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使用尺度不变特征变换对秀丽隐杆线虫运动进行独立于模型的表型分析。

Model-independent phenotyping of C. elegans locomotion using scale-invariant feature transform.

作者信息

Koren Yelena, Sznitman Raphael, Arratia Paulo E, Carls Christopher, Krajacic Predrag, Brown André E X, Sznitman Josué

机构信息

Department of Biomedical Engineering, Technion-Israel Institute of Technology, Israel.

Ophthalmic Technology Group, ARTORG Center, University of Bern, Switzerland.

出版信息

PLoS One. 2015 Mar 27;10(3):e0122326. doi: 10.1371/journal.pone.0122326. eCollection 2015.

Abstract

To uncover the genetic basis of behavioral traits in the model organism C. elegans, a common strategy is to study locomotion defects in mutants. Despite efforts to introduce (semi-)automated phenotyping strategies, current methods overwhelmingly depend on worm-specific features that must be hand-crafted and as such are not generalizable for phenotyping motility in other animal models. Hence, there is an ongoing need for robust algorithms that can automatically analyze and classify motility phenotypes quantitatively. To this end, we have developed a fully-automated approach to characterize C. elegans' phenotypes that does not require the definition of nematode-specific features. Rather, we make use of the popular computer vision Scale-Invariant Feature Transform (SIFT) from which we construct histograms of commonly-observed SIFT features to represent nematode motility. We first evaluated our method on a synthetic dataset simulating a range of nematode crawling gaits. Next, we evaluated our algorithm on two distinct datasets of crawling C. elegans with mutants affecting neuromuscular structure and function. Not only is our algorithm able to detect differences between strains, results capture similarities in locomotory phenotypes that lead to clustering that is consistent with expectations based on genetic relationships. Our proposed approach generalizes directly and should be applicable to other animal models. Such applicability holds promise for computational ethology as more groups collect high-resolution image data of animal behavior.

摘要

为了揭示模式生物秀丽隐杆线虫行为特征的遗传基础,一种常见的策略是研究突变体的运动缺陷。尽管人们努力引入(半)自动化表型分析策略,但目前的方法绝大多数依赖于必须手工制作的线虫特定特征,因此无法推广用于其他动物模型的运动表型分析。因此,一直需要能够自动定量分析和分类运动表型的强大算法。为此,我们开发了一种完全自动化的方法来表征秀丽隐杆线虫的表型,该方法不需要定义线虫特定特征。相反,我们利用流行的计算机视觉尺度不变特征变换(SIFT),从中构建常见SIFT特征的直方图来表示线虫的运动。我们首先在模拟一系列线虫爬行步态的合成数据集上评估了我们的方法。接下来,我们在两个不同的秀丽隐杆线虫爬行数据集上评估了我们的算法,这些数据集包含影响神经肌肉结构和功能的突变体。我们的算法不仅能够检测不同菌株之间的差异,结果还捕捉到了运动表型中的相似性,这些相似性导致的聚类与基于遗传关系的预期一致。我们提出的方法可以直接推广,应该适用于其他动物模型。随着越来越多的研究小组收集动物行为的高分辨率图像数据,这种适用性为计算行为学带来了希望。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0fae/4376858/036029b4b6f1/pone.0122326.g001.jpg

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