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Artificial Neural Network to aid differentiation of malignant and benign breast masses by ultrasound imaging

机译:人工神经网络通过超声成像帮助区分恶性和良性乳腺肿块

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The goal of this study is to evaluate an Artificial Neural Network (ANN) for differentiating benign and malignant breastmasses on ultrasound scans. The ANN was designed with three layers (input, hidden and output layer), where asigmoidal (hyperbolic tangent) response function is used as an activation function at each unit. Data from 54 patientswith biopsy-proven malignant (N=20) and benign (N=34) masses were used to evaluate the diagnostic performance ofthe ANN. Of the seven quantitative features extracted from ultrasound images, only four showed statistically significantdifference between the two categories. These features were margin sharpness, margin echogenicity, angular continuity,and age of patients. The diagnostic performance was evaluated by round-robin substitution to negate bias due to smallsample size. All the input features were standardized to zero-mean and unit-variance to prevent non-uniform learning,which can generate unwanted error. The outputs of the network were analyzed by Receiver Operating Characteristics(ROC). The resulting area under the ROC curve Az was 0.856 ± 0.058 with 95% confidence limit from 0.734 to 0.936,providing 76.5% specificity at 95% sensitivity. The performance of the ANN was comparable to the performance bylogistic regression analysis reported by our group earlier. These results suggest that an ANN when combined withsonography can effectively classify malignant and benign breast lesions.
机译:这项研究的目的是评估一个人工神经网络(ANN),以区分超声扫描中的良性和恶性乳房。 ANN设计为三层(输入层,隐藏层和输出层),其中渐近线(双曲正切)响应函数用作每个单元的激活函数。 54例活检证实为恶性(N = 20)和良性(N = 34)的患者的数据被用于评估ANN的诊断性能。从超声图像中提取的七个定量特征中,只有四个在两个类别之间显示出统计学上的显着差异。这些特征是切缘锐度,切缘回声性,角度连续性和患者年龄。通过循环替换评估诊断性能,以消除由于小样本量引起的偏倚。所有输入功能均标准化为零均值和单位方差,以防止学习不均匀,从而产生不必要的错误。通过接收器工作特性(ROC)分析网络的输出。 ROC曲线Az下的最终面积为0.856±0.058,95%置信限为0.734至0.936,在95%灵敏度下提供76.5%的特异性。人工神经网络的性能可与我们小组先前报道的逻辑回归分析相媲美。这些结果表明,ANN与超声检查相结合可以有效地对恶性和良性乳腺病变进行分类。

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