Quick Reduct-ACO based feature selection for TRUS prostate cancer image classification

R. Manavalan, K. Thangavel
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Abstract

Ultrasound imaging is most suitable method for early detection of prostate cancer. It is very difficult to distinguish benign and malignant in the early stage of cancer. This is reflected in the high percentage of unnecessary biopsies that are performed and many deaths caused by late detection or misdiagnosis. A computer based classification system can provide a second opinion to the radiologists. Generally objects are described in terms of a set of measurable features in pattern recognition. Feature selection is a process of selecting the most wanted or dominating features set from the original features set in order to reduce the cost of data visualization and increasing classification efficiency and accuracy. The Region of Interest (ROI) is identified from the Transrectal Ultrasound (TRUS) images using DBSCAN clustering with morphological operators. Then the statistical texture features are extracted from the ROIs. Rough Set based Quick Reduct (QR) and Evolutionary based Ant Colony Optimization (ACO) is studied. In this paper, Hybridization of Rough Set based QR and ACO is proposed for dimensionality reduction. The selected features may have the best discriminatory power for classifying prostate cancer based on TRUS images. Support Vector Machine (SVM) is tailored for evaluation of the proposed feature selection methods through classification. Then, the comparative analysis is performed among these methods. Experimental results show that the proposed method QR-ACO produces significant results. Number of features selected using QR-ACO algorithm is minimal, and is successful and has high detection accuracy.
基于快速约简-蚁群算法的TRUS前列腺癌图像分类特征选择
超声成像是早期发现前列腺癌最合适的方法。在癌症的早期阶段是很难区分良恶性的。这反映在进行的不必要的活组织检查所占的比例很高,以及由于发现晚或误诊造成的许多死亡。基于计算机的分类系统可以为放射科医生提供第二种意见。在模式识别中,对象通常是根据一组可测量的特征来描述的。特征选择是为了降低数据可视化的成本,提高分类效率和准确率,从原始特征集中选择最需要或最主要的特征集的过程。利用形态学算子的DBSCAN聚类方法从经直肠超声(TRUS)图像中识别出感兴趣区域(ROI)。然后从roi中提取统计纹理特征。研究了基于粗糙集的快速约简算法和基于进化的蚁群优化算法。本文提出了基于粗糙集的QR和蚁群算法的杂交降维方法。所选择的特征可能对基于TRUS图像的前列腺癌分类具有最佳的区分能力。支持向量机(SVM)是为通过分类评价所提出的特征选择方法而量身定制的。然后,对这些方法进行了比较分析。实验结果表明,所提出的QR-ACO方法取得了显著的效果。使用QR-ACO算法选择的特征数量最少,并且具有较高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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