Breast cancer classification from ultrasonic images based on sparse representation by exploiting redundancy

Abdullah Al Helal, K. Ahmed, Md. Saifur Rahman, S. Alam
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引用次数: 7

Abstract

We present a Sparse Representation-based Classifier (SRC) that provides superior performance in terms of high Area Under the Receiver Operating Characteristic (ROC) Curve (AUC) in classifying benign and malignant breast lesions captured in ultrasound images. Although such a classifier was proposed for face recognition, it has been proposed in medical diagnosis from ultrasonic images in this work for the first time. The classifier is based on ℓ1-norm based sparse representation of a patient's test data in terms of linear combination of the features of the benign and malignant test lesions available in the training set. The proposed classifier introduces an index called Sparsity Rank (SR) for the classification obtained from the normalized energy of the weights as a linear combination of the global sparse representation of the ultrasound images of the training set. The performance of the classifier is further enhanced to a great extent by two ways: first, by intelligently combining the features extracted from the multiple ultrasound scan of the same mass, and the second, by using the optimal feature set obtained by a suboptimal strategy that avoids the time exhaustive brute force approach that has a combinatorial search space. With all the enhancements an AUC of 0.9802 has been achieved, when training and testing sets are chosen by leave-one-out approach from the data set.
基于冗余稀疏表示的超声图像乳腺癌分类
我们提出了一种基于稀疏表示的分类器(SRC),它在对超声图像中捕获的乳腺良恶性病变进行分类时,在接受者工作特征(ROC)曲线下的高面积(AUC)方面提供了优越的性能。虽然这种分类器是针对人脸识别提出的,但在本工作中首次将其用于超声图像的医学诊断。该分类器基于训练集中可用的良性和恶性测试病变特征的线性组合,对患者的测试数据进行基于1-范数的稀疏表示。该分类器引入了一个称为稀疏秩(SR)的指标,用于将权重的归一化能量作为训练集超声图像全局稀疏表示的线性组合进行分类。通过两种方式进一步提高分类器的性能:一是通过智能组合从同一肿块的多次超声扫描中提取的特征;二是利用次优策略获得的最优特征集,避免了具有组合搜索空间的时间穷举蛮力方法。通过所有的增强,当通过从数据集中选择训练集和测试集时,AUC达到了0.9802。
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