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使用BI-RADS特征的乳腺超声计算机辅助诊断

Breast ultrasound computer-aided diagnosis using BI-RADS features.

作者信息

Shen Wei-Chih, Chang Ruey-Feng, Moon Woo Kyung, Chou Yi-Hong, Huang Chiun-Sheng

机构信息

Department of Computer Science and Information Engineering, National Chung Cheng University, Chiayi, Taiwan, ROC.

出版信息

Acad Radiol. 2007 Aug;14(8):928-39. doi: 10.1016/j.acra.2007.04.016.

Abstract

RATIONALE AND OBJECTIVES

Based on the definitions in mass category of Breast Imaging Reporting and Data System developed by American College of Radiology, eight computerized features including shape, orientation, margin, lesion boundary, echo pattern, and posterior acoustic feature classes are proposed.

MATERIALS AND METHODS

Our experimental database consists of 265 pathology-proven cases including 180 benign and 85 malignant masses. The capacity of each proposed feature in differentiating malignant from benign masses was validated by Student's t test and the correlation between each proposed feature and the pathological result was evaluated by point biserial coefficient. Binary logistic regression model was used to relate all proposed features and pathological result as a computer-aided diagnosis (CAD) system. The diagnostic value of each proposed feature in the CAD system was further evaluated by the feature selection methods. Additionally, the likelihood of malignancy for each individual feature was also estimated by binary logistic regression.

RESULTS

On each proposed feature, the malignant cases were significantly different from the benign ones. The correlation between the angular characteristic and pathological result was indicated as very high. Three substantial correlations appear in features irregular shape, undulation characteristic, and degree of abrupt interface, but the relationship for orientation feature is low. For the constructed CAD system, the performance indices accuracy, sensitivity, specificity, PPV, and NPV were 91.70% (243 of 265), 90.59% (77 of 85), 92.22% (166 of 180), 84.62% (77 of 91), and 95.40% (166 of 174), respectively, and the area index in the ROC analysis was 0.97. Compared with the significant contribution of angular characteristic, the diagnostic values of posterior acoustic feature and orientation feature were relatively low for the CAD system. When three or more angular characteristics are discovered or the degree of abrupt interface is lower than 18, the likelihood of malignancy could be predicted as greater than 40%.

CONCLUSION

The computerized BI-RADS sonographic features conform to the sign of malignancy in the clinical experience and efficiently help the CAD system to diagnose the mass.

摘要

原理与目的

根据美国放射学会制定的乳腺影像报告和数据系统中肿块类别的定义,提出了包括形状、方向、边缘、病变边界、回声模式和后方回声特征类别在内的八个计算机化特征。

材料与方法

我们的实验数据库由265例经病理证实的病例组成,包括180例良性肿块和85例恶性肿块。通过学生t检验验证每个提出的特征在区分恶性肿块和良性肿块方面的能力,并通过点二列相关系数评估每个提出的特征与病理结果之间的相关性。使用二元逻辑回归模型将所有提出的特征和病理结果关联起来,作为一个计算机辅助诊断(CAD)系统。通过特征选择方法进一步评估CAD系统中每个提出的特征的诊断价值。此外,还通过二元逻辑回归估计每个个体特征的恶性可能性。

结果

在每个提出的特征上,恶性病例与良性病例有显著差异。角度特征与病理结果之间的相关性显示非常高。在不规则形状、起伏特征和界面突变程度等特征中出现了三个显著相关性,但方向特征的相关性较低。对于构建的CAD系统,性能指标准确性、敏感性、特异性、阳性预测值和阴性预测值分别为91.70%(265例中的243例)、90.59%(85例中的77例)、92.22%(180例中的166例)、84.62%(91例中的77例)和95.40%(174例中的166例),ROC分析中的面积指数为0.97。与角度特征的显著贡献相比,后方回声特征和方向特征对CAD系统的诊断价值相对较低。当发现三个或更多角度特征或界面突变程度低于18时,恶性可能性可预测为大于40%。

结论

计算机化的BI-RADS超声特征符合临床经验中的恶性征象,并有效地帮助CAD系统诊断肿块。

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