Suppr超能文献

三维乳腺磁共振图像中可疑恶性特征的检测

Detection of suspected malignant patterns in three-dimensional magnetic resonance breast images.

作者信息

el-Kwae E A, Fishman J E, Bianchi M J, Pattany P M, Kabuka M R

机构信息

Department of Radiology, University of Miami, FL 33136, USA.

出版信息

J Digit Imaging. 1998 May;11(2):83-93. doi: 10.1007/BF03168730.

Abstract

In this article, a Boolean Neural Network (BNN) is used for the detection of suspected malignant regions in 3D breast magnetic resonance (MR) images. The BNN is characterized by fast learning and classification, guaranteed convergence, and simple, integer weight calculations. The BNN learning algorithm is incremental, which allows the addition and deletion of training patterns without unlearning those already learned. The incremental learning algorithm automatically reduces the training set and trains the network only with those examples estimated to be useful. The architecture is suitable for parallel hardware implementation using available Very Large Scale Integration (VLSI) technology. The BNN was trained by using a set of malignant, benign, and false-positive patterns, extracted by experts, from selected MR studies, by using an incremental learning algorithm. After training, the network was tested by means of a consistency checking test, cross validation techniques, and patterns from actual MR breast images. During the consistency test, the BNN was tested by using the same patterns used for training. The BNN classification accuracy in this case was 99.75%, proving the ability of the BNN to select useful patterns from the training set. Then, a leave one out cross-validation (LOOCV) test was done by using patterns from the training set and the classification accuracy was 90%. Next, an extended training set was created by shifting the original patterns in different directions. A cross-validation test was then performed by dividing the set of patterns into a training and a test set. Classification accuracy was compared to the nearest neighbor classifier. Results showed that the BNN achieved an average of 77% classification accuracy while requiring only 34% of the original training set. On the other hand, the nearest neighbor classifier achieved an accuracy of 57.9% while retaining the whole training set. Another test using actual MR slices different from the training set was done and results compared favorably to a radiologist's findings. Test results show the BNN's capability to detect suspected malignant regions in 3D MR images of the breast. The proposed BNN architecture can save the radiologist a great deal of time browsing MR slices searching for suspected malignancies.

摘要

在本文中,布尔神经网络(BNN)用于检测三维乳腺磁共振(MR)图像中的疑似恶性区域。BNN的特点是学习和分类速度快、保证收敛,且权重计算简单、为整数。BNN学习算法是增量式的,允许在不忘记已学习模式的情况下添加和删除训练模式。增量学习算法会自动减少训练集,仅用估计有用的示例来训练网络。该架构适用于使用现有超大规模集成(VLSI)技术进行并行硬件实现。通过使用一组由专家从选定的MR研究中提取的恶性、良性和假阳性模式,利用增量学习算法对BNN进行训练。训练后,通过一致性检查测试、交叉验证技术以及来自实际乳腺MR图像的模式对网络进行测试。在一致性测试期间,使用用于训练的相同模式对BNN进行测试。此时BNN的分类准确率为99.75%,证明了BNN从训练集中选择有用模式的能力。然后,使用训练集的模式进行留一法交叉验证(LOOCV)测试,分类准确率为90%。接下来,通过在不同方向上移动原始模式创建一个扩展训练集。然后将模式集划分为训练集和测试集进行交叉验证测试。将分类准确率与最近邻分类器进行比较。结果表明,BNN平均分类准确率达到77%,而仅需要原始训练集的34%。另一方面,最近邻分类器在保留整个训练集的情况下准确率为57.9%。使用与训练集不同的实际MR切片进行的另一项测试结果与放射科医生的诊断结果相比表现良好。测试结果表明BNN能够检测乳腺三维MR图像中的疑似恶性区域。所提出的BNN架构可以为放射科医生节省大量浏览MR切片以寻找疑似恶性肿瘤的时间。

相似文献

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验