Morphology Preserving Segmentation Method for Occluded Cell Nuclei from Medical Microscopy Image

Rafflesia Khan, R. Debnath
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引用次数: 1

Abstract

Nowadays, image segmentation techniques are being used in many medical applications such as tissue culture monitoring, cell counting, automatic measurement of organs, etc., for assisting doctors. However, high-level segmentation results cannot be obtained without manual annotation or prior knowledge for high variability, noise and other imaging artifacts in medical images. Furthermore, unstable and continuously changing characteristics of all human cells, tissues and organs manipulate training-based segmentation methods. Detecting appropriate contour of a region of interest and single cells from overlapping condition are extremely challenging. In this paper, we aim for a model that can detect biological structure (e.g. cell nuclei and lung contour) with their proper morphology even in overlapping or occluded condition without manual annotation or prior knowledge. We have introduced a new optimal approach for automatic medical image region segmentation. The method first clearly focuses the boundaries of all object regions in a microscopy image. Then it detects the areas by following their contours. Our model is capable of detecting and segmenting object regions from medial image using less computation effort. Our experimental results prove that our model provides better detection on several datasets of different types of medical data and ensures more than 98% segmentation rate in the case of densely connected regions.
医学显微图像中闭塞细胞核的形态学保留分割方法
目前,图像分割技术已广泛应用于组织培养监测、细胞计数、器官自动测量等医学领域,为医生提供辅助。然而,对于医学图像中的高变异性、噪声和其他成像伪影,如果没有人工注释或先验知识,就无法获得高水平的分割结果。此外,人体所有细胞、组织和器官的不稳定和不断变化的特性操纵着基于训练的分割方法。从重叠条件下检测感兴趣的区域和单个细胞的适当轮廓是极具挑战性的。在本文中,我们的目标是建立一个模型,即使在重叠或闭塞的情况下,也能检测出生物结构(如细胞核和肺轮廓)的正确形态,而无需人工注释或先验知识。提出了一种新的医学图像区域自动分割的优化方法。该方法首先清晰地聚焦显微镜图像中所有物体区域的边界。然后,它通过跟踪它们的轮廓来检测这些区域。我们的模型能够以较少的计算量从中间图像中检测和分割目标区域。我们的实验结果证明,我们的模型对不同类型的医疗数据的多个数据集提供了更好的检测,并且在密集连接区域的情况下保证了98%以上的分割率。
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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