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首页> 外文期刊>Journal of medical systems >A Hybridized ELM for Automatic Micro Calcification Detection in Mammogram Images Based on Multi-Scale Features
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A Hybridized ELM for Automatic Micro Calcification Detection in Mammogram Images Based on Multi-Scale Features

机译:基于多尺度特征的乳房X线图像图像中的自动微钙化检测杂交ELM

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摘要

Detection of masses and micro calcifications are a stimulating task for radiologists in digital mammogram images. Radiologists using Computer Aided Detection (CAD) frameworks to find the breast lesion. Micro calcification may be the early sign of breast cancer. There are different kinds of methods used to detect and recognize micro calcification from mammogram images. This paper presents an ELM (Extreme Learning Machine) algorithm for micro calcification detection in digital mammogram images. The interference of mammographic image is removed at the pre-processing stages. A multi-scale features are extracted by a feature generation model. The performance did not improve by all extracted feature, therefore feature selection is performed by nature-inspired optimization algorithm. At last, the hybridized ELM classifier taken the selected optimal features to classify malignant from benign micro calcifications. The proposed work is compared with various classifiers and it shown better performance in training time, sensitivity, specificity and accuracy. The existing approaches considered here are SVM (Support Vector Machine) and NB (Naive Bayes classifier). The proposed detection system provides 99.04% accuracy which is the better performance than the existing approaches. The optimal selection of feature vectors and the efficient classifier improves the performance of proposed system. Results illustrate the classification performance is better when compared with several other classification approaches.
机译:质量和微钙化的检测是数字乳房图像图像中放射科学家的刺激任务。使用计算机辅助检测(CAD)框架的放射科医师找到乳房病变。微钙化可能是乳腺癌的早期迹象。有不同种类的方法用于从乳房X线照片图像中检测和识别微钙化。本文介绍了数字乳房图像图像中微钙化检测的ELM(极端学习机)算法。在预处理阶段移除乳房X线图图像的干扰。通过特征生成模型提取多尺度特征。所有提取的功能没有改善性能,因此通过自然启发优化算法执行特征选择。最后,杂交的ELM分类器采用所选择的最佳特征来分类恶性微钙。拟议的工作与各种分类器进行比较,并在训练时间,敏感度,特异性和准确性方面表现出更好的性能。这里考虑的现有方法是SVM(支持向量机)和NB(天真凸鸟分类器)。所提出的检测系统提供99.04%的精度,比现有方法更好。特征向量的最佳选择和有效分类器提高了所提出的系统的性能。结果说明与其他几种分类方法相比,分类性能更好。

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