Jaccard N, Szita N, Griffin L D
Department of Computer Science, University College London, London, UK.
Department of Biochemical Engineering, University College London, London, UK.
Comput Methods Biomech Biomed Eng Imaging Vis. 2017 Sep 3;5(5):359-367. doi: 10.1080/21681163.2015.1016243. Epub 2017 Apr 7.
Phase contrast microscopy (PCM) is routinely used for the inspection of adherent cell cultures in all fields of biology and biomedicine. Key decisions for experimental protocols are often taken by an operator based on typically qualitative observations. However, automated processing and analysis of PCM images remain challenging due to the low contrast between foreground objects (cells) and background as well as various imaging artefacts. We propose a trainable pixel-wise segmentation approach whereby image structures and symmetries are encoded in the form of multi-scale Basic Image Features local histograms, and classification of them is learned by random decision trees. This approach was validated for segmentation of cell versus background, and discrimination between two different cell types. Performance close to that of state-of-the-art specialised algorithms was achieved despite the general nature of the method. The low processing time ( < 4 s per 1280 × 960 pixel images) is suitable for batch processing of experimental data as well as for interactive segmentation applications.
相差显微镜(PCM)在生物学和生物医学的各个领域中经常用于检查贴壁细胞培养物。实验方案的关键决策通常由操作人员基于典型的定性观察来做出。然而,由于前景物体(细胞)与背景之间的低对比度以及各种成像伪像,PCM图像的自动处理和分析仍然具有挑战性。我们提出了一种可训练的逐像素分割方法,其中图像结构和对称性以多尺度基本图像特征局部直方图的形式进行编码,并通过随机决策树对其进行分类学习。该方法已针对细胞与背景的分割以及两种不同细胞类型之间的区分进行了验证。尽管该方法具有通用性,但仍实现了接近最先进的专门算法的性能。较低的处理时间(每1280×960像素图像<4秒)适用于实验数据的批量处理以及交互式分割应用。