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首页> 外文期刊>Journal of Digital Imaging >Novel Computer-Aided Diagnosis Algorithms on Ultrasound Image: Effects on Solid Breast Masses Discrimination
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Novel Computer-Aided Diagnosis Algorithms on Ultrasound Image: Effects on Solid Breast Masses Discrimination

机译:超声图像的新型计算机辅助诊断算法:对乳腺肿块鉴别的影响

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摘要

The objective of this study is to retrospectively investigate whether using the newly developed algorithms would improve radiologists’ accuracy for discriminating malignant masses from benign ones on ultrasonographic (US) images. Five radiologists blinded to the histological results and clinical history independently interpreted 226 cases according to the sonographic lexicon of the fourth edition of the Breast Imaging Reporting and Data System and assigned a final assessment category to indicate the probability of malignancy. For each case, each radiologist provided three diagnoses: first with the original images, subsequently with the assistant of the resulting images processed by the proposed CAD algorithms which are called as processed images, and another using the processed images only. Observers’ malignancy rating data were analyzed with the receiver operating characteristic (ROC) curve. For reading only with the processed images, areas under the ROC curve (A z) of each reader (0.863, 0.867, 0.859, 0.868, 0.878) were better than that with the original images (0.772, 0.807, 0.796, 0.828, 0.846), difference of the average A z between the twice reading was significant (p < 0.001). Compared with the results single used processed images, A z of utilizing the combined images were increased (0.866, 0.885, 0.872, 0.894, 0.903), but the difference is not statistically significant (p = 0.081). The proposed CAD method has potential to be a good aid to radiologists in distinguishing malignant breast solid masses from benign ones.
机译:这项研究的目的是回顾性研究使用新开发的算法是否可以提高放射科医生在超声(US)图像上区分恶性肿块与良性肿块的准确性。五名放射学家对组织学结果和临床病史不知情,根据第四版《乳房成像报告和数据系统》的超声词典,独立解释了226例病例,并分配了最终评估类别以表明恶性可能性。对于每种情况,每位放射科医师提供三种诊断:首先是原始图像,然后是由建议的CAD算法处理的所得图像(称为处理后图像)的辅助,另一种仅使用了处理后的图像。观察者的恶性评级数据与接收者的工作特征曲线(ROC)进行了分析。对于仅读取处理过的图像,每个读取器的ROC曲线下面积(A z )(0.863、0.867、0.859、0.868、0.878)优于原始图像(0.772、0.807) ,0.796、0.828、0.846),两次读数之间的平均A z 差异显着(p <0.001)。与单独使用处理过的图像的结果相比,利用组合图像的A z 有所增加(0.866、0.885、0.872、0.894、0.903),但差异无统计学意义(p = 0.081)。所提出的CAD方法有可能对放射科医生区分乳腺良性肿块和良性肿块有很好的帮助。

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