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An improved survivability prognosis of breast cancer by using sampling and feature selection technique to solve imbalanced patient classification data

机译:通过使用采样和特征选择技术解决不平衡的患者分类数据提高乳腺癌的生存率

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摘要

BackgroundBreast cancer is one of the most critical cancers and is a major cause of cancer death among women. It is essential to know the survivability of the patients in order to ease the decision making process regarding medical treatment and financial preparation. Recently, the breast cancer data sets have been imbalanced (i.e., the number of survival patients outnumbers the number of non-survival patients) whereas the standard classifiers are not applicable for the imbalanced data sets. The methods to improve survivability prognosis of breast cancer need for study.
机译:背景技术乳腺癌是最关键的癌症之一,是女性癌症死亡的主要原因。必须了解患者的生存能力,以简化有关医疗和财务准备的决策过程。最近,乳腺癌数据集是不平衡的(即,存活患者的数量超过非存活患者的数量),而标准分类器不适用于不平衡的数据集。改善乳腺癌生存预后的方法有待研究。

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