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A Novel ML Approach to Prediction of Breast Cancer: Combining of mad normalization, KMC based feature weighting and AdaBoostM1 classifier

机译:一种新的ML预测乳腺癌的方法:疯狂归一化的结合,基于KMC的特征加权和Adaboostm1分类器

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Breast cancer is the second most common cancer in our country and in the world. In this study, a breast cancer data set was formed from the findings obtained from experiments conducted in the city of Coimbra of Portugal. There are two sets of data (52 data: healthy group, 64 data belong to patient group) and 9 features in the breast cancer data set of 116 data, both healthy and patient. These nine features are: Age, BMI, Glucose, Insulin, HOMA, Leptin, Adiponectin, MCP-1. In the proposed method, a three-step hybrid structure is proposed to detect the presence of breast cancer. In the first step, the dataset was first normalized by the MAD normalization method. In the second step, k-means clustering (KMC) based feature weighting has been used for weighting the normalized data. Finally, the AdaBoostM1 classifier has been used to classify the weighted data set. Only the combination the AdaBoostM1 classifier with MAD normalization method yielded a 75% classification accuracy in the detection of breast cancer, whereas the hybrid approach achieved 91.37% success. These results show that the proposed system could be used safely to detect breast cancer.
机译:乳腺癌是我国和世界上第二次常见的癌症。在该研究中,乳腺癌数据集由从葡萄牙Coimbra市进行的实验获得的结果形成。有两套数据(52数据:健康组,64个数据属于患者组),9种特征在116个数据组的乳腺癌数据集中,既健康患者。这些九个特征是:年龄,BMI,葡萄糖,胰岛素,HOMA,瘦素,脂联素,MCP-1。在该方法中,提出了一种三步混合结构以检测乳腺癌的存在。在第一步中,数据集首先通过MAD归一化方法标准化。在第二步中,基于K-Means聚类(KMC)的特征加权已经用于加权归一化数据。最后,adaboostm1分类器已被用于对加权数据集进行分类。只有具有疯狂归一化方法的Adaboostm1分类器的组合在乳腺癌的检测中产生了75%的分类准确性,而混合方法取得了91.37%的成功。这些结果表明,所提出的系统可以安全地用于检测乳腺癌。

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