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首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >Improving breast cancer risk stratification using resonance-frequency electrical impedance spectroscopy through fusion of multiple classifiers.
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Improving breast cancer risk stratification using resonance-frequency electrical impedance spectroscopy through fusion of multiple classifiers.

机译:通过多个分类器的融合,使用共振频率电阻抗光谱技术改善乳腺癌风险分层。

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This study aims to improve breast cancer risk stratification. A seven-probe resonance-frequency-based electrical impedance spectroscopy (REIS) system was designed, assembled, and utilized to establish a data set of examinations from 174 women. Three classifiers, including artificial neural network (ANN), support vector machine (SVM), and Gaussian mixture model (GMM), were independently developed to predict the likelihood of each woman to be recommended for biopsy. The performances of these classifiers were compared, and seven fusion methods for integrating these classifiers were investigated. The results showed that among the three classifiers, the ANN yielded the highest performance with an area under the curve (AUC) of 0.81 for the receiver operating characteristic (ROC), while SVM and GMM achieved AUCs of 0.80 and 0.78, respectively. Improvements of up to 3% were obtained using fusion of the three classifiers, with the largest improvement obtained using either a "minimum score" rule or a "weighted sum" rule. Comparing different combinations of two out of the three classifiers, the weighted sum rule provided the most robust and consistent results, with AUCs of 0.81, 0.83, and 0.82 for the different combinations of ANN and SVM, ANN and GMM, and SVM and GMM, respectively. Furthermore, at 90% specificity, the ANN, the weighted sum- and min rule-based classifiers, all detected 67% of the verified cancer cases as compared with 50, 50, and 60% detection of the high risk cases, respectively. The study demonstrated that REIS examinations provide relevant information for developing breast cancer risk stratification tools and that using fusion of several not-fully-correlated classifiers can improve classification performance.
机译:这项研究旨在改善乳腺癌风险分层。设计,组装了一个基于七探针共振频率的电阻抗光谱系统(REIS),并利用该系统建立了来自174名妇女的检查数据集。分别开发了三个分类器,包括人工神经网络(ANN),支持向量机(SVM)和高斯混合模型(GMM),以预测每个女性被推荐做活检的可能性。比较了这些分类器的性能,并研究了用于整合这些分类器的七种融合方法。结果表明,在三个分类器中,ANN的性能最高,接收器工作特性(ROC)的曲线下面积(AUC)为0.81,而SVM和GMM的AUC分别为0.80和0.78。使用三个分类器的融合,最多可得到3%的改进,而使用“最小分数”规则或“加权总和”规则可获得最大的改进。比较三个分类器中两个分类器的不同组合,加权和规则提供了最可靠和一致的结果,ANN和SVM,ANN和GMM,SVM和GMM的不同组合的AUC分别为0.81、0.83和0.82,分别。此外,在90%的特异性下,ANN,基于加权和和最小规则的分类器全部检测出67%的已验证癌症病例,而高风险病例分别为50%,50%和60%。该研究表明,REIS检查可为开发乳腺癌风险分层工具提供相关信息,并且使用几种不完全相关的分类器进行融合可以提高分类性能。

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