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Development of computer-aided diagnostic system for breast MRI lesion classification.

机译:乳腺MRI病变分类计算机辅助诊断系统的开发。

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Breast cancer is the second leading cause of cancer deaths in women today. Currently, mammography is the primary method of early detection. However, research has shown that many cases (10--30%) missed by mammography can be detected using breast MRI (BMRI). BMRI is more difficult to interpret than mammography because it generates significantly more data. Also, there are fewer people qualified to use it for diagnosis because it is not the standard breast imaging modality.; Our goal is to develop and test a CAD system to aid and improve the performance of radiologists with different levels of experience in reading breast MR images. Part of the CAD system is an image loader and viewer capable of displaying multiple sequences simultaneously, with standard region of interest and high level analysis tools. We propose a semi-automatic segmentation method that identifies significant lesions. Then, 42 shape, texture, and enhancement kinetics based features were computed. The top 13 best features were selected and used as inputs to three artificial classifiers: a backpropagation neural network (BNN), a support vector machine (SVM), and a Bayesian classifier (BC). Each one was trained using pathology results as the gold standard. Five human readers (a BMRI expert, two mammographers, and two body imaging fellows) manually classified 75 BMRI datasets (80 lesions), both with and without CAD system assistance. The performance of the computer classifiers and human readers were compared using ROC curves, and the human readers' performance was also evaluated using MRMC analysis.; The ROC curve analysis showed that the BNN system significantly outperformed the other two classifiers with Az = 0.970, and p 0.05, and a sensitivity of 91.3% with zero false positives. Also, all human readers significantly improved when aided by the CAD system (p 0.05). The MRMC analysis showed that the human reader performance with and without CAD system assistance can be generalized over the population of cases and still maintain a statistically significant improvement (F(1, 74) = 6.805, p = 0.0110 0.05). These results show significant advantages to using CAD systems in classifying BMRI lesions.
机译:乳腺癌是当今女性癌症死亡的第二大主要原因。当前,乳房X线照相术是早期发现的主要方法。但是,研究表明,使用乳房MRI(BMRI)可以发现许多X线钼靶漏诊的病例(10--30%)。 BMRI比乳腺摄影更难解释,因为它产生的数据更多。而且,由于它不是标准的乳房成像方法,因此有资格将其用于诊断的人数也较少。我们的目标是开发和测试CAD系统,以帮助和提高具有不同经验的放射线医师在读取乳房MR图像方面的表现。 CAD系统的一部分是图像加载器和查看器,能够同时显示多个序列,并带有标准的关注区域和高级分析工具。我们提出了一种识别重要病变的半自动分割方法。然后,计算了42种基于形状,纹理和增强动力学的特征。选择了前13个最佳功能,并将其用作三个人工分类器的输入:反向传播神经网络(BNN),支持向量机(SVM)和贝叶斯分类器(BC)。使用病理结果作为金标准对每个人进行了培训。五位人类读者(一名BMRI专家,两名乳房X线照相术专家和两名人体成像研究员)手动对75个BMRI数据集(80个病灶)进行了分类,无论有没有CAD系统辅助。使用ROC曲线比较计算机分类器和人类阅读器的性能,并使用MRMC分析评估人类阅读器的性能。 ROC曲线分析显示,BNN系统的性能优于其他两个分类器,Az = 0.970,p <0.05,假阳性为零,灵敏度为91.3%。同样,在CAD系统的辅助下,所有人类读者都得到了显着改善(p <0.05)。 MRMC分析表明,无论有没有CAD系统辅助,人类阅读器的性能都可以在整个案例中得到概括,并且仍保持统计学上的显着改善(F(1,74)= 6.805,p = 0.0110 <0.05)。这些结果显示了使用CAD系统对BMRI病变进行分类的显着优势。

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