Roussel Nicolas, Sprenger Jeff, Tappan Susan J, Glaser Jack R
MBF Bioscience; Williston, VT USA.
Worm. 2015 Jan 22;3(4):e982437. doi: 10.4161/21624054.2014.982437. eCollection 2014 Oct-Dec.
The behavior of the well-characterized nematode, Caenorhabditis elegans (C. elegans), is often used to study the neurologic control of sensory and motor systems in models of health and neurodegenerative disease. To advance the quantification of behaviors to match the progress made in the breakthroughs of genetics, RNA, proteins, and neuronal circuitry, analysis must be able to extract subtle changes in worm locomotion across a population. The analysis of worm crawling motion is complex due to self-overlap, coiling, and entanglement. Using current techniques, the scope of the analysis is typically restricted to worms to their non-occluded, uncoiled state which is incomplete and fundamentally biased. Using a model describing the worm shape and crawling motion, we designed a deformable shape estimation algorithm that is robust to coiling and entanglement. This model-based shape estimation algorithm has been incorporated into a framework where multiple worms can be automatically detected and tracked simultaneously throughout the entire video sequence, thereby increasing throughput as well as data validity. The newly developed algorithms were validated against 10 manually labeled datasets obtained from video sequences comprised of various image resolutions and video frame rates. The data presented demonstrate that tracking methods incorporated in WormLab enable stable and accurate detection of these worms through coiling and entanglement. Such challenging tracking scenarios are common occurrences during normal worm locomotion. The ability for the described approach to provide stable and accurate detection of C. elegans is critical to achieve unbiased locomotory analysis of worm motion.
特征明确的线虫秀丽隐杆线虫(C. elegans)的行为常被用于研究健康和神经退行性疾病模型中感觉和运动系统的神经控制。为了使行为量化与遗传学、RNA、蛋白质和神经元回路等方面的突破同步,分析必须能够提取群体中线虫运动的细微变化。由于线虫的自我重叠、盘绕和缠结,其爬行运动的分析较为复杂。使用当前技术,分析范围通常局限于线虫处于非遮挡、未盘绕状态,这是不完整且存在根本偏差的。通过一个描述线虫形状和爬行运动的模型,我们设计了一种对盘绕和缠结具有鲁棒性的可变形形状估计算法。这种基于模型的形状估计算法已被纳入一个框架,在整个视频序列中可以同时自动检测和跟踪多条线虫,从而提高了通量以及数据有效性。新开发的算法针对从具有各种图像分辨率和视频帧率的视频序列中获得的10个手动标注数据集进行了验证。所呈现的数据表明,WormLab中包含的跟踪方法能够通过盘绕和缠结稳定而准确地检测这些线虫。在正常线虫运动过程中,这种具有挑战性的跟踪场景很常见。所述方法能够稳定而准确地检测秀丽隐杆线虫,对于实现线虫运动的无偏运动分析至关重要。