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Computerized Detection of Breast Cancer using Resonance-Frequency-based Electrical Impedance Spectroscopy

机译:基于共振频率的电阻抗谱计算机检测乳腺癌

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This study developed and tested a multi-probe resonance-frequency-based electrical impedance spectroscopy (REIS) system aimed at detection of breast cancer. The REIS system consists of specially designed mechanical supporting device that can be easily lifted to fit women of different height, a seven probe sensor cup, and a computer providing software for system control and management. The sensor cup includes one central probe for direct contact with the nipple, and other six probes uniformly distributed at a distance of 35mm away from the center probe to enable contact with breast skin surface. It takes about 18 seconds for this system to complete a data acquisition process. We utilized this system for examination of breast cancer, collecting a dataset of 289 cases including biopsy verified 74 malignant and 215 benign tumors. After that, 23 REIS based features, including seven frequency, fifteen magnitude features were extracted, and an age feature. To reduce redundancy we selected 6 features using the evolutionary algorithm for classification. The area under a receiver operating characteristic curve (AUC) was computed to assess classifier performance. A multivariable logistic regression method was performed for detection of the tumors. The results of our study showed for the 23 REIS features AUC and ACC, Sensitivity and Specificity of 0.796, 0.727, 0.731 and 0.726, respectively. The AUC and ACC, Sensitivity and Specificity for the 6 REIS features of 0.840, 0.80, 0.703 and 0.833, respectively, and AUC of 0.662 and 0.619 for the frequency and magnitude based REIS features, respectively. The performance of the classifiers using all the 6 features was significantly better than solely using magnitude features (p=3.29e-08) and frequency features (5.61e-07). Smote algorithm was used to expand small samples to balance the dataset, the AUC after data balance of 0.846, increased than the original data classification performance. The results indicated that the REIS system is a promising tool for detection of breast cancer and may be acceptable for clinical implementation.
机译:这项研究开发并测试了多探针基于共振频率的电阻抗光谱(REIS)系统,旨在检测乳腺癌。 REIS系统包括专门设计的机械支撑装置(可轻松提起以适合不同身高的女性),七个探头传感器杯以及一台提供系统控制和管理软件的计算机。传感器杯包括一个直接与乳头接触的中央探针,以及另外六个与中央探针相距35mm的均匀分布的探针,以能够与乳房皮肤表面接触。该系统大约需要18秒才能完成数据采集过程。我们利用该系统检查乳腺癌,收集了289例病例的数据集,包括经活检证实的74例恶性肿瘤和215例良性肿瘤。之后,提取了23种基于REIS的特征,包括7个频率,15个幅度特征和一个年龄特征。为了减少冗余,我们使用进化算法选择了6个特征进行分类。计算接收器工作特性曲线(AUC)下的面积以评估分类器性能。进行了多变量逻辑回归方法以检测肿瘤。我们的研究结果表明,对于23种REIS特征,AUC和ACC的敏感性和特异性分别为0.796、0.727、0.731和0.726。 6个REIS特征的AUC和ACC,灵敏度和特异性分别为0.840、0.80、0.703和0.833,基于频率和幅度的REIS特征的AUC分别为0.662和0.619。使用全部6个特征的分类器的性能明显优于仅使用幅度特征(p = 3.29e-08)和频率特征(5.61e-07)。使用Smote算法扩展小样本以平衡数据集,数据平衡后的AUC为0.846,比原始数据分类性能有所提高。结果表明,REIS系统是检测乳腺癌的有前途的工具,可能在临床上可以接受。

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