基于i-WFCM和深度学习的RBM分类的多功能宫颈癌检测

Soumya Haridas, Jayamalar T
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引用次数: 0

摘要

宫颈癌是女性最常见和可治愈的癌症之一,是一种常见的慢性疾病。子宫颈抹片检查是一种常用的子宫颈癌筛查方法。直到疾病发展到晚期才会出现症状,宫颈癌在早期阶段无法被发现。正因为如此,准确的分期将更容易给病人适当的治疗。本文提出了利用各向异性扩散滤波器去除噪声并保留图像边缘的方法来改善巴氏涂片图像。使用直方图均衡化增强了巴氏涂片图像的对比度。增强后的图像使用改进的加权模糊c均值聚类进行分割,使其更容易识别有效特征。结果,从分割区域中提取有效特征,并使用基于深度学习的受限玻尔兹曼机器分类器对癌症进行分类。所提出的子宫颈癌检测系统的性能可从敏感性、特异性、f值和准确性等方面进行衡量。该系统的性能指标分别达到95.3%的准确率、88.6%的特异性、89.13%的精密度、88.56%的召回率和89.7%的F-measure。仿真结果表明,该方法在检测宫颈癌方面优于RDVLNN、随机森林(RF)、极限学习机(ELM)和支持向量机(SVM)等传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Versatile Detection of Cervical Cancer with i-WFCM and Deep Learning based RBM Classification
One of the most common and curable types of cancer in women is cervical cancer, a common chronic condition. Pap smear images is a common way for screening the cervical cancer. It does not present with symptoms until the disease has advanced stages, cervical cancer cannot be detected in its early stages. Because of this, accurate staging will make it easier to give the patient the right amount of treatment. In this paper proposes the Anisotropic Diffusion Filter has been used to improve the Pap smear image by removing noise and preserving the image's edges. The contrast of a Pap smear image has been enhanced using Histogram Equalization. The enhanced image has been segmented using Improved Weighted Fuzzy C-means clustering to make it easier to identify the effective features. As a result, the effective features are extracted from the segmented region and used by a Restricted Boltzmann Machine classifier based on Deep Learning to classify the cancer. The performance of the proposed cervical cancer detection system can be measured in terms of sensitivity, specificity, F-measure and accuracy. The performance measures for the proposed system can be achieves 95.3% accuracy, 88.6% specificity, 89.13% precision, 88.56% recall, and 89.7% F-measure respectively. Based on simulation results, the proposed method performs better than conventional methods such as RDVLNN, Random Forest (RF), Extreme Learning Machine (ELM), and Support Vector Machine (SVM) for detecting cervical cancer.
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