Automating the measurement of physiological parameters: A case study in the image analysis of cilia motion

É. Puybareau, Hugues Talbot, É. Béquignon, Bruno Louis, G. Pelle, J. Papon, A. Coste, Laurent Najman
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引用次数: 2

Abstract

As image processing and analysis techniques improve, an increasing number of procedures in bio-medical analyses can be automated. This brings many benefits, e.g improved speed and accuracy, leading to more reliable diagnoses and follow-up, ultimately improving patients outcome. Many automated procedures in bio-medical imaging are well established and typically consist of detecting and counting various types of cells (e.g. blood cells, abnormal cells in Pap smears, and so on). In this article we propose to automate a different and difficult set of measurements, which is conducted on the cilia of people suffering from a variety of respiratory tract diseases. Cilia are slender, microscopic, hair-like structures or organelles that extend from the surface of nearly all mammalian cells. Motile cilia, such as those found in the lungs and respiratory tract, present a periodic beating motion that keep the airways clear of mucus and dirt. In this paper, we propose a fully automated method that computes various measurements regarding the motion of cilia, taken with high-speed video-microscopy. The advantage of our approach is its capacity to automatically compute robust, adaptive and regionalized measurements, i.e. associated with different regions in the image. We validate the robustness of our approach, and illustrate its performance in comparison to the state-of-the-art.
生理参数的自动化测量:纤毛运动图像分析的案例研究
随着图像处理和分析技术的进步,生物医学分析中越来越多的程序可以自动化。这带来了许多好处,例如提高了速度和准确性,导致更可靠的诊断和随访,最终改善了患者的预后。生物医学成像中的许多自动化程序已经建立良好,通常包括检测和计数各种类型的细胞(例如血细胞,巴氏涂片中的异常细胞等)。在这篇文章中,我们建议自动化一套不同的和困难的测量,这是对患有各种呼吸道疾病的人的纤毛进行的。纤毛是从几乎所有哺乳动物细胞表面延伸出来的纤细的、微小的、毛发状的结构或细胞器。运动性纤毛,如在肺部和呼吸道中发现的纤毛,呈现周期性的跳动运动,使气道畅通粘液和污垢。在本文中,我们提出了一种完全自动化的方法来计算有关纤毛运动的各种测量,采用高速视频显微镜。我们的方法的优点是它能够自动计算鲁棒,自适应和区域化的测量,即与图像中的不同区域相关联。我们验证了我们的方法的稳健性,并说明了与最先进的技术相比,它的性能。
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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