Department of Biomedical Engineering, PSG College of Technology, Coimbatore, India.
Comput Biol Med. 2012 Sep;42(9):898-905. doi: 10.1016/j.compbiomed.2012.07.001. Epub 2012 Aug 4.
The objective of this paper is to reveal the effectiveness of wavelet based tissue texture analysis for microcalcification detection in digitized mammograms using Extreme Learning Machine (ELM). Microcalcifications are tiny deposits of calcium in the breast tissue which are potential indicators for early detection of breast cancer. The dense nature of the breast tissue and the poor contrast of the mammogram image prohibit the effectiveness in identifying microcalcifications. Hence, a new approach to discriminate the microcalcifications from the normal tissue is done using wavelet features and is compared with different feature vectors extracted using Gray Level Spatial Dependence Matrix (GLSDM) and Gabor filter based techniques. A total of 120 Region of Interests (ROIs) extracted from 55 mammogram images of mini-Mias database, including normal and microcalcification images are used in the current research. The network is trained with the above mentioned features and the results denote that ELM produces relatively better classification accuracy (94%) with a significant reduction in training time than the other artificial neural networks like Bayesnet classifier, Naivebayes classifier, and Support Vector Machine. ELM also avoids problems like local minima, improper learning rate, and over fitting.
本文旨在揭示基于小波的组织纹理分析在使用极限学习机 (ELM) 对数字化乳房 X 光片中的微钙化进行检测的有效性。微钙化是乳腺组织中钙的微小沉积,是早期乳腺癌检测的潜在指标。乳腺组织的密集性质和乳房 X 光图像的对比度差使得识别微钙化的效果不佳。因此,使用小波特征提出了一种从正常组织中区分微钙化的新方法,并与使用灰度空间相关矩阵 (GLSDM) 和基于 Gabor 滤波器的技术提取的不同特征向量进行了比较。目前的研究使用了来自 Mini-MIAS 数据库的 55 张乳房 X 光图像中的 120 个感兴趣区域 (ROI),包括正常和微钙化图像。该网络使用上述特征进行训练,结果表明 ELM 产生了相对较高的分类准确率(94%),与贝叶斯网络分类器、朴素贝叶斯分类器和支持向量机等其他人工神经网络相比,训练时间显著减少。ELM 还避免了局部极小值、学习率不当和过拟合等问题。