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Three stage cervical cancer classifier based on hybrid ensemble learning with modified binary PSO using pretrained neural networks

机译:采用预磨性神经网络修改二元PSO的三阶段宫颈癌分类器

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摘要

Cervical cancer is one of the major challenges in developing nations like India.In recent years, a lot of research has been done todetect cervical cancer at an early stage through the pap-smear test, human papillomavirus test (HPV), etc. In this study, we have proposed athree-stage cervical cancer classifier to classify cervical cells among normal and abnormal cells using a hybrid ensemble classifier based onfeatures extracted using pre-trained neural networks. Furthermore, this work extends to classify the cells among different levels of dysplastic mainly mild, moderate and severe. The accuracy achieved for 2-class classification among normal and abnormal cells is up to 100% while for 4-class classification among normal, mild, moderate and severe dysplastic cells is up to 98.91% and 99.12% for new and old Herlev university hospital datasets respectively.
机译:宫颈癌是印度发展国家的主要挑战之一。近年来,通过Pap-Smear试验,人乳头瘤病毒试验(HPV)等,在早期阶段进行了大量研究。在此研究,我们提出了Athree-Stage宫颈癌分类器,使用基于预先训练的神经网络提取的杂交集合分类器的杂交系列分类器来分类正常和异常细胞之间的宫颈细胞。此外,该工作延伸以分类细胞在不同水平的消化力,主要是轻度,中等和严重的情况。正常和异常细胞2级分类所达到的准确性高达100%,而新的和老海堤大学医院数据集的4级分类高达98.91%和99.12%。分别。

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