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An Improved Nucleus Segmentation for Cervical Cell Images using FCM clustering and BPNN

机译:使用FCM聚类和BPNN的宫颈细胞图像改进的细胞核分割

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Pap smear test plays an important role for the early diagnosis of cervical cancer in which human cells taken from the cervix of patient are analysed for pre-cancerous changes. The manual analysis of these cells by expert cytologist is labor intensive and time consuming job. In this paper, an improved nucleus segmentation algorithm is proposed using FCM clustering and BPNN. The existing algorithm based on FCM clustering has been improved by finding optimum clusters instead of fixed clusters. Further, shape based features are extracted from each region which act as input to Back Propagation Neural Network (BPNN); to classify regions as nucleus or non-nucleus. Thus false detected regions are removed to produce the accurate segmentation of nucleus regions. The proposed work is evaluated on the public available Herlev dataset. Experimental results show the improvement in performance (precision, recall and Dice Coefficient) of nucleus segmentation by 1%, 7% and 5% respectively compared to existing work.
机译:PAP涂片测试对宫颈癌的早期诊断起重要作用,其中分析了从患者宫颈癌的人体细胞进行预癌变。专家细胞学家对这些细胞的手动分析是劳动密集型和耗时的工作。本文采用FCM聚类和BPNN提出了一种改进的核分割算法。通过查找最佳群集而不是固定群集,已经提高了基于FCM群集的现有算法。此外,从充当反向传播神经网络(BPNN)的每个区域中提取基于形状的特征;将区域分类为核或非核。因此,去除错误检测区域以产生核区域的精确分割。拟议的工作在公共可用Herlev数据集上进行评估。实验结果表明,与现有工作相比,核细胞核分段的性能(精度,召回和骰子系数)的改善分别为1%,7%和5%。

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