从巴氏涂片图像中检测宫颈发育不良的空间-频率特征集合

K. Deepa, S. Thilagamani
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引用次数: 0

摘要

在妇女中,子宫颈癌是最常见、最容易治疗和预防的癌症。在大多数情况下,子宫颈癌开始于癌前病变,逐渐发展为癌症。子宫颈抹片检查广泛用于子宫颈癌的诊断。细胞分析是一项耗时且繁琐的工作;为此,提出了一种自动检测框架。小波变换提供相关系数作为输入图像数据表示,用作特征向量。人工神经网络具有增强的输入输出映射、非线性、容错、自适应和自学习等特点。宫颈癌的分类使用神经网络系统,在大多数与图像处理相关的应用中发挥着巨大的作用。对于生物信息学和模式识别等领域的应用,大多数研究者选择集成分类器。在这项工作中提出了一种空间频率特征集合,以从巴氏涂片图像中识别宫颈发育不良。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Spatial-Frequency Feature Ensemble for Detecting Cervical Dysplasia from Pap Smear Images
Among women, cervical cancer is the commonest and the most treatable and preventable type of cancer. In most cases, cervical cancer begins as precancerous changes which gradually develop into cancer. Pap smear is widely used for cervical cancer diagnosis. Cell analysis is a time-consuming and cumbersome job; thus, an automatic detecting framework is proposed. Wavelet transforms offer the associated coefficients as the input image data representation, used as feature vectors. Artificial Neural Networks (ANNs) have outstanding attributes such as enhanced input-to-output mapping, non-linearity, fault tolerance, adaptively, and self-learning. Classification of cervical cancers employs neural network systems that have a huge role in most applications related to image processing. For application in diverse fields such as bioinformatics and pattern recognition, most researchers choose ensemble classifiers. A spatial-frequency feature ensemble has been proposed in this work to identify cervical dysplasia from images of Pap smears.
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