines

机译:使用支持向量机挖掘细胞周期文献

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While biomedical literature is rapidly increasing, text classification remains a challenge for researchers, curators and librarians. In the context of this work, we use the Caipirini service to report on the exploration of a literature corpus related to the G1, S, G2 and M phases of the human cell cycle respectively. We use Support Vector Machines (SVMs) and a well-studied dataset to compare each of the cell cycle phases against all others in order to find abstracts that are related to one specific phase at a time. Finally we measure the performance of the results using the standard accuracy, precision and recall metrics. We find differences between the results of each of the four phases and we compare with previous findings of relevant work. We conclude that the results concur and help interpreting the observed classification performance.
机译:在生物医学文献迅速发展的同时,文本分类仍然是研究人员,策展人和图书馆员的挑战。在这项工作的背景下,我们使用Caipirini服务来报告有关分别与人类细胞周期的G1,S,G2和M期有关的文献语料库的探索。我们使用支持向量机(SVM)和经过充分研究的数据集,将每个细胞周期阶段与所有其他阶段进行比较,以便一次找到与一个特定阶段相关的摘要。最后,我们使用标准的准确性,准确性和召回率指标来衡量结果的效果。我们发现四个阶段中每个阶段的结果之间存在差异,并与相关工作的先前发现进行了比较。我们得出结论,结果是一致的,并有助于解释观察到的分类性能。

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