Qiu Yuchen, Song Jie, Lu Xianglan, Li Yuhua, Zheng Bin, Li Shibo, Liu Hong
Center for Bioengineering and School of Electrical and Computer Engineering, University of Oklahoma, 101 David L. Boren Boulevard, Norman, OK 73019, USA.
Center for Bioengineering and School of Electrical and Computer Engineering, University of Oklahoma, 101 David L. Boren Boulevard, Norman, OK 73019, USA ; Department of Biology, Mudanjiang Medical University, Mudanjiang 157011, China.
Anal Cell Pathol (Amst). 2014;2014:565392. doi: 10.1155/2014/565392. Epub 2014 Nov 11.
The purpose of this study is to identify a set of features for optimizing the performance of metaphase chromosome detection under high throughput scanning microscopy. In the development of computer-aided detection (CAD) scheme, feature selection is critically important, as it directly determines the accuracy of the scheme. Although many features have been examined previously, selecting optimal features is often application oriented.
In this experiment, 200 bone marrow cells were first acquired by a high throughput scanning microscope. Then 9 different features were applied individually to group captured images into the clinically analyzable and unanalyzable classes. The performance of these different methods was assessed by a receiving operating characteristic (ROC) method.
The results show that using the number of labeled regions on each acquired image is suitable for the first on-line CAD scheme. For the second off-line CAD scheme, it would be suggested to combine four feature extraction methods including the number of labeled regions, average regions area, average region pixel value, and the standard deviation of either region distance or circularity.
This study demonstrates an effective method of feature selection and comparison to facilitate the optimization of the CAD schemes for high throughput scanning microscope in the future.
本研究的目的是确定一组特征,以优化高通量扫描显微镜下中期染色体检测的性能。在计算机辅助检测(CAD)方案的开发中,特征选择至关重要,因为它直接决定了方案的准确性。尽管之前已经研究了许多特征,但选择最佳特征通常是面向应用的。
在本实验中,首先通过高通量扫描显微镜获取200个骨髓细胞。然后分别应用9种不同的特征将捕获的图像分为临床可分析和不可分析两类。通过接受操作特征(ROC)方法评估这些不同方法的性能。
结果表明,使用每个采集图像上的标记区域数量适用于第一个在线CAD方案。对于第二个离线CAD方案,建议结合四种特征提取方法,包括标记区域数量、平均区域面积、平均区域像素值以及区域距离或圆形度的标准差。
本研究展示了一种有效的特征选择和比较方法,以便将来优化高通量扫描显微镜的CAD方案。