Curvelet-based texture classification of critical Gleason patterns of prostate histological images

Wen-Chyi Lin, Ching-Chung Li, J. Epstein, R. Veltri
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引用次数: 8

Abstract

This paper presents our new result of a study on machine-aided classification of four critical Gleason patterns with curvelet-based texture descriptors extracted from prostatic histological section images. The reliable recognition of these patterns between Gleason score 6 and Gleason score 8 is of crucial importance that will affect the appropriate treatment and patient's quality of life. Higher-order statistical moments of fine scale curvelet coefficients are selected as discriminative features. A two-level classifier consisting of two Gaussian kernel support vector machines, each incorporated with a pertinent voting mechanism by multiple windowed patches in an image for final decision making, has been developed. A set of Tissue MicroArray (TMA) images of four prominent Gleason scores (GS) 3 + 3, 3 + 4, 4 + 3 and 4 + 4 has been studied in machine learning and testing. The testing result has achieved an average accuracy of 93.75% for 4 classes, an outstanding performance when compared with other published works.
基于曲线的前列腺组织学图像关键Gleason模式纹理分类
本文介绍了我们利用从前列腺组织学切片图像中提取的基于曲线的纹理描述符对四种关键Gleason模式进行机器辅助分类的新结果。对Gleason评分6分和Gleason评分8分之间的这些模式的可靠识别至关重要,这将影响到适当的治疗和患者的生活质量。选取细尺度曲线系数的高阶统计矩作为判别特征。提出了一种由两个高斯核支持向量机组成的两级分类器,每个高斯核支持向量机通过图像中的多个窗口补丁与相关投票机制相结合,以进行最终决策。在机器学习和测试中研究了四组突出的Gleason评分(GS) 3 + 3,3 + 4,4 + 3和4 + 4的组织微阵列(TMA)图像。测试结果表明,4个类别的平均准确率达到了93.75%,与其他已发表的作品相比表现优异。
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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