Drosophila Eye Nuclei Segmentation Based on Graph Cut and Convex Shape Prior.

Jin Qi, B Wang, N Pelaez, I Rebay, R W Carthew, A K Katsaggelos, L A Nunes Amaral
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引用次数: 9

Abstract

The rapid advance in three-dimensional (3D) confocal imaging technologies is rapidly increasing the availability of 3D cellular images. However, the lack of robust automated methods for the extraction of cell or organelle shapes from the images is hindering researchers ability to take full advantage of the increase in experimental output. The lack of appropriate methods is particularly significant when the density of the features of interest in high, such as in the developing eye of the fruit fly. Here, we present a novel and efficient nuclei segmentation algorithm based on the combination of graph cut and convex shape prior. The main characteristic of the algorithm is that it segments nuclei foreground using a graph cut algorithm and splits overlapping or touching cell nuclei by simple convex and concavity analysis, using a convex shape assumption for nuclei contour. We evaluate the performance of our method by applying it to a library of publicly-available two-dimensional (2D) images that were hand-labeled by experts. Our algorithm yields a substantial quantitative improvement over other methods for this benchmark. For example, our method achieves a decrease of 3.2 in the Hausdorff distance and an decrease of 1.8 per slice in the merged nuclei error.

基于图切和凸形状先验的果蝇眼核分割。
三维(3D)共聚焦成像技术的快速发展迅速增加了三维细胞图像的可用性。然而,缺乏从图像中提取细胞或细胞器形状的强大的自动化方法阻碍了研究人员充分利用实验输出增加的能力。当感兴趣的特征密度高时,例如在发育中的果蝇眼睛中,缺乏适当的方法尤为重要。本文提出了一种基于图切和凸形状先验相结合的高效核分割算法。该算法的主要特点是使用图切算法分割细胞核前景,通过简单的凹凸分析分割重叠或接触的细胞核,对细胞核轮廓采用凸形假设。我们通过将其应用于由专家手工标记的公开可用的二维(2D)图像库来评估我们的方法的性能。对于这个基准,我们的算法比其他方法产生了实质性的定量改进。例如,我们的方法实现了Hausdorff距离每切片减小3.2,合并核误差每切片减小1.8。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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