Department of Systems Design Engineering, University of Waterloo, Waterloo, Canada.
Biomed Eng Online. 2010 Oct 6;9:57. doi: 10.1186/1475-925X-9-57.
Methods of manual cell localization and outlining are so onerous that automated tracking methods would seem mandatory for handling huge image sequences, nevertheless manual tracking is, astonishingly, still widely practiced in areas such as cell biology which are outside the influence of most image processing research. The goal of our research is to address this gap by developing automated methods of cell tracking, localization, and segmentation. Since even an optimal frame-to-frame association method cannot compensate and recover from poor detection, it is clear that the quality of cell tracking depends on the quality of cell detection within each frame.
Cell detection performs poorly where the background is not uniform and includes temporal illumination variations, spatial non-uniformities, and stationary objects such as well boundaries (which confine the cells under study). To improve cell detection, the signal to noise ratio of the input image can be increased via accurate background estimation. In this paper we investigate background estimation, for the purpose of cell detection. We propose a cell model and a method for background estimation, driven by the proposed cell model, such that well structure can be identified, and explicitly rejected, when estimating the background.
The resulting background-removed images have fewer artifacts and allow cells to be localized and detected more reliably. The experimental results generated by applying the proposed method to different Hematopoietic Stem Cell (HSC) image sequences are quite promising.
The understanding of cell behavior relies on precise information about the temporal dynamics and spatial distribution of cells. Such information may play a key role in disease research and regenerative medicine, so automated methods for observation and measurement of cells from microscopic images are in high demand. The proposed method in this paper is capable of localizing single cells in microwells and can be adapted for the other cell types that may not have circular shape. This method can be potentially used for single cell analysis to study the temporal dynamics of cells.
手动细胞定位和轮廓勾勒的方法非常繁琐,对于处理庞大的图像序列,自动化跟踪方法似乎是必需的。然而,令人惊讶的是,手动跟踪仍然在细胞生物学等领域广泛应用,而这些领域不受大多数图像处理研究的影响。我们的研究目标是通过开发自动化的细胞跟踪、定位和分割方法来解决这一差距。由于即使是最优的帧间关联方法也无法弥补和恢复检测不佳的情况,因此很明显,细胞跟踪的质量取决于每一帧中细胞检测的质量。
在背景不均匀且包括时间照明变化、空间不均匀性和静止物体(如井边界,限制研究中的细胞)的情况下,细胞检测表现不佳。为了提高细胞检测的质量,可以通过准确的背景估计来提高输入图像的信噪比。在本文中,我们研究了背景估计,目的是进行细胞检测。我们提出了一种细胞模型和一种基于所提出的细胞模型的背景估计方法,以便在估计背景时可以识别并明确拒绝井结构。
生成的背景去除图像具有更少的伪影,并且可以更可靠地定位和检测细胞。将所提出的方法应用于不同造血干细胞 (HSC) 图像序列所产生的实验结果非常有前景。
对细胞行为的理解依赖于关于细胞的时间动态和空间分布的精确信息。这些信息可能在疾病研究和再生医学中发挥关键作用,因此,从微观图像中观察和测量细胞的自动化方法需求很高。本文提出的方法能够在微孔中定位单个细胞,并可适用于可能没有圆形形状的其他细胞类型。该方法可用于单细胞分析,以研究细胞的时间动态。