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Differentiating malignant from benign breast tumors on acoustic radiation force impulse imaging using fuzzy-based neural networks with principle component analysis

机译:基于主成分分析的基于模糊神经网络的声辐射力脉冲成像鉴别恶性和良性乳腺肿瘤

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Many modalities have been developed as screening tools for breast cancer. A new screening method called acoustic radiation force impulse (ARFT) imaging was created for distinguishing breast lesions based on localized tissue displacement. This displacement was quantitated by virtual touch tissue imaging (VTI). However, VTIs sometimes express reverse results to intensity information in clinical observation. In the study, a fuzzy-based neural network with principle component analysis (PCA) was proposed to differentiate texture patterns of malignant breast from benign tumors. Eighty VTIs were randomly retrospected. Thirty four patients were determined as BI-RADS category 2 or 3, and the rest of them were determined as BI-RADS category 4 or 5 by two leading radiologists. Morphological method and Boolean algebra were performed as the image preprocessing to acquire region of interests (ROIs) on VTIs. Twenty four quantitative parameters deriving from first-order statistics (FOS), fractal dimension and gray level co-occurrence matrix (GLCM) were utilized to analyze the texture pattern of breast tumors on VTIs. PCA was employed to reduce the dimension of features. Fuzzy-based neural network as a classifier to differentiate malignant from benign breast tumors. Independent samples test was used to examine the significance of the difference between benign and malignant breast tumors. The area Az under the receiver operator characteristic (ROC) curve, sensitivity, specificity and accuracy were calculated to evaluate the performance of the system. Most all of texture parameters present significant difference between malignant and benign tumors with p-value of less than 0.05 except the average of fractal dimension. For all features classified by fuzzy-based neural network, the sensitivity, specificity, accuracy and Az were 95.7%, 97.1%, 95% and 0.964, respectively. However, the sensitivity, specificity, accuracy and Az can be increased to 100%, 97.1%, 98.8% and 0.985, respectively if PCA was performed to reduce the dimension of features. Patterns of breast tumors on VTIs can effectively be recognized by quantitative texture parameters, and differentiated malignant from benign lesions by fuzzy-based neural network with PCA.
机译:已经开发出许多方法作为乳腺癌的筛查工具。创建了一种称为声辐射力脉冲(ARFT)成像的新筛选方法,用于根据局部组织移位来区分乳腺病变。通过虚拟触摸组织成像(VTI)量化此位移。但是,VTI有时会在临床观察中对强度信息表达相反的结果。在这项研究中,提出了一种基于模糊神经网络的主成分分析(PCA),以区分良性肿瘤与恶性乳房的纹理模式。随机回顾了80个VTI。两名主要的放射科医生将34例患者确定为BI-RADS 2或3类,其余患者则确定为BI-RADS 4或5类。进行形态学方法和布尔代数作为图像预处理,以获取VTI上的感兴趣区域(ROI)。利用一阶统计量(FOS),分形维数和灰度共生矩阵(GLCM)得出的二十四个定量参数来分析VTI上乳腺肿瘤的纹理图案。使用PCA来减小特征尺寸。基于模糊的神经网络作为区分恶性和良性乳腺肿瘤的分类器。使用独立样本测试来检查良性和恶性乳腺肿瘤之间差异的意义。计算接收器操作员特征(ROC)曲线,灵敏度,特异性和准确性下的面积Az,以评估系统的性能。除分形维数的平均值外,大多数纹理参数在恶性和良性肿瘤之间均存在显着差异,p值小于0.05。对于基于模糊神经网络分类的所有特征,其敏感性,特异性,准确性和Az分别为95.7%,97.1%,95%和0.964。但是,如果执行PCA缩小特征尺寸,则灵敏度,特异性,准确性和Az可以分别提高到100%,97.1%,98.8%和0.985。可以通过定量纹理参数有效识别VTIs上的乳腺肿瘤模式,并通过基于模糊神经网络的PCA技术将恶性与良性病变区分开。

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