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Automatic segmentation of cell nuclei using Krill Herd optimization based multi-thresholding and Localized Active Contour Model

机译:使用基于磷虾群优化的多阈值和局部主动轮廓模型自动分割细胞核

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摘要

Analysis of tissue components in histopathology image stays on as the gold standard in detecting different types of cancers. Active Contour Models (ACM) serve as a widely useful tool in object segmentation in pathology images. Since the ACMs are susceptible to initial contour placement, efficiency of object detection is very much influenced by the selection of primary curve placement technique. In this paper, in order to handle diffused intensities present along object boundaries in histopathology images, segmentation of nuclei from breast histopathology images are carried out by Localized Active Contour Model (LACM) utilizing bio-inspired optimization techniques in the detection stage. Krill Herd Algorithm (KHA) based optimal curve placement provides better initial boundaries compared with other detection techniques. The segmentation performance is investigated based on Housdorff (HD) and Maximum Absolute Distance (MAD) measures. The algorithm also shows comparable performance with other state-of-the-art techniques in terms of quantitative measures such as Precision, Accuracy and Touching Nuclei Resolution when applied to complex images of stained breast biopsy slides. (C) 2016 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier Sp. z o. o. All rights reserved.
机译:组织病理学图像中组织成分的分析一直是检测不同类型癌症的金标准。活动轮廓模型(ACM)可作为病理图像中对象分割的广泛有用的工具。由于ACM易受初始轮廓放置的影响,因此对象检测的效率在很大程度上受主要曲线放置技术的选择影响。在本文中,为了处理在组织病理学图像中沿对象边界存在的扩散强度,在检测阶段,利用生物启发式优化技术,通过局部主动轮廓模型(LACM)对乳房组织病理学图像中的核进行了分割。与其他检测技术相比,基于磷虾群算法(KHA)的最佳曲线位置提供了更好的初始边界。基于Housdorff(HD)和最大绝对距离(MAD)度量来研究分割性能。该算法在定量方法(如应用于染色的乳腺活检玻片的复杂图像)的定量指标(如精度,准确度和触核分辨率)方面也表现出与其他最新技术相当的性能。 (C)2016年波兰科学院纳勒奇生物cybernetics和生物医学工程研究所。由Elsevier Sp。发行。则o。版权所有。

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