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Computer-Aided Diagnosis of Breast Elastography and B-Mode Ultrasound

机译:计算机辅助诊断乳房弹性造影和B模式超声

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Ultrasound (US) elastography, a new technique that images the elasticity of tissues, is now into the course of breast cancer diagnosis. The purpose of this study was to assess the diagnostic performance of a neural network using a combination of US elastography technique and US B-mode. A back-propagation neural network (BPN) is used to classify the breast masses as benign cyst, benign solid mass, or malignant solid mass using texture, strain, and morphological features computed from the segmented lesions. Sixty-two breast lesions in US elastography and US B-scan images that are biopsy proved are examined. A classification accuracy using a combination of US elastography and B-scan images is 87.09 %, sensitivity 89.29 %, specificity 85.29 %, positive predictive value 83.33 %, and the negative predictive value is 90.63 %. With statistically significant features, the classification accuracy using a combination of US elastography and B-scan images is reported to be 82.25 % with sensitivity 92.86 %, specificity 73.53 %, positive predictive value 74.29 %, and negative predictive value 92.59 %. The classification results indicate that US elastography in combination with US B-mode improves both sensitivity and specificity.
机译:超声(美国)弹性造影,一种图像弹性的新技术现在进入乳腺癌诊断过程中。本研究的目的是利用美国弹性摄影技术和美国B模式的组合来评估神经网络的诊断性能。背部繁殖神经网络(BPN)用于将乳腺肿块分类为良性囊肿,良性固体物质或使用从分段病变计算的形态特征和形态特征的恶性固体物质。检查了美国弹性造影和美国B型扫描图像的六十二次乳房病变被证明是活检的。使用美国弹性造影和B扫描图像的组合的分类准确度为87.09%,灵敏度89.29%,特异性85.29%,阳性预测值83.33%,负预测值为90.63%。在统计上显着的特征,使用美国弹性造影和B扫描图像的组合的分类精度为82.25%,灵敏度为82.25%,特异性73.53%,阳性预测值74.29%和负预测值92.59%。分类结果表明,美国弹性摄影与美国B模式相结合,提高了敏感性和特异性。

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