Automated grading of breast cancer histopathology using spectral clustering with textural and architectural image features

Scott Doyle, S. Agner, A. Madabhushi, M. Feldman, J. Tomaszeweski
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引用次数: 305

Abstract

In this paper we present a novel image analysis methodology for automatically distinguishing low and high grades of breast cancer from digitized histopathology. A set of over 3,400 image features, including textural and nuclear architecture based features, are extracted from a database of 48 breast biopsy tissue studies (30 cancerous and 18 benign images). Spectral clustering is used to reduce the dimensionality of the feature set. A support vector machine (SVM) classifier is used (1) to distinguish between cancerous and non-cancerous images, and (2) to distinguish between images containing low and high grades of cancer. Classification is repeated using different subsets of features to compare their performance. The system achieves a 95.8% accuracy in distinguishing cancer from non-cancer using texture-based characteristics (Gabor filter features), and 93.3% accuracy in distinguishing high from low grades of cancer using architectural features. In addition, we investigate the underlying manifold structure on which the different grades of breast cancer lie as revealed through spectral clustering. The manifold shows a smooth spatial transition from low to high grade breast cancer.
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使用具有纹理和建筑图像特征的光谱聚类对乳腺癌组织病理学进行自动分级
在本文中,我们提出了一种新的图像分析方法,用于从数字化组织病理学中自动区分低级别和高级别乳腺癌。从48个乳腺活检组织研究(30个癌性图像和18个良性图像)的数据库中提取了一组超过3400个图像特征,包括基于纹理和核结构的特征。光谱聚类用于降低特征集的维数。使用支持向量机(SVM)分类器(1)区分癌变和非癌变图像,(2)区分癌变低分级和高分级图像。使用不同的特征子集来重复分类,以比较它们的性能。该系统使用基于纹理的特征(Gabor滤波器特征)区分癌症和非癌症的准确率为95.8%,使用建筑特征区分高级别和低级别癌症的准确率为93.3%。此外,我们研究了通过谱聚类揭示的不同等级乳腺癌的潜在歧管结构。歧管显示从低级别到高级别乳腺癌的平滑空间过渡。
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