Zhang Z, Ge Y, Zhang D, Zhou X
Institute of Acoustics, Key Lab of Modern Acoustics, MOE, Nanjing University, Nanjing, China.
Methods Inf Med. 2011;50(3):265-72. doi: 10.3414/ME09-01-0030. Epub 2010 Jul 5.
High-content screening (HCS) via automated fluorescent microscopy is a powerful technology for the effective expression of cellular processes. However, HCS will generally produce tremendous image datasets, which leads to difficulties of handling and analyzing. We proposed an automatic classification approach for simultaneous feature extraction and cell phenotype recognition of monoaster and bipolar cells in HCS system.
The proposed approach was composed of image segmentation, feature extraction, and classification. The image segmentation was based on the Laplacian of Gaussian (LoG) edge detection method. For the reduction of noise effect on cellular images, we employed an adaptive threshold in microtubule channel. The principal component analysis was used in the feature selection process. The classification was performed with a back-propagation neural network (BPNN). Using the current approach, the cell phases were distinguished from three-channel acquisitions of cellular images and the numbers of bipolar and monoaster cells were automatically counted.
The validity of this approach was examined by the application of screening the response of drug compounds in suppressing Monastrol. Our results indicate that the proposed algorithm could improve the recognition rates of monoaster and bipolar cells to 97.98% and 93.12%, respectively, compared with 97.02% and 86.96% obtained from the same samples by multi-phenotypic mitotic analysis (MMA).
We have shown that BPNN is a valuable tool to classify cell phenotype. To further improve the classification performance, more test data, more optimized feature selection approaches, and advanced classifier may be required and will be investigated in future works.
通过自动荧光显微镜进行的高内涵筛选(HCS)是一种用于有效表达细胞过程的强大技术。然而,HCS通常会产生大量的图像数据集,这导致处理和分析存在困难。我们提出了一种自动分类方法,用于在HCS系统中同时提取单星体和双极细胞的特征并识别其细胞表型。
所提出的方法由图像分割、特征提取和分类组成。图像分割基于高斯拉普拉斯(LoG)边缘检测方法。为了减少噪声对细胞图像的影响,我们在微管通道中采用了自适应阈值。在特征选择过程中使用主成分分析。分类使用反向传播神经网络(BPNN)进行。使用当前方法,从细胞图像的三通道采集中区分细胞阶段,并自动计数双极细胞和单星体细胞的数量。
通过应用该方法筛选药物化合物对Monastrol的抑制反应来检验其有效性。我们的结果表明,与通过多表型有丝分裂分析(MMA)从相同样本中获得的97.02%和86.96%相比,所提出的算法可将单星体和双极细胞的识别率分别提高到97.98%和93.12%。
我们已经表明BPNN是一种用于分类细胞表型的有价值工具。为了进一步提高分类性能,可能需要更多的测试数据、更优化的特征选择方法和先进的分类器,并将在未来的工作中进行研究。