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

机译:宫颈涂片图像对宫颈癌的自动诊断和分类

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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.
机译:在全球范围内,子宫颈癌是影响女性的第四大最普遍的癌症。但是,如果在早期发现,可以治疗宫颈癌。子宫颈抹片检查是筛查宫颈癌的好工具,但人工分析容易出错,乏味且耗时。这项研究的目的是通过使用增强的模糊c均值算法从宫颈涂片图像中自动进行子宫颈癌分类过程来排除这些局限性。模拟退火与包裹滤波器结合在一起用于特征选择。评估结果表明,将这种方法应用于Herlev基准纸浆涂片数据集时,其分类准确度(99.35%),特异性(97.93%)和灵敏度(99.85%)优于许多以前的算法。所制备的涂片玻片上分类器的总体准确性,敏感性和特异性分别为95.00%,100%和90.00%。得出假阴性率(FNR),假阳性率(FPR)和分类误差分别为0.00%,10.00%和5.00%。该工具在宫颈癌筛查工作流程中的主要贡献在于,它消除了明显的正常筛查,从而减少了细胞技术人员筛查很多子宫颈抹片检查所需的时间,因此可以将更多的时间放在可疑玻片上。所提出的工具能够每分钟分析1-2次涂片,而手动分析中每张幻灯片需要5-10分钟。

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