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Breast Cancer Risk Assessment Prediction Using an Ensemble Classifier

机译:使用集合分类器进行乳腺癌风险评估预测

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Breast cancer is still the most common killing disease nowadays among women. The current research is to identify accurately the risk of breast cancer. Many machine learning models can be used to predict the risk based on gene expression data. When analyzing the gene expression data, the key concern observed is how to select the best informative set of genes. Usually, the number of gene attributes far exceeds the number of data observations. This problem warrants a feature selection algorithm to select a subset of suitable genes. In this paper, an ensemble classifier with Correlation based feature selection with forward search is proposed for use in microarray breast cancer gene expression datasets. The proposed ensemble classifier helps to classify the relapse with the most informative genes, which can help physicians to identify breast cancer at the early stages. The evaluation reveals that the proposed method achieves higher classification accuracy, compared to existing works.
机译:乳腺癌仍然是女性中最常见的杀伤疾病。 目前的研究是准确识别乳腺癌的风险。 许多机器学习模型可用于预测基于基因表达数据的风险。 在分析基因表达数据时,观察到的关键问题是如何选择最佳信息集的基因集。 通常,基因属性的数量远远超过数据观测的数量。 此问题保证特征选择算法选择合适基因的子集。 在本文中,提出了一种具有基于相关的特征选择的集合分类器,用于前进搜索,用于微阵列乳腺癌基因表达数据集。 所提出的集合分类器有助于将复发与最具信息丰富的基因进行分类,这可以帮助医生在早期阶段识别乳腺癌。 评价表明,与现有工程相比,该方法达到了更高的分类准确性。

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