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Classification of Patients with Breast Cancer using Neighbourhood Component Analysis and Supervised Machine Learning Techniques

机译:使用邻域成分分析和监督机器学习技术对乳腺癌患者进行分类

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Breast cancer is considered one of the leading causes of death among women. In morocco, the ministry of health reports over 40.000 new cases each year. When lifestyle can be a preventive pattern, early detection remains a factor of a huge impact on the mortality of the diseases. Machine learning (ML) algorithms offer an alternative to breast cancer standard techniques of prediction, or at least can assist radiologists in their reasoning flow and thus saving many females and some males from breast cancer biopsy. The present study represents a benchmarking of different ML models. The research applies and compares four machine learning algorithms (kNN, decision tree, Binary SVM, and Adaboost) to predict whether a patient has a malignant or a benign tumor. The machine learning techniques have been trained then tested on the Breast Cancer Wisconsin dataset. The datasets features are fed into feature selection model with Neighbourhood Components Analysis (NCA) to reduce the number of features and therefore decrease the complexity of the model. The predictive accuracy reached a 99.12% for the kNN model, the best predictive specificity obtained was 9S.S6% for the Binary SVM model and the highest predictive sensitivity obtained was up to one for both kNN and Adaboost models.
机译:乳腺癌被认为是女性死亡的主要原因之一。在摩洛哥,卫生部每年报告超过40.000例新病例。如果生活方式可以预防,早期发现仍然是对疾病死亡率产生巨大影响的因素。机器学习(ML)算法提供了一种替代乳腺癌标准预测技术的方法,或者至少可以帮助放射科医生进行推理,从而从乳腺癌活检中拯救了许多女性和一些男性。本研究代表了不同机器学习模型的基准测试。该研究应用并比较了四种机器学习算法(kNN,决策树,二进制SVM和Adaboost),以预测患者是恶性肿瘤还是良性肿瘤。机器学习技术已经过培训,然后在乳腺癌威斯康星州数据集上进行了测试。数据集要素通过邻域分量分析(NCA)进入要素选择模型,以减少要素数量,从而降低模型的复杂性。对于kNN模型,预测准确性达到99.12%,对于Binary SVM模型,获得的最佳预测特异性为9S.S6%,对于kNN和Adaboost模型,获得的最高预测敏感性均高达1。

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