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Classification of Cervical Cancer Detection using Machine Learning Algorithms

机译:使用机器学习算法进行宫颈癌检测的分类

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Cervical cancer is one of the diseases which are most prevalent in females. This is seen when some changes occur in a woman's cervix. To further complicate the issue these cancer cells can spread to other organs such as the liver, bladder, rectum, and even lungs. Earlier detection, screening, and careful precautions have seen higher rates of recovery. Colposcopy and pap-test are two methods to obtain the cells and study the subject. The pap-smear test is more preferred over Colposcopy as it's pain-free, low-cost, and has a more distant range. A proper cell image acquisition and accurate segmentation are the key steps for the correct classification of cells. This article presents a Machine Learning (ML) classification method applied to the Herlev pap-smear image Dataset, using Support Vector Machines (SVMs). For the segmentation phase, active contour models that are driven using Gaussian Fitting Energy were utilized. These segmented images were compared with the manually annotated images that were provided by professional cytologists. The dice index was the parameter used from the comparison, which reported a match of 92%. With polynomial SVMs highest classification accuracy was 95%.
机译:宫颈癌是女性最普遍的疾病之一。当一个女人的子宫颈发生一些变化时,就会看到这一点。为了进一步使问题复杂化,这些癌细胞可以扩散到其他器官,例如肝脏,膀胱,直肠,甚至肺部。早期的检测,筛选和仔细的预防措施已经看到较高的恢复率。阴道镜检查和PAP测试是获得细胞的两种方法并研究受试者。 Pap-Smear测试在阴道镜上更优选,因为它是无痛苦的,低成本,并且具有更远的范围。适当的单元图像获取和准确的分割是用于细胞的正确分类的关键步骤。本文介绍了应用于Herlev Pap-Smear图像数据集的机器学习(ML)分类方法,使用支持向量机(SVM)。对于分割阶段,利用使用高斯拟合能量驱动的活动轮廓模型。将这些分段图像与由专业细胞学家提供的手动注释的图像进行比较。骰子指数是从比较中使用的参数,其中报告了92%的匹配。具有多项式SVMS最高分类准确度为95%。

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