Institute of Pathology, Charité University Hospital Berlin, 10117 Berlin, Germany.
Sci Rep. 2012;2:503. doi: 10.1038/srep00503. Epub 2012 Jul 11.
Automated image analysis of cells and tissues has been an active research field in medical informatics for decades but has recently attracted increased attention due to developments in computer and microscopy hardware and the awareness that scientific and diagnostic pathology require novel approaches to perform objective quantitative analyses of cellular and tissue specimens. Model-based approaches use a priori information on cell shape features to obtain the segmentation, which may introduce a bias favouring the detection of cell nuclei only with certain properties. In this study we present a novel contour-based "minimum-model" cell detection and segmentation approach that uses minimal a priori information and detects contours independent of their shape. This approach avoids a segmentation bias with respect to shape features and allows for an accurate segmentation (precision = 0.908; recall = 0.859; validation based on ∼8000 manually-labeled cells) of a broad spectrum of normal and disease-related morphological features without the requirement of prior training.
几十年来,细胞和组织的自动图像分析一直是医学信息学中的一个活跃研究领域,但由于计算机和显微镜硬件的发展,以及人们意识到科学和诊断病理学需要新的方法来对细胞和组织标本进行客观的定量分析,最近引起了更多的关注。基于模型的方法使用细胞形状特征的先验信息来获得分割,这可能会引入偏向,只有利于检测具有某些特性的细胞核。在本研究中,我们提出了一种新的基于轮廓的“最小模型”细胞检测和分割方法,该方法使用最小的先验信息,并独立于其形状检测轮廓。该方法避免了与形状特征相关的分割偏差,并允许对广泛的正常和与疾病相关的形态特征进行准确的分割(精度=0.908;召回率=0.859;基于约 8000 个手动标记细胞的验证),而无需事先进行训练。