Automated Diagnosis and Classification of Cervical Cancer from pap-smear Images

Wasswa William, Andrew J. Ware, A. H. Basaza-Ejiri, J. Obungoloch
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引用次数: 3

Abstract

Globally, cervical cancer ranks as the fourth most prevalent cancer affecting women. However, cervical cancer can be treated if detected at an early stage. Pap-smear is a good tool for screening of cervical cancer but the manual analysis is error-prone, tedious and time-consuming. The objective of this study was to rule out these limitations by automating the process of cervical cancer classification from pap-smear images by using an enhanced fuzzy c-means algorithm. Simulated annealing coupled with a wrapper filter was used for feature selection. The evaluation results showed that our method outperforms many of previous algorithms in classification accuracy (99.35%), specificity (97.93%) and sensitivity (99.85%), when applied to the Herlev benchmark pap-smear dataset. The overall accuracy, sensitivity and specificity of the classifier on prepared pap-smear slides was 95.00%, 100% and 90.00% respectively. False Negative Rate (FNR), False Positive Rate (FPR) and classification error of 0.00%, 10.00% and 5.00% respectively were obtained. The major contribution of this tool in a cervical cancer screening workflow is that it reduces on the time required by the cytotechnician to screen very many pap-smears by eliminating the obvious normal ones, hence more time can be put on the suspicious slides. The proposed tool has the capability of analyzing 1-2 smears per minute as opposed to the 5-10 minutes per slide in the manual analysis.
基于宫颈涂片图像的宫颈癌自动诊断和分类
在全球范围内,子宫颈癌是影响妇女的第四大常见癌症。然而,如果在早期发现,宫颈癌是可以治疗的。巴氏涂片是筛查子宫颈癌的良好工具,但人工分析容易出错、繁琐和耗时。本研究的目的是通过使用增强型模糊c均值算法从巴氏涂片图像中自动化宫颈癌分类过程来排除这些限制。采用模拟退火和包装滤波相结合的方法进行特征选择。评估结果表明,当应用于Herlev基准pap-smear数据集时,我们的方法在分类准确率(99.35%)、特异性(97.93%)和灵敏度(99.85%)方面优于许多先前的算法。该分类器对制备的涂片的总体准确率、灵敏度和特异性分别为95.00%、100%和90.00%。假阴性率(FNR)、假阳性率(FPR)和分类错误率分别为0.00%、10.00%和5.00%。此工具在子宫颈癌筛查工作流程中的主要贡献是,它通过剔除明显正常的涂片,减少了细胞技术员筛查大量涂片所需的时间,从而可以将更多的时间用于可疑的载玻片。建议的工具具有每分钟分析1-2张涂片的能力,而不是手动分析每张幻灯片的5-10分钟。
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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