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基于形状能量特征的群体图像中秀丽隐杆线虫的自动识别。

Automatic identification of Caenorhabditis elegans in population images by shape energy features.

机构信息

Telecommunications and Information Processing Department (TELIN-IPI-IBBT), Gent University, St-Pieternieuwstraat 41, B 9000 Gent, Belgium.

出版信息

J Microsc. 2010 May;238(2):173-84. doi: 10.1111/j.1365-2818.2009.03339.x.

Abstract

Experiments on model organisms are used to extend the understanding of complex biological processes. In Caenorhabditis elegans studies, populations of specimens are sampled to measure certain morphological properties and a population is characterized based on statistics extracted from such samples. Automatic detection of C. elegans in such culture images is a difficult problem. The images are affected by clutter, overlap and image degradations. In this paper, we exploit shape and appearance differences between C. elegans and non-C. elegans segmentations. Shape information is captured by optimizing a parametric open contour model on training data. Features derived from the contour energies are proposed as shape descriptors and integrated in a probabilistic framework. These descriptors are evaluated for C. elegans detection in culture images. Our experiments show that measurements extracted from these samples correlate well with ground truth data. These positive results indicate that the proposed approach can be used for quantitative analysis of complex nematode images.

摘要

在模式生物上进行实验,有助于我们加深对复杂生物过程的理解。在秀丽隐杆线虫的研究中,通过对样本进行抽样来测量某些形态特征,并基于从这些样本中提取的统计数据来对一个群体进行特征描述。在这种培养图像中自动检测秀丽隐杆线虫是一个难题。这些图像受到杂波、重叠和图像退化的影响。在本文中,我们利用秀丽隐杆线虫和非秀丽隐杆线虫分割之间的形状和外观差异。通过在训练数据上优化参数化开放轮廓模型来获取形状信息。从轮廓能量中提取的特征被提出作为形状描述符,并集成到概率框架中。这些描述符用于在培养图像中检测秀丽隐杆线虫。我们的实验表明,从这些样本中提取的测量值与真实数据很好地相关。这些积极的结果表明,所提出的方法可用于对复杂线虫图像进行定量分析。

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