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基于多尺度高斯表示和轮廓学习的细胞图像分割。

Multi-scale Gaussian representation and outline-learning based cell image segmentation.

出版信息

BMC Bioinformatics. 2013;14 Suppl 10(Suppl 10):S6. doi: 10.1186/1471-2105-14-S10-S6. Epub 2013 Aug 12.

Abstract

BACKGROUND

High-throughput genome-wide screening to study gene-specific functions, e.g. for drug discovery, demands fast automated image analysis methods to assist in unraveling the full potential of such studies. Image segmentation is typically at the forefront of such analysis as the performance of the subsequent steps, for example, cell classification, cell tracking etc., often relies on the results of segmentation.

METHODS

We present a cell cytoplasm segmentation framework which first separates cell cytoplasm from image background using novel approach of image enhancement and coefficient of variation of multi-scale Gaussian scale-space representation. A novel outline-learning based classification method is developed using regularized logistic regression with embedded feature selection which classifies image pixels as outline/non-outline to give cytoplasm outlines. Refinement of the detected outlines to separate cells from each other is performed in a post-processing step where the nuclei segmentation is used as contextual information.

RESULTS AND CONCLUSIONS

We evaluate the proposed segmentation methodology using two challenging test cases, presenting images with completely different characteristics, with cells of varying size, shape, texture and degrees of overlap. The feature selection and classification framework for outline detection produces very simple sparse models which use only a small subset of the large, generic feature set, that is, only 7 and 5 features for the two cases. Quantitative comparison of the results for the two test cases against state-of-the-art methods show that our methodology outperforms them with an increase of 4-9% in segmentation accuracy with maximum accuracy of 93%. Finally, the results obtained for diverse datasets demonstrate that our framework not only produces accurate segmentation but also generalizes well to different segmentation tasks.

摘要

背景

高通量全基因组筛选技术可用于研究基因的特定功能,例如药物发现,这就需要快速自动化的图像分析方法来协助充分挖掘此类研究的潜力。图像分割通常是此类分析的前沿领域,因为后续步骤的性能(例如细胞分类、细胞跟踪等)通常依赖于分割的结果。

方法

我们提出了一种细胞质分割框架,该框架首先使用图像增强和多尺度高斯尺度空间表示的变异系数的新方法将细胞质与图像背景分离。开发了一种基于轮廓学习的分类方法,该方法使用正则化逻辑回归和嵌入式特征选择,将图像像素分类为轮廓/非轮廓,以获得细胞质轮廓。在后续的细化步骤中,通过细胞核分割作为上下文信息来分离细胞之间的轮廓。

结果与结论

我们使用两个具有挑战性的测试案例评估了所提出的分割方法,这些案例呈现出具有不同特征的图像,其中细胞的大小、形状、纹理和重叠程度各不相同。用于轮廓检测的特征选择和分类框架生成了非常简单的稀疏模型,这些模型仅使用大型通用特征集中的一小部分特征,即对于这两种情况仅使用 7 和 5 个特征。与最先进的方法相比,对这两个测试案例的结果进行定量比较表明,我们的方法的分割精度提高了 4-9%,最高精度达到 93%。最后,对不同数据集的结果表明,我们的框架不仅能够产生准确的分割,而且还可以很好地推广到不同的分割任务。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4afa/3750482/39b8478ef2b6/1471-2105-14-S10-S6-1.jpg

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