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Mass Classification in Mammography with Multi-Agent based Fusion of Human and Machine Intelligence

机译:基于多智能体的人类和机器智能乳房X线照相X线摄影的质量分类

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Although the computer-aided diagnosis (CAD) system can be applied for classifying the breast masses, the effects of this method on improvement of the radiologist' accuracy for distinguishing malignant from benign lesions still remain unclear. This study provided a novel method to classify breast masses by integrating the intelligence of human and machine. In this research, 224 breast masses were selected in mammography from database of DDSM with Breast Imaging Reporting and Data System (BI-RADS) categories. Three observers (a senior and a junior radiologist, as well as a radiology resident) were employed to independently read and classify these masses utilizing the Positive Predictive Values (PPV) for each BI-RADS category. Meanwhile, a CAD system was also implemented for classification of these breast masses between malignant and benign. To combine the decisions from the radiologists and CAD, the fusion method of the Multi-Agent was provided. Significant improvements are observed for the fusion system over solely radiologist or CAD. The area under the receiver operating characteristic curve (AUC) of the fusion system increased by 9.6%, 10.3% and 21% compared to that of radiologists with senior, junior and resident level, respectively. In addition, the AUC of this method based on the fusion of each radiologist and CAD are 3.5%, 3.6% and 3.3% higher than that of CAD alone. Finally, the fusion of the three radiologists with CAD achieved AUC value of 0.957, which was 5.6% larger compared to CAD. Our results indicated that the proposed fusion method has better performance than radiologist or CAD alone.
机译:虽然计算机辅助诊断(CAD)系统可以应用于对乳腺菌群体进行分类,但这种方法对区分恶性良性病变的放射科学精确度的改善仍然不明确。本研究提供了一种通过整合人和机器智能来分类乳房群众的新方法。在本研究中,从DDSM数据库中选择了224个乳腺肿块,乳房成像报告和数据系统(BI-RADS)类别。使用三个观察者(高级和初级放射科医师以及放射学居民)来利用每个BI-RAD类别的阳性预测值(PPV)来独立地读取和分类这些群众。同时,也实施了CAD系统,用于分类恶性和良性之间的这些乳腺菌群。为了结合放射科学家和CAD的决定,提供了多助剂的融合方法。对单独放射科医师或CAD的融合系统观察到显着改进。与高级,初级和居民水平的放射科医生相比,融合系统的接收器操作特性曲线(AUC)下的该区域分别增加了9.6%,10.3%和21%。此外,基于每个放射科医生和CAD的融合的这种方法的AUC为3.5%,仅比CAD的融合3.5%,3.6%和3.3%。最后,与CAD相比,三位与CAD的融合率为0.957的AUC值为5.6%。我们的结果表明,拟议的融合方法仅具有比放射科医师或CAD更好的性能。

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