Lu Cheng, Ji Mengyao, Ma Zhen, Mandal Mrinal
College of Computer Science, Shaanxi Normal University, Xi'an, Shaanxi Province, China.
Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, Hubei, China.
J Microsc. 2015 Jun;258(3):233-40. doi: 10.1111/jmi.12237. Epub 2015 Mar 18.
We developed a computer-aided technique to study nuclear atypia classification in high-power field haematoxylin and eosin stained images.
An automated technique for nuclear atypia score (NAS) calculation is proposed. The proposed technique uses sophisticated digital image analysis and machine-learning methods to measure the NAS for haematoxylin and eosin stained images. The proposed technique first segments all nuclei regions. A set of morphology and texture features is extracted from presegmented nuclei regions. The histogram of each feature is then calculated to characterize the statistical information of the nuclei. Finally, a support vector machine classifier is applied to classify a high-power field image into different nuclear atypia classes. A set of 1188 digital images was analysed in the experiment. We successfully differentiated the high-power field image with NAS1 versus non-NAS1, NAS2 versus non-NAS2 and NAS3 versus non-NAS3, with area under receiver-operating characteristic curve of 0.90, 0.86 and 0.87, respectively. In three classes evaluation, the average classification accuracy was 78.79%. We found that texture-based feature provides best performance for the classification.
The automated technique is able to quantify statistical features that may be difficult to be measured by human and demonstrates the future potentials of automated image analysis technique in histopathology analysis.
我们开发了一种计算机辅助技术,用于研究苏木精和伊红染色的高倍视野图像中的核异型性分类。
提出了一种用于计算核异型性评分(NAS)的自动化技术。该技术采用先进的数字图像分析和机器学习方法来测量苏木精和伊红染色图像的NAS。该技术首先分割所有细胞核区域。从预先分割的细胞核区域中提取一组形态和纹理特征。然后计算每个特征的直方图以表征细胞核的统计信息。最后,应用支持向量机分类器将高倍视野图像分类为不同的核异型性类别。实验中分析了一组1188张数字图像。我们成功区分了NAS1与非NAS1、NAS2与非NAS2以及NAS3与非NAS3的高倍视野图像,受试者操作特征曲线下面积分别为0.90、0.86和0.87。在三类评估中,平均分类准确率为78.79%。我们发现基于纹理的特征在分类中表现最佳。
该自动化技术能够量化一些可能难以由人工测量的统计特征,并展示了自动化图像分析技术在组织病理学分析中的未来潜力。