基于多小波变换的前列腺病理图像自动分级

K.J. Khouzani, H. Soltanian-Zadeh
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引用次数: 12

摘要

病理图像的组织学分级是用来确定癌变组织的恶性程度。这项任务由病理学家完成。病理学家的这些判断每天都是不一致的,每个人都是不一致的。所以评分是非常主观的,而且在某些情况下,这是一项困难而耗时的任务。提出了一种基于Gleason分级系统的前列腺病理图像自动分级方法。根据格里森分级系统,每个癌变标本被分为五个等级。在我们的方法中,基于从图像的多小波变换中提取的特征进行判断。从分解得到的子矩阵中提取能量和熵特征。然后使用k-NN分类器对每个图像进行分类。并利用小波包提取的特征和二阶矩对各种方法进行了比较。实验结果表明,与其他技术相比,多小波变换具有优越性。对于多小波,严格采样预处理优于重复行预处理,并且对噪声的敏感性较低。我们还发现,第一层分解对噪声非常敏感,因此不应该用于特征提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic grading of pathological images of prostate using multiwavelet transform
Histological grading of pathological images is used to determine the level of malignancy of cancerous tissues. This task is done by pathologists. Pathologists are inconsistent in these judgments from day to day and from person to person. So the grades are very subjective and furthermore in some cases this is a difficult and time-consuming task. This paper presents a new method for automatic grading of pathological images of prostate based on the Gleason grading system. According to the Gleason grading system, each cancerous specimen is assigned one of five grades. In our method the decision is based on features extracted from the multiwavelet transform of images. Energy and entropy features are extracted from submatrices obtained in decomposition. Then a k-NN classifier is used to classify each image. We also used features extracted by wavelet packet and second order moments to compare various methods. Experimental results show the superiority of the multiwavelet transform compared to other techniques. For multiwavelets, critically sampled preprocessing outperforms repeated row preprocessing and has less sensitivity to noise. We also found that the first level of decomposition is very sensitive to noise and thus should not be used for feature extraction.
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