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Cervical cancer classification from Pap-smears using an enhanced fuzzy C-means algorithm

机译:使用增强型模糊C均值算法对子宫颈抹片进行宫颈癌分类

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Globally, cervical cancer ranks as the fourth most prevalent cancer affecting women. However, it can be successfully treated if detected at an early stage. The Pap smear is a good tool for initial screening of cervical cancer, but there is the possibility of error due to human mistake. Moreover, the process is tedious and time-consuming. The objective of this study was to mitigate the risk of mistake by automating the process of cervical cancer classification from Pap smear images. In this research, contrast local adaptive histogram equalization was used for image enhancement. Cell segmentation was achieved through a Trainable Weka Segmentation classifier, and a sequential elimination approach was used for debris rejection. Feature selection was achieved using simulated annealing integrated with a wrapper filter, while classification was achieved using a fuzzy c-means algorithm.The evaluation of the classifier was carried out on three different datasets (single cell images, multiple cell images and Pap smear slide images from a pathology unit). An overall classification accuracy, sensitivity and specificity of ‘98.88%, 99.28% and 97.47%‘, ‘97.64%, 98.08% and 97.16%’ and ‘96.80%, 98.40% and 95.20%’ were obtained for each dataset respectively. The higher accuracy and sensitivity of the classifier was attributed to the robustness of the feature selection method that was utilized to select cell features that would improve the classification performance, and the number of clusters used during defuzzification and classification. The evaluation and testing conducted confirmed the rationale of the approach taken, which is based on the premise that the selection of salient features embeds sufficient discriminatory information that leads to an increase in the accuracy of cervical cancer classification. Results show that the method outperforms many of the existing algorithms in terms of the false negative rate (0.72%), false positive rate (2.53%), and classification error (1.12%), when applied to the DTU/Herlev benchmark Pap smear dataset. The approach articulated in this paper is applicable to many Pap smear analysis systems, but is particularly pertinent to low-cost systems that should be of significant benefit to developing economies.
机译:在全球范围内,子宫颈癌是影响妇女的第四大流行癌症。但是,如果在早期发现,就可以成功治疗。子宫颈抹片检查是宫颈癌初步筛查的良好工具,但由于人为错误可能会导致错误。而且,该过程繁琐且耗时。这项研究的目的是通过自动化子宫颈抹片检查图像对子宫颈癌的分类过程来减少错​​误的风险。在这项研究中,对比局部自适应直方图均衡用于图像增强。通过可训练的Weka分割分类器实现了细胞分割,并且采用了顺序消除方法来清除碎片。使用集成了包装滤波器的模拟退火实现特征选择,同时使用模糊c-means算法实现分类。在三个不同的数据集(单个细胞图像,多个细胞图像和巴氏涂片图像)上对分类器进行评估来自病理单位)。每个数据集的总体分类准确度,敏感性和特异性分别为“ 98.88%,99.28%和97.47%”,“ 97.64%,98.08%和97.16%”和“ 96.80%,98.40%和95.20%”。分类器的较高准确性和敏感性归因于特征选择方法的稳健性,该方法用于选择将改善分类性能的像元特征,以及在反模糊化和分类过程中使用的簇数。进行的评估和测试证实了所采用方法的基本原理,该方法基于以下前提:突出特征的选择嵌入了足够的歧视性信息,从而导致子宫颈癌分类的准确性提高。结果表明,该方法在应用于DTU / Herlev基准巴氏涂片数据集时,在误报率(0.72%),误报率(2.53%)和分类错误(1.12%)方面优于许多现有算法。 。本文阐述的方法适用于许多子宫颈抹片检查分析系统,但特别适用于低成本系统,该系统应对发展中经济体具有重大意义。

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