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A fuzzy-rough nearest neighbor classifier combined with consistency-based subset evaluation and instance selection for automated diagnosis of breast cancer

机译:模糊粗糙最近邻分类器结合基于一致性的子集评估和实例选择,用于乳腺癌的自动诊断

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摘要

Breast cancer is one of the most common and deadly cancer for women. Early diagnosis and treatment of breast cancer can enhance the outcome of the patients. The development of classification models with high accuracy is an essential task in medical informatics. Machine learning algorithms have been widely employed to build robust and efficient classification models. In this paper, we present a hybrid intelligent classification model for breast cancer diagnosis. The proposed classification model consists of three phases: instance selection, feature selection and classification. In instance selection, the fuzzy-rough instance selection method based on weak gamma evaluator is utilized to remove useless or erroneous instances. In feature selection, the consistency-based feature selection method is used in conjunction with a re-ranking algorithm, owing to its efficiency in searching the possible enumerations in the search space. In the classification phase of the model, the fuzzy-rough nearest neighbor algorithm is utilized. Since this classifier does not require the optimal value for K neighbors and has richer class confidence values, this approach is utilized for the classification task. To test the efficacy of the proposed classification model we used the Wisconsin Breast Cancer Dataset (WBCD). The performance is evaluated using classification accuracy, sensitivity, specificity, F-measure, area under curve, and Kappa statistics. The obtained classification accuracy of 99.7151% is a very promising result compared to the existing works in this area reporting the results for the same data set. (C) 2015 Elsevier Ltd. All rights reserved.
机译:乳腺癌是女性最常见和致命的癌症之一。乳腺癌的早期诊断和治疗可以增强患者的预后。高精度分类模型的开发是医学信息学的重要任务。机器学习算法已被广泛采用,以建立强大而有效的分类模型。在本文中,我们提出了一种用于乳腺癌诊断的混合智能分类模型。提议的分类模型包括三个阶段:实例选择,特征选择和分类。在实例选择中,利用基于弱伽马评估器的模糊粗糙实例选择方法去除了无用或错误的实例。在特征选择中,由于基于一致性的特征选择方法在搜索空间中搜索可能的枚举的效率很高,因此它与重新排序算法结合使用。在模型的分类阶段,采用了模糊粗糙最近邻算法。由于该分类器不需要K个邻居的最优值,并且具有更丰富的分类置信度,因此该方法可用于分类任务。为了测试提出的分类模型的有效性,我们使用了威斯康星州乳腺癌数据集(WBCD)。使用分类准确性,敏感性,特异性,F量度,曲线下面积和Kappa统计数据评估性能。与报告同一数据集结果的该领域的现有作品相比,获得的99.7151%的分类准确率是一个非常有希望的结果。 (C)2015 Elsevier Ltd.保留所有权利。

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